from fastapi import FastAPI, WebSocket, WebSocketDisconnect, HTTPException, Request from fastapi.staticfiles import StaticFiles from fastapi.responses import FileResponse from fastapi.middleware.cors import CORSMiddleware from pydantic import BaseModel from typing import Optional, List, Any import base64 import cv2 import numpy as np import aiosqlite import json from datetime import datetime, timedelta import math import os from pathlib import Path from typing import Callable import asyncio import concurrent.futures import threading from aiortc import RTCPeerConnection, RTCSessionDescription, VideoStreamTrack from av import VideoFrame from mediapipe.tasks.python.vision import FaceLandmarksConnections from ui.pipeline import ( FaceMeshPipeline, MLPPipeline, HybridFocusPipeline, XGBoostPipeline, L2CSPipeline, is_l2cs_weights_available, ) from models.face_mesh import FaceMeshDetector # ================ FACE MESH DRAWING (server-side, for WebRTC) ================ _FONT = cv2.FONT_HERSHEY_SIMPLEX _CYAN = (255, 255, 0) _GREEN = (0, 255, 0) _MAGENTA = (255, 0, 255) _ORANGE = (0, 165, 255) _RED = (0, 0, 255) _WHITE = (255, 255, 255) _LIGHT_GREEN = (144, 238, 144) _TESSELATION_CONNS = [(c.start, c.end) for c in FaceLandmarksConnections.FACE_LANDMARKS_TESSELATION] _CONTOUR_CONNS = [(c.start, c.end) for c in FaceLandmarksConnections.FACE_LANDMARKS_CONTOURS] _LEFT_EYEBROW = [70, 63, 105, 66, 107, 55, 65, 52, 53, 46] _RIGHT_EYEBROW = [300, 293, 334, 296, 336, 285, 295, 282, 283, 276] _NOSE_BRIDGE = [6, 197, 195, 5, 4, 1, 19, 94, 2] _LIPS_OUTER = [61, 146, 91, 181, 84, 17, 314, 405, 321, 375, 291, 409, 270, 269, 267, 0, 37, 39, 40, 185, 61] _LIPS_INNER = [78, 95, 88, 178, 87, 14, 317, 402, 318, 324, 308, 415, 310, 311, 312, 13, 82, 81, 80, 191, 78] _LEFT_EAR_POINTS = [33, 160, 158, 133, 153, 145] _RIGHT_EAR_POINTS = [362, 385, 387, 263, 373, 380] def _lm_px(lm, idx, w, h): return (int(lm[idx, 0] * w), int(lm[idx, 1] * h)) def _draw_polyline(frame, lm, indices, w, h, color, thickness): for i in range(len(indices) - 1): cv2.line(frame, _lm_px(lm, indices[i], w, h), _lm_px(lm, indices[i + 1], w, h), color, thickness, cv2.LINE_AA) def _draw_face_mesh(frame, lm, w, h): """Draw tessellation, contours, eyebrows, nose, lips, eyes, irises, gaze lines.""" # Tessellation (gray triangular grid, semi-transparent) overlay = frame.copy() for s, e in _TESSELATION_CONNS: cv2.line(overlay, _lm_px(lm, s, w, h), _lm_px(lm, e, w, h), (200, 200, 200), 1, cv2.LINE_AA) cv2.addWeighted(overlay, 0.3, frame, 0.7, 0, frame) # Contours for s, e in _CONTOUR_CONNS: cv2.line(frame, _lm_px(lm, s, w, h), _lm_px(lm, e, w, h), _CYAN, 1, cv2.LINE_AA) # Eyebrows _draw_polyline(frame, lm, _LEFT_EYEBROW, w, h, _LIGHT_GREEN, 2) _draw_polyline(frame, lm, _RIGHT_EYEBROW, w, h, _LIGHT_GREEN, 2) # Nose _draw_polyline(frame, lm, _NOSE_BRIDGE, w, h, _ORANGE, 1) # Lips _draw_polyline(frame, lm, _LIPS_OUTER, w, h, _MAGENTA, 1) _draw_polyline(frame, lm, _LIPS_INNER, w, h, (200, 0, 200), 1) # Eyes left_pts = np.array([_lm_px(lm, i, w, h) for i in FaceMeshDetector.LEFT_EYE_INDICES], dtype=np.int32) cv2.polylines(frame, [left_pts], True, _GREEN, 2, cv2.LINE_AA) right_pts = np.array([_lm_px(lm, i, w, h) for i in FaceMeshDetector.RIGHT_EYE_INDICES], dtype=np.int32) cv2.polylines(frame, [right_pts], True, _GREEN, 2, cv2.LINE_AA) # EAR key points for indices in [_LEFT_EAR_POINTS, _RIGHT_EAR_POINTS]: for idx in indices: cv2.circle(frame, _lm_px(lm, idx, w, h), 3, (0, 255, 255), -1, cv2.LINE_AA) # Irises + gaze lines for iris_idx, eye_inner, eye_outer in [ (FaceMeshDetector.LEFT_IRIS_INDICES, 133, 33), (FaceMeshDetector.RIGHT_IRIS_INDICES, 362, 263), ]: iris_pts = np.array([_lm_px(lm, i, w, h) for i in iris_idx], dtype=np.int32) center = iris_pts[0] if len(iris_pts) >= 5: radii = [np.linalg.norm(iris_pts[j] - center) for j in range(1, 5)] radius = max(int(np.mean(radii)), 2) cv2.circle(frame, tuple(center), radius, _MAGENTA, 2, cv2.LINE_AA) cv2.circle(frame, tuple(center), 2, _WHITE, -1, cv2.LINE_AA) eye_cx = int((lm[eye_inner, 0] + lm[eye_outer, 0]) / 2.0 * w) eye_cy = int((lm[eye_inner, 1] + lm[eye_outer, 1]) / 2.0 * h) dx, dy = center[0] - eye_cx, center[1] - eye_cy cv2.line(frame, tuple(center), (int(center[0] + dx * 3), int(center[1] + dy * 3)), _RED, 1, cv2.LINE_AA) def _draw_hud(frame, result, model_name): """Draw status bar and detail overlay matching live_demo.py.""" h, w = frame.shape[:2] is_focused = result["is_focused"] status = "FOCUSED" if is_focused else "NOT FOCUSED" color = _GREEN if is_focused else _RED # Top bar cv2.rectangle(frame, (0, 0), (w, 55), (0, 0, 0), -1) cv2.putText(frame, status, (10, 28), _FONT, 0.8, color, 2, cv2.LINE_AA) cv2.putText(frame, model_name.upper(), (w - 150, 28), _FONT, 0.45, _WHITE, 1, cv2.LINE_AA) # Detail line conf = result.get("mlp_prob", result.get("raw_score", 0.0)) mar_s = f" MAR:{result['mar']:.2f}" if result.get("mar") is not None else "" sf = result.get("s_face", 0) se = result.get("s_eye", 0) detail = f"conf:{conf:.2f} S_face:{sf:.2f} S_eye:{se:.2f}{mar_s}" cv2.putText(frame, detail, (10, 48), _FONT, 0.4, _WHITE, 1, cv2.LINE_AA) # Head pose (top right) if result.get("yaw") is not None: cv2.putText(frame, f"yaw:{result['yaw']:+.0f} pitch:{result['pitch']:+.0f} roll:{result['roll']:+.0f}", (w - 280, 48), _FONT, 0.4, (180, 180, 180), 1, cv2.LINE_AA) # Yawn indicator if result.get("is_yawning"): cv2.putText(frame, "YAWN", (10, 75), _FONT, 0.7, _ORANGE, 2, cv2.LINE_AA) # Landmark indices used for face mesh drawing on client (union of all groups). # Sending only these instead of all 478 saves ~60% of the landmarks payload. _MESH_INDICES = sorted(set( [10,338,297,332,284,251,389,356,454,323,361,288,397,365,379,378,400,377,152,148,176,149,150,136,172,58,132,93,234,127,162,21,54,103,67,109] # face oval + [33,7,163,144,145,153,154,155,133,173,157,158,159,160,161,246] # left eye + [362,382,381,380,374,373,390,249,263,466,388,387,386,385,384,398] # right eye + [468,469,470,471,472, 473,474,475,476,477] # irises + [70,63,105,66,107,55,65,52,53,46] # left eyebrow + [300,293,334,296,336,285,295,282,283,276] # right eyebrow + [6,197,195,5,4,1,19,94,2] # nose bridge + [61,146,91,181,84,17,314,405,321,375,291,409,270,269,267,0,37,39,40,185] # lips outer + [78,95,88,178,87,14,317,402,318,324,308,415,310,311,312,13,82,81,80,191] # lips inner + [33,160,158,133,153,145] # left EAR key points + [362,385,387,263,373,380] # right EAR key points )) # Build a lookup: original_index -> position in sparse array, so client can reconstruct. _MESH_INDEX_SET = set(_MESH_INDICES) # Initialize FastAPI app app = FastAPI(title="Focus Guard API") # Add CORS middleware app.add_middleware( CORSMiddleware, allow_origins=["*"], allow_credentials=True, allow_methods=["*"], allow_headers=["*"], ) # Global variables db_path = "focus_guard.db" pcs = set() _cached_model_name = "mlp" # in-memory cache, updated via /api/settings _l2cs_boost_enabled = False # when True, L2CS runs alongside the base model async def _wait_for_ice_gathering(pc: RTCPeerConnection): if pc.iceGatheringState == "complete": return done = asyncio.Event() @pc.on("icegatheringstatechange") def _on_state_change(): if pc.iceGatheringState == "complete": done.set() await done.wait() # ================ DATABASE MODELS ================ async def init_database(): """Initialize SQLite database with required tables""" async with aiosqlite.connect(db_path) as db: # FocusSessions table await db.execute(""" CREATE TABLE IF NOT EXISTS focus_sessions ( id INTEGER PRIMARY KEY AUTOINCREMENT, start_time TIMESTAMP NOT NULL, end_time TIMESTAMP, duration_seconds INTEGER DEFAULT 0, focus_score REAL DEFAULT 0.0, total_frames INTEGER DEFAULT 0, focused_frames INTEGER DEFAULT 0, created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP ) """) # FocusEvents table await db.execute(""" CREATE TABLE IF NOT EXISTS focus_events ( id INTEGER PRIMARY KEY AUTOINCREMENT, session_id INTEGER NOT NULL, timestamp TIMESTAMP NOT NULL, is_focused BOOLEAN NOT NULL, confidence REAL NOT NULL, detection_data TEXT, FOREIGN KEY (session_id) REFERENCES focus_sessions (id) ) """) # UserSettings table await db.execute(""" CREATE TABLE IF NOT EXISTS user_settings ( id INTEGER PRIMARY KEY CHECK (id = 1), sensitivity INTEGER DEFAULT 6, notification_enabled BOOLEAN DEFAULT 1, notification_threshold INTEGER DEFAULT 30, frame_rate INTEGER DEFAULT 30, model_name TEXT DEFAULT 'mlp' ) """) # Insert default settings if not exists await db.execute(""" INSERT OR IGNORE INTO user_settings (id, sensitivity, notification_enabled, notification_threshold, frame_rate, model_name) VALUES (1, 6, 1, 30, 30, 'mlp') """) await db.commit() # ================ PYDANTIC MODELS ================ class SessionCreate(BaseModel): pass class SessionEnd(BaseModel): session_id: int class SettingsUpdate(BaseModel): sensitivity: Optional[int] = None notification_enabled: Optional[bool] = None notification_threshold: Optional[int] = None frame_rate: Optional[int] = None model_name: Optional[str] = None l2cs_boost: Optional[bool] = None class VideoTransformTrack(VideoStreamTrack): def __init__(self, track, session_id: int, get_channel: Callable[[], Any]): super().__init__() self.track = track self.session_id = session_id self.get_channel = get_channel self.last_inference_time = 0 self.min_inference_interval = 1 / 60 self.last_frame = None async def recv(self): frame = await self.track.recv() img = frame.to_ndarray(format="bgr24") if img is None: return frame # Normalize size for inference/drawing img = cv2.resize(img, (640, 480)) now = datetime.now().timestamp() do_infer = (now - self.last_inference_time) >= self.min_inference_interval if do_infer: self.last_inference_time = now model_name = _cached_model_name if model_name == "l2cs" and pipelines.get("l2cs") is None: _ensure_l2cs() if model_name not in pipelines or pipelines.get(model_name) is None: model_name = 'mlp' active_pipeline = pipelines.get(model_name) if active_pipeline is not None: loop = asyncio.get_event_loop() out = await loop.run_in_executor( _inference_executor, _process_frame_safe, active_pipeline, img, model_name, ) is_focused = out["is_focused"] confidence = out.get("mlp_prob", out.get("raw_score", 0.0)) metadata = {"s_face": out.get("s_face", 0.0), "s_eye": out.get("s_eye", 0.0), "mar": out.get("mar", 0.0), "model": model_name} # Draw face mesh + HUD on the video frame h_f, w_f = img.shape[:2] lm = out.get("landmarks") if lm is not None: _draw_face_mesh(img, lm, w_f, h_f) _draw_hud(img, out, model_name) else: is_focused = False confidence = 0.0 metadata = {"model": model_name} cv2.rectangle(img, (0, 0), (img.shape[1], 55), (0, 0, 0), -1) cv2.putText(img, "NO MODEL", (10, 28), _FONT, 0.8, _RED, 2, cv2.LINE_AA) if self.session_id: await store_focus_event(self.session_id, is_focused, confidence, metadata) channel = self.get_channel() if channel and channel.readyState == "open": try: channel.send(json.dumps({"type": "detection", "focused": is_focused, "confidence": round(confidence, 3), "detections": detections})) except Exception: pass self.last_frame = img elif self.last_frame is not None: img = self.last_frame new_frame = VideoFrame.from_ndarray(img, format="bgr24") new_frame.pts = frame.pts new_frame.time_base = frame.time_base return new_frame # ================ DATABASE OPERATIONS ================ async def create_session(): async with aiosqlite.connect(db_path) as db: cursor = await db.execute( "INSERT INTO focus_sessions (start_time) VALUES (?)", (datetime.now().isoformat(),) ) await db.commit() return cursor.lastrowid async def end_session(session_id: int): async with aiosqlite.connect(db_path) as db: cursor = await db.execute( "SELECT start_time, total_frames, focused_frames FROM focus_sessions WHERE id = ?", (session_id,) ) row = await cursor.fetchone() if not row: return None start_time_str, total_frames, focused_frames = row start_time = datetime.fromisoformat(start_time_str) end_time = datetime.now() duration = (end_time - start_time).total_seconds() focus_score = focused_frames / total_frames if total_frames > 0 else 0.0 await db.execute(""" UPDATE focus_sessions SET end_time = ?, duration_seconds = ?, focus_score = ? WHERE id = ? """, (end_time.isoformat(), int(duration), focus_score, session_id)) await db.commit() return { 'session_id': session_id, 'start_time': start_time_str, 'end_time': end_time.isoformat(), 'duration_seconds': int(duration), 'focus_score': round(focus_score, 3), 'total_frames': total_frames, 'focused_frames': focused_frames } async def store_focus_event(session_id: int, is_focused: bool, confidence: float, metadata: dict): async with aiosqlite.connect(db_path) as db: await db.execute(""" INSERT INTO focus_events (session_id, timestamp, is_focused, confidence, detection_data) VALUES (?, ?, ?, ?, ?) """, (session_id, datetime.now().isoformat(), is_focused, confidence, json.dumps(metadata))) await db.execute(""" UPDATE focus_sessions SET total_frames = total_frames + 1, focused_frames = focused_frames + ? WHERE id = ? """, (1 if is_focused else 0, session_id)) await db.commit() class _EventBuffer: """Buffer focus events in memory and flush to DB in batches to avoid per-frame DB writes.""" def __init__(self, flush_interval: float = 2.0): self._buf: list = [] self._lock = asyncio.Lock() self._flush_interval = flush_interval self._task: asyncio.Task | None = None self._total_frames = 0 self._focused_frames = 0 def start(self): if self._task is None: self._task = asyncio.create_task(self._flush_loop()) async def stop(self): if self._task: self._task.cancel() try: await self._task except asyncio.CancelledError: pass self._task = None await self._flush() def add(self, session_id: int, is_focused: bool, confidence: float, metadata: dict): self._buf.append((session_id, datetime.now().isoformat(), is_focused, confidence, json.dumps(metadata))) self._total_frames += 1 if is_focused: self._focused_frames += 1 async def _flush_loop(self): while True: await asyncio.sleep(self._flush_interval) await self._flush() async def _flush(self): async with self._lock: if not self._buf: return batch = self._buf[:] total = self._total_frames focused = self._focused_frames self._buf.clear() self._total_frames = 0 self._focused_frames = 0 if not batch: return session_id = batch[0][0] try: async with aiosqlite.connect(db_path) as db: await db.executemany(""" INSERT INTO focus_events (session_id, timestamp, is_focused, confidence, detection_data) VALUES (?, ?, ?, ?, ?) """, batch) await db.execute(""" UPDATE focus_sessions SET total_frames = total_frames + ?, focused_frames = focused_frames + ? WHERE id = ? """, (total, focused, session_id)) await db.commit() except Exception as e: print(f"[DB] Flush error: {e}") # ================ STARTUP/SHUTDOWN ================ pipelines = { "geometric": None, "mlp": None, "hybrid": None, "xgboost": None, "l2cs": None, } # Thread pool for CPU-bound inference so the event loop stays responsive. _inference_executor = concurrent.futures.ThreadPoolExecutor( max_workers=4, thread_name_prefix="inference", ) # One lock per pipeline so shared state (TemporalTracker, etc.) is not corrupted when # multiple frames are processed in parallel by the thread pool. _pipeline_locks = {name: threading.Lock() for name in ("geometric", "mlp", "hybrid", "xgboost", "l2cs")} _l2cs_load_lock = threading.Lock() _l2cs_error: str | None = None def _ensure_l2cs(): # lazy-load L2CS on first use, double-checked locking global _l2cs_error if pipelines["l2cs"] is not None: return True with _l2cs_load_lock: if pipelines["l2cs"] is not None: return True if not is_l2cs_weights_available(): _l2cs_error = "Weights not found" return False try: pipelines["l2cs"] = L2CSPipeline() _l2cs_error = None print("[OK] L2CSPipeline lazy-loaded") return True except Exception as e: _l2cs_error = str(e) print(f"[ERR] L2CS lazy-load failed: {e}") return False def _process_frame_safe(pipeline, frame, model_name): with _pipeline_locks[model_name]: return pipeline.process_frame(frame) _BOOST_BASE_W = 0.35 _BOOST_L2CS_W = 0.65 _BOOST_VETO = 0.38 # L2CS below this -> forced not-focused def _process_frame_with_l2cs_boost(base_pipeline, frame, base_model_name): # run base model with _pipeline_locks[base_model_name]: base_out = base_pipeline.process_frame(frame) l2cs_pipe = pipelines.get("l2cs") if l2cs_pipe is None: base_out["boost_active"] = False return base_out # run L2CS with _pipeline_locks["l2cs"]: l2cs_out = l2cs_pipe.process_frame(frame) base_score = base_out.get("mlp_prob", base_out.get("raw_score", 0.0)) l2cs_score = l2cs_out.get("raw_score", 0.0) # veto: gaze clearly off-screen overrides base model if l2cs_score < _BOOST_VETO: fused_score = l2cs_score * 0.8 is_focused = False else: fused_score = _BOOST_BASE_W * base_score + _BOOST_L2CS_W * l2cs_score is_focused = fused_score >= 0.52 base_out["raw_score"] = fused_score base_out["is_focused"] = is_focused base_out["boost_active"] = True base_out["base_score"] = round(base_score, 3) base_out["l2cs_score"] = round(l2cs_score, 3) if l2cs_out.get("gaze_yaw") is not None: base_out["gaze_yaw"] = l2cs_out["gaze_yaw"] base_out["gaze_pitch"] = l2cs_out["gaze_pitch"] return base_out @app.on_event("startup") async def startup_event(): global pipelines, _cached_model_name print(" Starting Focus Guard API...") await init_database() # Load cached model name from DB async with aiosqlite.connect(db_path) as db: cursor = await db.execute("SELECT model_name FROM user_settings WHERE id = 1") row = await cursor.fetchone() if row: _cached_model_name = row[0] print("[OK] Database initialized") try: pipelines["geometric"] = FaceMeshPipeline() print("[OK] FaceMeshPipeline (geometric) loaded") except Exception as e: print(f"[WARN] FaceMeshPipeline unavailable: {e}") try: pipelines["mlp"] = MLPPipeline() print("[OK] MLPPipeline loaded") except Exception as e: print(f"[ERR] Failed to load MLPPipeline: {e}") try: pipelines["hybrid"] = HybridFocusPipeline() print("[OK] HybridFocusPipeline loaded") except Exception as e: print(f"[WARN] HybridFocusPipeline unavailable: {e}") try: pipelines["xgboost"] = XGBoostPipeline() print("[OK] XGBoostPipeline loaded") except Exception as e: print(f"[ERR] Failed to load XGBoostPipeline: {e}") if is_l2cs_weights_available(): print("[OK] L2CS weights found — pipeline will be lazy-loaded on first use") else: print("[WARN] L2CS weights not found — l2cs model unavailable") @app.on_event("shutdown") async def shutdown_event(): _inference_executor.shutdown(wait=False) print(" Shutting down Focus Guard API...") # ================ WEBRTC SIGNALING ================ @app.post("/api/webrtc/offer") async def webrtc_offer(offer: dict): try: print(f"Received WebRTC offer") pc = RTCPeerConnection() pcs.add(pc) session_id = await create_session() print(f"Created session: {session_id}") channel_ref = {"channel": None} @pc.on("datachannel") def on_datachannel(channel): print(f"Data channel opened") channel_ref["channel"] = channel @pc.on("track") def on_track(track): print(f"Received track: {track.kind}") if track.kind == "video": local_track = VideoTransformTrack(track, session_id, lambda: channel_ref["channel"]) pc.addTrack(local_track) print(f"Video track added") @track.on("ended") async def on_ended(): print(f"Track ended") @pc.on("connectionstatechange") async def on_connectionstatechange(): print(f"Connection state changed: {pc.connectionState}") if pc.connectionState in ("failed", "closed", "disconnected"): try: await end_session(session_id) except Exception as e: print(f"⚠Error ending session: {e}") pcs.discard(pc) await pc.close() await pc.setRemoteDescription(RTCSessionDescription(sdp=offer["sdp"], type=offer["type"])) print(f"Remote description set") answer = await pc.createAnswer() await pc.setLocalDescription(answer) print(f"Answer created") await _wait_for_ice_gathering(pc) print(f"ICE gathering complete") return {"sdp": pc.localDescription.sdp, "type": pc.localDescription.type, "session_id": session_id} except Exception as e: print(f"WebRTC offer error: {e}") import traceback traceback.print_exc() raise HTTPException(status_code=500, detail=f"WebRTC error: {str(e)}") # ================ WEBSOCKET ================ @app.websocket("/ws/video") async def websocket_endpoint(websocket: WebSocket): from models.gaze_calibration import GazeCalibration from models.gaze_eye_fusion import GazeEyeFusion await websocket.accept() session_id = None frame_count = 0 running = True event_buffer = _EventBuffer(flush_interval=2.0) # Calibration state (per-connection) _cal: dict = {"cal": None, "collecting": False, "fusion": None} # Latest frame slot — only the most recent frame is kept, older ones are dropped. _slot = {"frame": None} _frame_ready = asyncio.Event() async def _receive_loop(): """Receive messages as fast as possible. Binary = frame, text = control.""" nonlocal session_id, running try: while running: msg = await websocket.receive() msg_type = msg.get("type", "") if msg_type == "websocket.disconnect": running = False _frame_ready.set() return # Binary message → JPEG frame (fast path, no base64) raw_bytes = msg.get("bytes") if raw_bytes is not None and len(raw_bytes) > 0: _slot["frame"] = raw_bytes _frame_ready.set() continue # Text message → JSON control command (or legacy base64 frame) text = msg.get("text") if not text: continue data = json.loads(text) if data["type"] == "frame": _slot["frame"] = base64.b64decode(data["image"]) _frame_ready.set() elif data["type"] == "start_session": session_id = await create_session() event_buffer.start() for p in pipelines.values(): if p is not None and hasattr(p, "reset_session"): p.reset_session() await websocket.send_json({"type": "session_started", "session_id": session_id}) elif data["type"] == "end_session": if session_id: await event_buffer.stop() summary = await end_session(session_id) if summary: await websocket.send_json({"type": "session_ended", "summary": summary}) session_id = None # ---- Calibration commands ---- elif data["type"] == "calibration_start": loop = asyncio.get_event_loop() await loop.run_in_executor(_inference_executor, _ensure_l2cs) _cal["cal"] = GazeCalibration() _cal["collecting"] = True _cal["fusion"] = None cal = _cal["cal"] await websocket.send_json({ "type": "calibration_started", "num_points": cal.num_points, "target": list(cal.current_target), "index": cal.current_index, }) elif data["type"] == "calibration_next": cal = _cal.get("cal") if cal is not None: more = cal.advance() if more: await websocket.send_json({ "type": "calibration_point", "target": list(cal.current_target), "index": cal.current_index, }) else: _cal["collecting"] = False ok = cal.fit() if ok: _cal["fusion"] = GazeEyeFusion(cal) await websocket.send_json({"type": "calibration_done", "success": True}) else: await websocket.send_json({"type": "calibration_done", "success": False, "error": "Not enough samples"}) elif data["type"] == "calibration_cancel": _cal["cal"] = None _cal["collecting"] = False _cal["fusion"] = None await websocket.send_json({"type": "calibration_cancelled"}) except WebSocketDisconnect: running = False _frame_ready.set() except Exception as e: print(f"[WS] receive error: {e}") running = False _frame_ready.set() async def _process_loop(): """Process only the latest frame, dropping stale ones.""" nonlocal frame_count, running loop = asyncio.get_event_loop() while running: await _frame_ready.wait() _frame_ready.clear() if not running: return raw = _slot["frame"] _slot["frame"] = None if raw is None: continue try: nparr = np.frombuffer(raw, np.uint8) frame = cv2.imdecode(nparr, cv2.IMREAD_COLOR) if frame is None: continue frame = cv2.resize(frame, (640, 480)) # During calibration collection, always use L2CS collecting = _cal.get("collecting", False) if collecting: if pipelines.get("l2cs") is None: await loop.run_in_executor(_inference_executor, _ensure_l2cs) use_model = "l2cs" if pipelines.get("l2cs") is not None else _cached_model_name else: use_model = _cached_model_name model_name = use_model if model_name == "l2cs" and pipelines.get("l2cs") is None: await loop.run_in_executor(_inference_executor, _ensure_l2cs) if model_name not in pipelines or pipelines.get(model_name) is None: model_name = "mlp" active_pipeline = pipelines.get(model_name) # L2CS boost: run L2CS alongside base model use_boost = ( _l2cs_boost_enabled and model_name != "l2cs" and pipelines.get("l2cs") is not None and not collecting ) landmarks_list = None out = None if active_pipeline is not None: if use_boost: out = await loop.run_in_executor( _inference_executor, _process_frame_with_l2cs_boost, active_pipeline, frame, model_name, ) else: out = await loop.run_in_executor( _inference_executor, _process_frame_safe, active_pipeline, frame, model_name, ) is_focused = out["is_focused"] confidence = out.get("mlp_prob", out.get("raw_score", 0.0)) lm = out.get("landmarks") if lm is not None: landmarks_list = [ [round(float(lm[i, 0]), 3), round(float(lm[i, 1]), 3)] for i in range(lm.shape[0]) ] # Calibration sample collection (L2CS gaze angles) if collecting and _cal.get("cal") is not None: pipe_yaw = out.get("gaze_yaw") pipe_pitch = out.get("gaze_pitch") if pipe_yaw is not None and pipe_pitch is not None: _cal["cal"].collect_sample(pipe_yaw, pipe_pitch) # Gaze fusion (when L2CS active + calibration fitted) fusion = _cal.get("fusion") if ( fusion is not None and model_name == "l2cs" and out.get("gaze_yaw") is not None ): fuse = fusion.update( out["gaze_yaw"], out["gaze_pitch"], lm ) is_focused = fuse["focused"] confidence = fuse["focus_score"] if session_id: metadata = { "s_face": out.get("s_face", 0.0), "s_eye": out.get("s_eye", 0.0), "mar": out.get("mar", 0.0), "model": model_name, } event_buffer.add(session_id, is_focused, confidence, metadata) else: is_focused = False confidence = 0.0 resp = { "type": "detection", "focused": is_focused, "confidence": round(confidence, 3), "model": model_name, "fc": frame_count, } if out is not None: if out.get("yaw") is not None: resp["yaw"] = round(out["yaw"], 1) resp["pitch"] = round(out["pitch"], 1) resp["roll"] = round(out["roll"], 1) if out.get("mar") is not None: resp["mar"] = round(out["mar"], 3) resp["sf"] = round(out.get("s_face", 0), 3) resp["se"] = round(out.get("s_eye", 0), 3) # Gaze fusion fields (L2CS standalone or boost mode) fusion = _cal.get("fusion") has_gaze = out.get("gaze_yaw") is not None if fusion is not None and has_gaze and (model_name == "l2cs" or use_boost): fuse = fusion.update(out["gaze_yaw"], out["gaze_pitch"], out.get("landmarks")) resp["gaze_x"] = fuse["gaze_x"] resp["gaze_y"] = fuse["gaze_y"] resp["on_screen"] = fuse["on_screen"] if model_name == "l2cs": resp["focused"] = fuse["focused"] resp["confidence"] = round(fuse["focus_score"], 3) if out.get("boost_active"): resp["boost"] = True resp["base_score"] = out.get("base_score", 0) resp["l2cs_score"] = out.get("l2cs_score", 0) if landmarks_list is not None: resp["lm"] = landmarks_list await websocket.send_json(resp) frame_count += 1 except Exception as e: print(f"[WS] process error: {e}") try: await asyncio.gather(_receive_loop(), _process_loop()) except Exception: pass finally: running = False if session_id: await event_buffer.stop() await end_session(session_id) # ================ API ENDPOINTS ================ @app.post("/api/sessions/start") async def api_start_session(): session_id = await create_session() return {"session_id": session_id} @app.post("/api/sessions/end") async def api_end_session(data: SessionEnd): summary = await end_session(data.session_id) if not summary: raise HTTPException(status_code=404, detail="Session not found") return summary @app.get("/api/sessions") async def get_sessions(filter: str = "all", limit: int = 50, offset: int = 0): async with aiosqlite.connect(db_path) as db: db.row_factory = aiosqlite.Row # NEW: If importing/exporting all, remove limit if special flag or high limit # For simplicity: if limit is -1, return all limit_clause = "LIMIT ? OFFSET ?" params = [] base_query = "SELECT * FROM focus_sessions" where_clause = "" if filter == "today": date_filter = datetime.now().replace(hour=0, minute=0, second=0, microsecond=0) where_clause = " WHERE start_time >= ?" params.append(date_filter.isoformat()) elif filter == "week": date_filter = datetime.now() - timedelta(days=7) where_clause = " WHERE start_time >= ?" params.append(date_filter.isoformat()) elif filter == "month": date_filter = datetime.now() - timedelta(days=30) where_clause = " WHERE start_time >= ?" params.append(date_filter.isoformat()) elif filter == "all": # Just ensure we only get completed sessions or all sessions where_clause = " WHERE end_time IS NOT NULL" query = f"{base_query}{where_clause} ORDER BY start_time DESC" # Handle Limit for Exports if limit == -1: # No limit clause for export pass else: query += f" {limit_clause}" params.extend([limit, offset]) cursor = await db.execute(query, tuple(params)) rows = await cursor.fetchall() return [dict(row) for row in rows] # --- NEW: Import Endpoint --- @app.post("/api/import") async def import_sessions(sessions: List[dict]): count = 0 try: async with aiosqlite.connect(db_path) as db: for session in sessions: # Use .get() to handle potential missing fields from older versions or edits await db.execute(""" INSERT INTO focus_sessions (start_time, end_time, duration_seconds, focus_score, total_frames, focused_frames, created_at) VALUES (?, ?, ?, ?, ?, ?, ?) """, ( session.get('start_time'), session.get('end_time'), session.get('duration_seconds', 0), session.get('focus_score', 0.0), session.get('total_frames', 0), session.get('focused_frames', 0), session.get('created_at', session.get('start_time')) )) count += 1 await db.commit() return {"status": "success", "count": count} except Exception as e: print(f"Import Error: {e}") return {"status": "error", "message": str(e)} # --- NEW: Clear History Endpoint --- @app.delete("/api/history") async def clear_history(): try: async with aiosqlite.connect(db_path) as db: # Delete events first (foreign key good practice) await db.execute("DELETE FROM focus_events") await db.execute("DELETE FROM focus_sessions") await db.commit() return {"status": "success", "message": "History cleared"} except Exception as e: return {"status": "error", "message": str(e)} @app.get("/api/sessions/{session_id}") async def get_session(session_id: int): async with aiosqlite.connect(db_path) as db: db.row_factory = aiosqlite.Row cursor = await db.execute("SELECT * FROM focus_sessions WHERE id = ?", (session_id,)) row = await cursor.fetchone() if not row: raise HTTPException(status_code=404, detail="Session not found") session = dict(row) cursor = await db.execute("SELECT * FROM focus_events WHERE session_id = ? ORDER BY timestamp", (session_id,)) events = [dict(r) for r in await cursor.fetchall()] session['events'] = events return session @app.get("/api/settings") async def get_settings(): async with aiosqlite.connect(db_path) as db: db.row_factory = aiosqlite.Row cursor = await db.execute("SELECT * FROM user_settings WHERE id = 1") row = await cursor.fetchone() result = dict(row) if row else {'sensitivity': 6, 'notification_enabled': True, 'notification_threshold': 30, 'frame_rate': 30, 'model_name': 'mlp'} result['l2cs_boost'] = _l2cs_boost_enabled return result @app.put("/api/settings") async def update_settings(settings: SettingsUpdate): async with aiosqlite.connect(db_path) as db: cursor = await db.execute("SELECT id FROM user_settings WHERE id = 1") exists = await cursor.fetchone() if not exists: await db.execute("INSERT INTO user_settings (id, sensitivity) VALUES (1, 6)") await db.commit() updates = [] params = [] if settings.sensitivity is not None: updates.append("sensitivity = ?") params.append(max(1, min(10, settings.sensitivity))) if settings.notification_enabled is not None: updates.append("notification_enabled = ?") params.append(settings.notification_enabled) if settings.notification_threshold is not None: updates.append("notification_threshold = ?") params.append(max(5, min(300, settings.notification_threshold))) if settings.frame_rate is not None: updates.append("frame_rate = ?") params.append(max(5, min(60, settings.frame_rate))) if settings.model_name is not None and settings.model_name in pipelines: if settings.model_name == "l2cs": loop = asyncio.get_event_loop() loaded = await loop.run_in_executor(_inference_executor, _ensure_l2cs) if not loaded: raise HTTPException(status_code=400, detail=f"L2CS model unavailable: {_l2cs_error}") elif pipelines[settings.model_name] is None: raise HTTPException(status_code=400, detail=f"Model '{settings.model_name}' not loaded") updates.append("model_name = ?") params.append(settings.model_name) global _cached_model_name _cached_model_name = settings.model_name if settings.l2cs_boost is not None: global _l2cs_boost_enabled if settings.l2cs_boost: loop = asyncio.get_event_loop() loaded = await loop.run_in_executor(_inference_executor, _ensure_l2cs) if not loaded: raise HTTPException(status_code=400, detail=f"L2CS boost unavailable: {_l2cs_error}") _l2cs_boost_enabled = settings.l2cs_boost if updates: query = f"UPDATE user_settings SET {', '.join(updates)} WHERE id = 1" await db.execute(query, params) await db.commit() return {"status": "success", "updated": len(updates) > 0} @app.get("/api/stats/summary") async def get_stats_summary(): async with aiosqlite.connect(db_path) as db: cursor = await db.execute("SELECT COUNT(*) FROM focus_sessions WHERE end_time IS NOT NULL") total_sessions = (await cursor.fetchone())[0] cursor = await db.execute("SELECT SUM(duration_seconds) FROM focus_sessions WHERE end_time IS NOT NULL") total_focus_time = (await cursor.fetchone())[0] or 0 cursor = await db.execute("SELECT AVG(focus_score) FROM focus_sessions WHERE end_time IS NOT NULL") avg_focus_score = (await cursor.fetchone())[0] or 0.0 cursor = await db.execute("SELECT DISTINCT DATE(start_time) as session_date FROM focus_sessions WHERE end_time IS NOT NULL ORDER BY session_date DESC") dates = [row[0] for row in await cursor.fetchall()] streak_days = 0 if dates: current_date = datetime.now().date() for i, date_str in enumerate(dates): session_date = datetime.fromisoformat(date_str).date() expected_date = current_date - timedelta(days=i) if session_date == expected_date: streak_days += 1 else: break return { 'total_sessions': total_sessions, 'total_focus_time': int(total_focus_time), 'avg_focus_score': round(avg_focus_score, 3), 'streak_days': streak_days } @app.get("/api/models") async def get_available_models(): """Return model names, statuses, and which is currently active.""" statuses = {} errors = {} available = [] for name, p in pipelines.items(): if name == "l2cs": if p is not None: statuses[name] = "ready" available.append(name) elif is_l2cs_weights_available(): statuses[name] = "lazy" available.append(name) elif _l2cs_error: statuses[name] = "error" errors[name] = _l2cs_error else: statuses[name] = "unavailable" elif p is not None: statuses[name] = "ready" available.append(name) else: statuses[name] = "unavailable" async with aiosqlite.connect(db_path) as db: cursor = await db.execute("SELECT model_name FROM user_settings WHERE id = 1") row = await cursor.fetchone() current = row[0] if row else "mlp" if current not in available and available: current = available[0] l2cs_boost_available = ( statuses.get("l2cs") in ("ready", "lazy") and current != "l2cs" ) return { "available": available, "current": current, "statuses": statuses, "errors": errors, "l2cs_boost": _l2cs_boost_enabled, "l2cs_boost_available": l2cs_boost_available, } @app.get("/api/l2cs/status") async def l2cs_status(): """L2CS-specific status: weights available, loaded, and calibration info.""" loaded = pipelines.get("l2cs") is not None return { "weights_available": is_l2cs_weights_available(), "loaded": loaded, "error": _l2cs_error, } @app.get("/api/mesh-topology") async def get_mesh_topology(): """Return tessellation edge pairs for client-side face mesh drawing (cached by client).""" return {"tessellation": _TESSELATION_CONNS} @app.get("/health") async def health_check(): available = [name for name, p in pipelines.items() if p is not None] return {"status": "healthy", "models_loaded": available, "database": os.path.exists(db_path)} # ================ STATIC FILES (SPA SUPPORT) ================ # Resolve static dir from this file so it works regardless of cwd _STATIC_DIR = Path(__file__).resolve().parent / "static" _ASSETS_DIR = _STATIC_DIR / "assets" # 1. Mount the assets folder (JS/CSS) first so /assets/* is never caught by catch-all if _ASSETS_DIR.is_dir(): app.mount("/assets", StaticFiles(directory=str(_ASSETS_DIR)), name="assets") # 2. Catch-all for SPA: serve index.html for app routes, never for /assets (would break JS MIME type) @app.get("/{full_path:path}") async def serve_react_app(full_path: str, request: Request): if full_path.startswith("api") or full_path.startswith("ws"): raise HTTPException(status_code=404, detail="Not Found") # Don't serve HTML for asset paths; let them 404 so we don't break module script loading if full_path.startswith("assets") or full_path.startswith("assets/"): raise HTTPException(status_code=404, detail="Not Found") index_path = _STATIC_DIR / "index.html" if index_path.is_file(): return FileResponse(str(index_path)) return {"message": "React app not found. Please run 'npm run build' and copy dist to static."}