import numpy as np import pandas as pd from scipy.spatial.transform import Rotation def load_tum_trajectory(tum_txt_path): tum_traj_raw = np.loadtxt(tum_txt_path, delimiter=" ", dtype=np.float32) if len(tum_traj_raw) == 0: return { "timestamp": np.array([]), "pose": np.array([]), } timestamp_sec = tum_traj_raw[:, 0] cam_pos = tum_traj_raw[:, 1:4] cam_rot_quat_xyzw = tum_traj_raw[:, 4:8] cam_rot = Rotation.from_quat(cam_rot_quat_xyzw) cam_pose = np.zeros((cam_pos.shape[0], 4, 4), dtype=np.float32) cam_pose[:, 3, 3] = 1 cam_pose[:, :3, 3] = cam_pos cam_pose[:, :3, :3] = cam_rot.as_matrix() result = {"timestamp": timestamp_sec, "pose": cam_pose} return result def load_csv_trajectory(csv_path): df = pd.read_csv(csv_path) if (~df.is_lost).sum() == 0: return {"raw_data": df} valid_df = df.loc[~df.is_lost] timestamp_sec = valid_df["timestamp"].to_numpy() cam_pos = valid_df[["x", "y", "z"]].to_numpy() cam_rot_quat_xyzw = valid_df[["q_x", "q_y", "q_z", "q_w"]].to_numpy() cam_rot = Rotation.from_quat(cam_rot_quat_xyzw) cam_pose = np.zeros((cam_pos.shape[0], 4, 4), dtype=np.float32) cam_pose[:, 3, 3] = 1 cam_pose[:, :3, 3] = cam_pos cam_pose[:, :3, :3] = cam_rot.as_matrix() result = {"timestamp": timestamp_sec, "pose": cam_pose, "raw_data": df} return result