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import json
from pathlib import Path
import torch
import torch.nn as nn
import torchvision.transforms.functional as TF
from PIL import Image
from torchcam.methods import GradCAM
from torchcam.utils import overlay_mask
from torchvision import models as tvm
from torchvision import transforms
from src.train import SmallCNN, get_device
def build_argparser():
p = argparse.ArgumentParser(description="Grad-CAM explanations")
p.add_argument("--ckpt", type=str, required=True, help="Path to best.ckpt")
p.add_argument("--image", type=str, required=True, help="Path to an input image")
p.add_argument(
"--dataset",
choices=["fashion-mnist", "mnist", "cifar10"],
default="fashion-mnist",
help="Used to apply the right normalization and class names",
)
p.add_argument(
"--target-layer",
type=str,
default="conv2",
help="Layer to attach CAMs (e.g., 'conv2' for SmallCNN, 'layer4' for ResNet)",
)
p.add_argument(
"--outdir",
type=str,
default=None,
help="Where to store results; defaults near the checkpoint",
)
p.add_argument("--device", choices=["auto", "cpu", "cuda"], default="auto")
p.add_argument("--topk", type=int, default=3, help="How many top classes to render")
return p
def get_transforms_from_meta(meta):
img_size = int(meta.get("img_size", 28))
mean = meta.get("mean", [0.2860]) # fallback FMNIST
std = meta.get("std", [0.3530])
# channels: grayscale if mean/std length==1, else RGB
if len(mean) == 1:
tf = transforms.Compose(
[
transforms.Grayscale(num_output_channels=1),
transforms.Resize((img_size, img_size)),
transforms.ToTensor(),
transforms.Normalize(mean, std),
]
)
else:
tf = transforms.Compose(
[
transforms.Resize((img_size, img_size)),
transforms.ToTensor(),
transforms.Normalize(mean, std),
]
)
return tf
def denorm_to_pil(x: torch.Tensor, mean, std) -> Image.Image:
"""
x: normalized tensor CxHxW
mean/std: list(s) from meta
returns: PIL RGB image for overlay
"""
x = x.detach().cpu().clone()
if len(mean) == 1: # grayscale
m, s = float(mean[0]), float(std[0])
x = x * s + m
x = x.clamp(0, 1)
pil = transforms.ToPILImage()(x) # grayscale PIL
return pil.convert("RGB")
else: # RGB
mean_t = torch.tensor(mean)[:, None, None]
std_t = torch.tensor(std)[:, None, None]
x = x * std_t + mean_t
x = x.clamp(0, 1)
return transforms.ToPILImage()(x)
def load_model(ckpt_path, device):
ckpt = torch.load(ckpt_path, map_location=device)
classes = ckpt.get("classes", None)
meta = ckpt.get("meta", {})
num_classes = len(classes) if classes else 10
model_name = meta.get("model_name", "smallcnn")
if model_name == "smallcnn":
model = SmallCNN(num_classes=num_classes).to(device)
elif model_name == "resnet18_cifar":
m = tvm.resnet18(weights=None)
m.conv1 = nn.Conv2d(3, 64, kernel_size=3, stride=1, padding=1, bias=False)
m.maxpool = nn.Identity()
m.fc = nn.Linear(m.fc.in_features, num_classes)
model = m.to(device)
elif model_name == "resnet18_imagenet":
try:
w = tvm.ResNet18_Weights.IMAGENET1K_V1
except Exception:
w = None
m = tvm.resnet18(weights=w)
m.fc = nn.Linear(m.fc.in_features, num_classes)
model = m.to(device)
else:
raise ValueError(f"Unknown model in ckpt: {model_name}")
model.load_state_dict(ckpt["model_state"])
model.eval()
return model, classes, meta
def run_gradcam(
model,
target_layer,
img_tensor,
device,
classes,
outdir: Path,
topk=3,
base_pil_rgb: Image.Image = None,
):
"""
img_tensor: CxHxW normalized (not batched)
base_pil_rgb: PIL image already denormalized & RGB for overlay (optional).
If None, will min-max scale from img_tensor (last-resort).
"""
model.eval()
x = img_tensor.to(device).unsqueeze(0) # [1,C,H,W]
H, W = img_tensor.shape[-2:]
cam_extractor = GradCAM(model, target_layer=target_layer)
# forward once to get top-k
logits = model(x)
probs = torch.softmax(logits, dim=1)[0].detach().cpu()
top_vals, top_idxs = probs.topk(topk)
if base_pil_rgb is None:
# Fallback: simple min-max scaling (works but less faithful than denorm)
xx = img_tensor.detach().cpu()
xx = (xx - xx.min()) / (xx.max() - xx.min() + 1e-8)
base_pil_rgb = transforms.ToPILImage()(xx)
if xx.shape[0] == 1:
base_pil_rgb = base_pil_rgb.convert("RGB")
results = []
for rank, (score, cls_idx) in enumerate(zip(top_vals.tolist(), top_idxs.tolist())):
retain = rank < topk - 1
cams = cam_extractor(int(cls_idx), logits, retain_graph=retain)
cam = cams[0].detach().cpu() # [h,w]
cam_up = TF.resize(cam.unsqueeze(0), size=[H, W])[0] # upsample to input size
heat = transforms.ToPILImage()(cam_up)
overlay = overlay_mask(base_pil_rgb, heat, alpha=0.6)
out_png = (
outdir / f"gradcam_top{rank+1}_class{cls_idx}_"
+ f"{classes[cls_idx] if classes else cls_idx}.png"
)
overlay.save(out_png)
results.append(
{
"rank": rank + 1,
"class_index": int(cls_idx),
"class_name": classes[cls_idx] if classes else str(cls_idx),
"prob": float(score),
"file": str(out_png),
}
)
with open(outdir / "summary.json", "w") as f:
json.dump({"topk": results}, f, indent=2)
print("Saved:", outdir)
return results
def main():
args = build_argparser().parse_args()
device = get_device(args.device)
ckpt_path = Path(args.ckpt)
# outdir default
if args.outdir is None:
run_id = ckpt_path.parent.name
outdir = ckpt_path.parent.parent.parent / "reports" / run_id / "explain"
else:
outdir = Path(args.outdir)
outdir.mkdir(parents=True, exist_ok=True)
# 1) load model+meta first
model, classes, meta = load_model(str(ckpt_path), device)
# 2) build tf from meta
tf = get_transforms_from_meta(meta)
# 3) load and transform image
pil = Image.open(args.image).convert("RGB")
x = tf(pil) # CxHxW normalized
# 4) make a denormalized RGB base image for overlay
base_pil = denorm_to_pil(x, meta.get("mean", [0.2860]), meta.get("std", [0.3530]))
# 5) target layer (CLI overrides meta default)
target_layer = args.target_layer or meta.get("default_target_layer", "conv2")
# 6) run Grad-CAM
results = run_gradcam(
model,
target_layer,
x,
device,
classes,
outdir,
topk=args.topk,
base_pil_rgb=base_pil,
)
# 7) print summary
for r in results:
print(f"Top{r['rank']}: {r['class_name']} ({r['prob']:.3f}) -> {r['file']}")
if __name__ == "__main__":
main()
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