# # Copyright (C) 2023, Inria # GRAPHDECO research group, https://team.inria.fr/graphdeco # All rights reserved. # # This software is free for non-commercial, research and evaluation use # under the terms of the LICENSE.md file. # # For inquiries contact george.drettakis@inria.fr # from scene.cameras import Camera import numpy as np from utils.general_utils import PILtoTorch from utils.graphics_utils import fov2focal WARNED = False def loadCam(args, id, cam_info, resolution_scale): image_rgb = PILtoTorch(cam_info.image).type("torch.ByteTensor") background = PILtoTorch(cam_info.background)[:3, ...].type("torch.ByteTensor") gt_image = image_rgb[:3, ...] loaded_mask = None return Camera(colmap_id=cam_info.uid, R=cam_info.R, T=cam_info.T, FoVx=cam_info.FovX, FoVy=cam_info.FovY, image=gt_image, gt_alpha_mask=loaded_mask, background=background, talking_dict=cam_info.talking_dict, image_name=cam_info.image_name, uid=id, data_device=args.data_device) def cameraList_from_camInfos(cam_infos, resolution_scale, args): camera_list = [] for id, c in enumerate(cam_infos): camera_list.append(loadCam(args, id, c, resolution_scale)) return camera_list def camera_to_JSON(id, camera : Camera): Rt = np.zeros((4, 4)) Rt[:3, :3] = camera.R.transpose() Rt[:3, 3] = camera.T Rt[3, 3] = 1.0 W2C = np.linalg.inv(Rt) pos = W2C[:3, 3] rot = W2C[:3, :3] serializable_array_2d = [x.tolist() for x in rot] camera_entry = { 'id' : id, 'img_name' : camera.image_name, 'width' : camera.width, 'height' : camera.height, 'position': pos.tolist(), 'rotation': serializable_array_2d, 'fy' : fov2focal(camera.FovY, camera.height), 'fx' : fov2focal(camera.FovX, camera.width) } return camera_entry