import os import matplotlib.pyplot as plt import matplotlib.image as mpimg import sys sys.path.append(os.path.abspath(".")) # one level up import numpy as np import cv2 import open3d as o3d from scipy.spatial.transform import Rotation from utils.lidar import PointCloud from utils.camera import ImageData import utils.utils as utils from natsort import natsorted cmap = plt.get_cmap("jet") # User parameters # location = 'Cambogan' # sequence = '20250811_113017' # sequence = '20250812_122339' #'20250812_122101' # location = 'Holmview' # sequence = '20250820_130327' # location = 'Mount-Cotton' # sequence = '20241217_113410' # location = 'Pullenvale' # sequence = '20250916_124105' location = 'DairyCreek' sequence = '20250811_103318' condition = 'flooded' # condition = 'dry' camera_pos = 'front' # root_directory = f"C:/Users/conno/Documents/data/FRED/{condition}/KITTI-style/" #f"D:/Datasets/FRED/{condition}/KITTI-style" root_directory = f"U:/Research/Projects/KVFPRA9190/FRED/{condition}/KITTI-style" # 01000000 ############ Define filenames and directories #################################### image_dir = f"{root_directory}/{location}_{sequence}/{camera_pos}-imgs/" lidar_dir = f"{root_directory}/{location}_{sequence}/ouster/" utm_dir = f"{root_directory}/{location}_{sequence}/utm/" img_calib_file = f"./camera_calib.txt" lidar_calib_file = f"./calib.txt" timestamps = [filename.split('.png')[0] for filename in natsorted(os.listdir(image_dir)) if os.path.isfile(image_dir+filename)] # timestamps.sort() fig, ax = plt.subplots(figsize=(12.8, 8)) # idx = [0] # mutable index # idx = [183] idx = [200] def show_image(i): ax.clear() if i >= len(timestamps): plt.close(fig) return image_timestamp = timestamps[i] try: image_filename = f"{image_dir}/{image_timestamp}.png" lidar_filename, utm_filename = utils.get_corr_files(image_timestamp, [lidar_dir, utm_dir]) image = ImageData(image_filename, img_calib_file) pointcloud = PointCloud(lidar_filename, lidar_calib_file) point_cam, distances_cam, intensities_cam, all_points_cam, valid_cam = pointcloud.points_ouster_to_cam() #, beam_id, azimuth p_high = np.percentile(intensities_cam, 99) intensities_cam = np.clip(intensities_cam, 0, p_high) / p_high * 255 img_vis, _, _, _ = image.project_points(all_points_cam, intensities_cam, cmap, valid_cam, colour_norm=255) #, beam_id, azimuth ax.imshow(img_vis[:, :, ::-1]) ax.set_title(f"{image_timestamp}.png") ax.axis("off") # plt.savefig('paper_figures/CADRRAS/projected_pointcloud_distance_flooded.svg', format="svg", bbox_inches='tight') fig.canvas.draw() except Exception as e: print(f"Could not project pointcloud onto {image_timestamp}.png: {e}") idx[0] += 1 show_image(idx[0]) # skip bad one def on_key(event): if event.key in [' ', 'right']: # space or right arrow idx[0] += 1 show_image(idx[0]) elif event.key in [' ', 'left']: # space or right arrow if idx[0] > 0: idx[0] -= 1 show_image(idx[0]) elif event.key in ['q', 'escape']: # q or Esc → quit plt.close(fig) fig.canvas.mpl_connect('key_press_event', on_key) show_image(idx[0]) plt.show()