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| import torch | |
| import numpy as np | |
| from src.model.encoder.vggt.utils.rotation import mat_to_quat | |
| from src.model.encoder.vggt.utils.geometry import closed_form_inverse_se3, unproject_depth_map_to_point_map | |
| def convert_pt3d_RT_to_opencv(Rot, Trans): | |
| """ | |
| Convert Point3D extrinsic matrices to OpenCV convention. | |
| Args: | |
| Rot: 3D rotation matrix in Point3D format | |
| Trans: 3D translation vector in Point3D format | |
| Returns: | |
| extri_opencv: 3x4 extrinsic matrix in OpenCV format | |
| """ | |
| rot_pt3d = np.array(Rot) | |
| trans_pt3d = np.array(Trans) | |
| trans_pt3d[:2] *= -1 | |
| rot_pt3d[:, :2] *= -1 | |
| rot_pt3d = rot_pt3d.transpose(1, 0) | |
| extri_opencv = np.hstack((rot_pt3d, trans_pt3d[:, None])) | |
| return extri_opencv | |
| def build_pair_index(N, B=1): | |
| """ | |
| Build indices for all possible pairs of frames. | |
| Args: | |
| N: Number of frames | |
| B: Batch size | |
| Returns: | |
| i1, i2: Indices for all possible pairs | |
| """ | |
| i1_, i2_ = torch.combinations(torch.arange(N), 2, with_replacement=False).unbind(-1) | |
| i1, i2 = [(i[None] + torch.arange(B)[:, None] * N).reshape(-1) for i in [i1_, i2_]] | |
| return i1, i2 | |
| def rotation_angle(rot_gt, rot_pred, batch_size=None, eps=1e-15): | |
| """ | |
| Calculate rotation angle error between ground truth and predicted rotations. | |
| Args: | |
| rot_gt: Ground truth rotation matrices | |
| rot_pred: Predicted rotation matrices | |
| batch_size: Batch size for reshaping the result | |
| eps: Small value to avoid numerical issues | |
| Returns: | |
| Rotation angle error in degrees | |
| """ | |
| q_pred = mat_to_quat(rot_pred) | |
| q_gt = mat_to_quat(rot_gt) | |
| loss_q = (1 - (q_pred * q_gt).sum(dim=1) ** 2).clamp(min=eps) | |
| err_q = torch.arccos(1 - 2 * loss_q) | |
| rel_rangle_deg = err_q * 180 / np.pi | |
| if batch_size is not None: | |
| rel_rangle_deg = rel_rangle_deg.reshape(batch_size, -1) | |
| return rel_rangle_deg | |
| def translation_angle(tvec_gt, tvec_pred, batch_size=None, ambiguity=True): | |
| """ | |
| Calculate translation angle error between ground truth and predicted translations. | |
| Args: | |
| tvec_gt: Ground truth translation vectors | |
| tvec_pred: Predicted translation vectors | |
| batch_size: Batch size for reshaping the result | |
| ambiguity: Whether to handle direction ambiguity | |
| Returns: | |
| Translation angle error in degrees | |
| """ | |
| rel_tangle_deg = compare_translation_by_angle(tvec_gt, tvec_pred) | |
| rel_tangle_deg = rel_tangle_deg * 180.0 / np.pi | |
| if ambiguity: | |
| rel_tangle_deg = torch.min(rel_tangle_deg, (180 - rel_tangle_deg).abs()) | |
| if batch_size is not None: | |
| rel_tangle_deg = rel_tangle_deg.reshape(batch_size, -1) | |
| return rel_tangle_deg | |
| def compare_translation_by_angle(t_gt, t, eps=1e-15, default_err=1e6): | |
| """ | |
| Normalize the translation vectors and compute the angle between them. | |
| Args: | |
| t_gt: Ground truth translation vectors | |
| t: Predicted translation vectors | |
| eps: Small value to avoid division by zero | |
| default_err: Default error value for invalid cases | |
| Returns: | |
| Angular error between translation vectors in radians | |
| """ | |
| t_norm = torch.norm(t, dim=1, keepdim=True) | |
| t = t / (t_norm + eps) | |
| t_gt_norm = torch.norm(t_gt, dim=1, keepdim=True) | |
| t_gt = t_gt / (t_gt_norm + eps) | |
| loss_t = torch.clamp_min(1.0 - torch.sum(t * t_gt, dim=1) ** 2, eps) | |
| err_t = torch.acos(torch.sqrt(1 - loss_t)) | |
| err_t[torch.isnan(err_t) | torch.isinf(err_t)] = default_err | |
| return err_t | |
| def calculate_auc(r_error, t_error, max_threshold=30, return_list=False): | |
| """ | |
| Calculate the Area Under the Curve (AUC) for the given error arrays using PyTorch. | |
| Args: | |
| r_error: torch.Tensor representing R error values (Degree) | |
| t_error: torch.Tensor representing T error values (Degree) | |
| max_threshold: Maximum threshold value for binning the histogram | |
| return_list: Whether to return the normalized histogram as well | |
| Returns: | |
| AUC value, and optionally the normalized histogram | |
| """ | |
| error_matrix = torch.stack((r_error, t_error), dim=1) | |
| max_errors, _ = torch.max(error_matrix, dim=1) | |
| histogram = torch.histc( | |
| max_errors, bins=max_threshold + 1, min=0, max=max_threshold | |
| ) | |
| num_pairs = float(max_errors.size(0)) | |
| normalized_histogram = histogram / num_pairs | |
| if return_list: | |
| return ( | |
| torch.cumsum(normalized_histogram, dim=0).mean(), | |
| normalized_histogram, | |
| ) | |
| return torch.cumsum(normalized_histogram, dim=0).mean() | |
| def calculate_auc_np(r_error, t_error, max_threshold=30): | |
| """ | |
| Calculate the Area Under the Curve (AUC) for the given error arrays using NumPy. | |
| Args: | |
| r_error: numpy array representing R error values (Degree) | |
| t_error: numpy array representing T error values (Degree) | |
| max_threshold: Maximum threshold value for binning the histogram | |
| Returns: | |
| AUC value and the normalized histogram | |
| """ | |
| error_matrix = np.concatenate((r_error[:, None], t_error[:, None]), axis=1) | |
| max_errors = np.max(error_matrix, axis=1) | |
| bins = np.arange(max_threshold + 1) | |
| histogram, _ = np.histogram(max_errors, bins=bins) | |
| num_pairs = float(len(max_errors)) | |
| normalized_histogram = histogram.astype(float) / num_pairs | |
| return np.mean(np.cumsum(normalized_histogram)), normalized_histogram | |
| def se3_to_relative_pose_error(pred_se3, gt_se3, num_frames): | |
| """ | |
| Compute rotation and translation errors between predicted and ground truth poses. | |
| Args: | |
| pred_se3: Predicted SE(3) transformations | |
| gt_se3: Ground truth SE(3) transformations | |
| num_frames: Number of frames | |
| Returns: | |
| Rotation and translation angle errors in degrees | |
| """ | |
| pair_idx_i1, pair_idx_i2 = build_pair_index(num_frames) | |
| # Compute relative camera poses between pairs | |
| # We use closed_form_inverse to avoid potential numerical loss by torch.inverse() | |
| relative_pose_gt = closed_form_inverse_se3(gt_se3[pair_idx_i1]).bmm( | |
| gt_se3[pair_idx_i2] | |
| ) | |
| relative_pose_pred = closed_form_inverse_se3(pred_se3[pair_idx_i1]).bmm( | |
| pred_se3[pair_idx_i2] | |
| ) | |
| # Compute the difference in rotation and translation | |
| rel_rangle_deg = rotation_angle( | |
| relative_pose_gt[:, :3, :3], relative_pose_pred[:, :3, :3] | |
| ) | |
| rel_tangle_deg = translation_angle( | |
| relative_pose_gt[:, :3, 3], relative_pose_pred[:, :3, 3] | |
| ) | |
| return rel_rangle_deg, rel_tangle_deg | |
| def align_to_first_camera(camera_poses): | |
| """ | |
| Align all camera poses to the first camera's coordinate frame. | |
| Args: | |
| camera_poses: Tensor of shape (N, 4, 4) containing camera poses as SE3 transformations | |
| Returns: | |
| Tensor of shape (N, 4, 4) containing aligned camera poses | |
| """ | |
| first_cam_extrinsic_inv = closed_form_inverse_se3(camera_poses[0][None]) | |
| aligned_poses = torch.matmul(camera_poses, first_cam_extrinsic_inv) | |
| return aligned_poses |