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# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.

import os
import torch
import numpy as np
from scipy.spatial.transform import Rotation as R

from scipy.spatial.transform import Rotation
try:
    from lietorch import SE3, Sim3
except ImportError:
    SE3 = Sim3 = None
import torch.nn.functional as F

try:
    from lingbot_map.dependency.distortion import apply_distortion, iterative_undistortion, single_undistortion
except ImportError:
    apply_distortion = iterative_undistortion = single_undistortion = None


def unproject_depth_map_to_point_map(
    depth_map: np.ndarray, extrinsics_cam: np.ndarray, intrinsics_cam: np.ndarray
) -> np.ndarray:
    """
    Unproject a batch of depth maps to 3D world coordinates.

    Args:
        depth_map (np.ndarray): Batch of depth maps of shape (S, H, W, 1) or (S, H, W)
        extrinsics_cam (np.ndarray): Batch of camera extrinsic matrices of shape (S, 3, 4)
        intrinsics_cam (np.ndarray): Batch of camera intrinsic matrices of shape (S, 3, 3)

    Returns:
        np.ndarray: Batch of 3D world coordinates of shape (S, H, W, 3)
    """
    if isinstance(depth_map, torch.Tensor):
        depth_map = depth_map.cpu().numpy()
    if isinstance(extrinsics_cam, torch.Tensor):
        extrinsics_cam = extrinsics_cam.cpu().numpy()
    if isinstance(intrinsics_cam, torch.Tensor):
        intrinsics_cam = intrinsics_cam.cpu().numpy()

    world_points_list = []
    for frame_idx in range(depth_map.shape[0]):
        cur_world_points, _, _ = depth_to_world_coords_points(
            depth_map[frame_idx].squeeze(-1), extrinsics_cam[frame_idx], intrinsics_cam[frame_idx]
        )
        world_points_list.append(cur_world_points)
    world_points_array = np.stack(world_points_list, axis=0)

    return world_points_array


def depth_to_world_coords_points(
    depth_map: np.ndarray,
    extrinsic: np.ndarray,
    intrinsic: np.ndarray,
    eps=1e-8,
) -> tuple[np.ndarray, np.ndarray, np.ndarray]:
    """
    Convert a depth map to world coordinates.

    Args:
        depth_map (np.ndarray): Depth map of shape (H, W).
        intrinsic (np.ndarray): Camera intrinsic matrix of shape (3, 3).
        extrinsic (np.ndarray): Camera extrinsic matrix of shape (3, 4). OpenCV camera coordinate convention, cam from world.

    Returns:
        tuple[np.ndarray, np.ndarray]: World coordinates (H, W, 3) and valid depth mask (H, W).
    """
    if depth_map is None:
        return None, None, None

    # Valid depth mask
    point_mask = depth_map > eps

    # Convert depth map to camera coordinates
    cam_coords_points = depth_to_cam_coords_points(depth_map, intrinsic)

    # Multiply with the inverse of extrinsic matrix to transform to world coordinates
    # extrinsic_inv is 4x4 (note closed_form_inverse_OpenCV is batched, the output is (N, 4, 4))
    cam_to_world_extrinsic = closed_form_inverse_se3(extrinsic[None])[0]

    R_cam_to_world = cam_to_world_extrinsic[:3, :3]
    t_cam_to_world = cam_to_world_extrinsic[:3, 3]

    # Apply the rotation and translation to the camera coordinates
    world_coords_points = np.dot(cam_coords_points, R_cam_to_world.T) + t_cam_to_world  # HxWx3, 3x3 -> HxWx3
    # world_coords_points = np.einsum("ij,hwj->hwi", R_cam_to_world, cam_coords_points) + t_cam_to_world

    return world_coords_points, cam_coords_points, point_mask


def depth_to_cam_coords_points(depth_map: np.ndarray, intrinsic: np.ndarray) -> tuple[np.ndarray, np.ndarray]:
    """
    Convert a depth map to camera coordinates.

    Args:
        depth_map (np.ndarray): Depth map of shape (H, W).
        intrinsic (np.ndarray): Camera intrinsic matrix of shape (3, 3).

    Returns:
        tuple[np.ndarray, np.ndarray]: Camera coordinates (H, W, 3)
    """
    H, W = depth_map.shape
    assert intrinsic.shape == (3, 3), "Intrinsic matrix must be 3x3"
    assert intrinsic[0, 1] == 0 and intrinsic[1, 0] == 0, "Intrinsic matrix must have zero skew"

    # Intrinsic parameters
    fu, fv = intrinsic[0, 0], intrinsic[1, 1]
    cu, cv = intrinsic[0, 2], intrinsic[1, 2]

    # Generate grid of pixel coordinates
    u, v = np.meshgrid(np.arange(W), np.arange(H))

    # Unproject to camera coordinates
    x_cam = (u - cu) * depth_map / fu
    y_cam = (v - cv) * depth_map / fv
    z_cam = depth_map

    # Stack to form camera coordinates
    cam_coords = np.stack((x_cam, y_cam, z_cam), axis=-1).astype(np.float32)

    return cam_coords


def closed_form_inverse_se3(se3, R=None, T=None):
    """
    Compute the inverse of each 4x4 (or 3x4) SE3 matrix in a batch.

    If `R` and `T` are provided, they must correspond to the rotation and translation
    components of `se3`. Otherwise, they will be extracted from `se3`.

    Args:
        se3: Nx4x4 or Nx3x4 array or tensor of SE3 matrices.
        R (optional): Nx3x3 array or tensor of rotation matrices.
        T (optional): Nx3x1 array or tensor of translation vectors.

    Returns:
        Inverted SE3 matrices with the same type and device as `se3`.

    Shapes:
        se3: (N, 4, 4)
        R: (N, 3, 3)
        T: (N, 3, 1)
    """
    # Check if se3 is a numpy array or a torch tensor
    is_numpy = isinstance(se3, np.ndarray)

    # Validate shapes
    if se3.shape[-2:] != (4, 4) and se3.shape[-2:] != (3, 4):
        raise ValueError(f"se3 must be of shape (N,4,4), got {se3.shape}.")

    # Extract R and T if not provided
    if R is None:
        R = se3[:, :3, :3]  # (N,3,3)
    if T is None:
        T = se3[:, :3, 3:]  # (N,3,1)

    # Transpose R
    if is_numpy:
        # Compute the transpose of the rotation for NumPy
        R_transposed = np.transpose(R, (0, 2, 1))
        # -R^T t for NumPy
        top_right = -np.matmul(R_transposed, T)
        inverted_matrix = np.tile(np.eye(4), (len(R), 1, 1))
    else:
        R_transposed = R.transpose(1, 2)  # (N,3,3)
        top_right = -torch.bmm(R_transposed, T)  # (N,3,1)
        inverted_matrix = torch.eye(4, 4)[None].repeat(len(R), 1, 1)
        inverted_matrix = inverted_matrix.to(R.dtype).to(R.device)

    inverted_matrix[:, :3, :3] = R_transposed
    inverted_matrix[:, :3, 3:] = top_right

    return inverted_matrix

def closed_form_inverse_se3_general(se3, R=None, T=None):
    """
    支持任意 batch 维度的 SE3 逆运算
    se3: (..., 4, 4) 或 (..., 3, 4)
    """
    batch_shape = se3.shape[:-2]
    if R is None:
        R = se3[..., :3, :3]
    if T is None:
        T = se3[..., :3, 3:]
    R_transposed = R.transpose(-2, -1)
    top_right = -R_transposed @ T
    # 构造单位阵
    eye = torch.eye(4, 4, dtype=R.dtype, device=R.device)
    inverted_matrix = eye.expand(*batch_shape, 4, 4).clone()
    inverted_matrix[..., :3, :3] = R_transposed
    inverted_matrix[..., :3, 3:] = top_right
    return inverted_matrix


# TODO: this code can be further cleaned up


def project_world_points_to_camera_points_batch(world_points, cam_extrinsics):
    """
    Transforms 3D points to 2D using extrinsic and intrinsic parameters.
    Args:
        world_points (torch.Tensor): 3D points of shape BxSxHxWx3.
        cam_extrinsics (torch.Tensor): Extrinsic parameters of shape BxSx3x4.
    Returns:
    """
    # TODO: merge this into project_world_points_to_cam
    
    # device = world_points.device
    # with torch.autocast(device_type=device.type, enabled=False):
    ones = torch.ones_like(world_points[..., :1])  # shape: (B, S, H, W, 1)
    world_points_h = torch.cat([world_points, ones], dim=-1)  # shape: (B, S, H, W, 4)

    # extrinsics: (B, S, 3, 4) -> (B, S, 1, 1, 3, 4)
    extrinsics_exp = cam_extrinsics.unsqueeze(2).unsqueeze(3)

    # world_points_h: (B, S, H, W, 4) -> (B, S, H, W, 4, 1)
    world_points_h_exp = world_points_h.unsqueeze(-1)

    # Now perform the matrix multiplication
    # (B, S, 1, 1, 3, 4) @ (B, S, H, W, 4, 1) broadcasts to (B, S, H, W, 3, 1)
    camera_points = torch.matmul(extrinsics_exp, world_points_h_exp).squeeze(-1)

    return camera_points



def project_world_points_to_cam(
    world_points,
    cam_extrinsics,
    cam_intrinsics=None,
    distortion_params=None,
    default=0,
    only_points_cam=False,
):
    """
    Transforms 3D points to 2D using extrinsic and intrinsic parameters.
    Args:
        world_points (torch.Tensor): 3D points of shape Px3.
        cam_extrinsics (torch.Tensor): Extrinsic parameters of shape Bx3x4.
        cam_intrinsics (torch.Tensor): Intrinsic parameters of shape Bx3x3.
        distortion_params (torch.Tensor): Extra parameters of shape BxN, which is used for radial distortion.
    Returns:
        torch.Tensor: Transformed 2D points of shape BxNx2.
    """
    device = world_points.device
    # with torch.autocast(device_type=device.type, dtype=torch.double):
    with torch.autocast(device_type=device.type, enabled=False):
        N = world_points.shape[0]  # Number of points
        B = cam_extrinsics.shape[0]  # Batch size, i.e., number of cameras
        world_points_homogeneous = torch.cat(
            [world_points, torch.ones_like(world_points[..., 0:1])], dim=1
        )  # Nx4
        # Reshape for batch processing
        world_points_homogeneous = world_points_homogeneous.unsqueeze(0).expand(
            B, -1, -1
        )  # BxNx4

        # Step 1: Apply extrinsic parameters
        # Transform 3D points to camera coordinate system for all cameras
        cam_points = torch.bmm(
            cam_extrinsics, world_points_homogeneous.transpose(-1, -2)
        )

        if only_points_cam:
            return None, cam_points

        # Step 2: Apply intrinsic parameters and (optional) distortion
        image_points = img_from_cam(cam_intrinsics, cam_points, distortion_params, default=default)

        return image_points, cam_points



def img_from_cam(cam_intrinsics, cam_points, distortion_params=None, default=0.0):
    """
    Applies intrinsic parameters and optional distortion to the given 3D points.

    Args:
        cam_intrinsics (torch.Tensor): Intrinsic camera parameters of shape Bx3x3.
        cam_points (torch.Tensor): 3D points in camera coordinates of shape Bx3xN.
        distortion_params (torch.Tensor, optional): Distortion parameters of shape BxN, where N can be 1, 2, or 4.
        default (float, optional): Default value to replace NaNs in the output.

    Returns:
        pixel_coords (torch.Tensor): 2D points in pixel coordinates of shape BxNx2.
    """

    # Normalized device coordinates (NDC)
    cam_points = cam_points / cam_points[:, 2:3, :]
    ndc_xy = cam_points[:, :2, :]

    # Apply distortion if distortion_params are provided
    if distortion_params is not None:
        x_distorted, y_distorted = apply_distortion(distortion_params, ndc_xy[:, 0], ndc_xy[:, 1])
        distorted_xy = torch.stack([x_distorted, y_distorted], dim=1)
    else:
        distorted_xy = ndc_xy

    # Prepare cam_points for batch matrix multiplication
    cam_coords_homo = torch.cat(
        (distorted_xy, torch.ones_like(distorted_xy[:, :1, :])), dim=1
    )  # Bx3xN
    # Apply intrinsic parameters using batch matrix multiplication
    pixel_coords = torch.bmm(cam_intrinsics, cam_coords_homo)  # Bx3xN

    # Extract x and y coordinates
    pixel_coords = pixel_coords[:, :2, :]  # Bx2xN

    # Replace NaNs with default value
    pixel_coords = torch.nan_to_num(pixel_coords, nan=default)

    return pixel_coords.transpose(1, 2)  # BxNx2




def cam_from_img(pred_tracks, intrinsics, extra_params=None):
    """
    Normalize predicted tracks based on camera intrinsics.
    Args:
    intrinsics (torch.Tensor): The camera intrinsics tensor of shape [batch_size, 3, 3].
    pred_tracks (torch.Tensor): The predicted tracks tensor of shape [batch_size, num_tracks, 2].
    extra_params (torch.Tensor, optional): Distortion parameters of shape BxN, where N can be 1, 2, or 4.
    Returns:
    torch.Tensor: Normalized tracks tensor.
    """

    # We don't want to do intrinsics_inv = torch.inverse(intrinsics) here
    # otherwise we can use something like
    #     tracks_normalized_homo = torch.bmm(pred_tracks_homo, intrinsics_inv.transpose(1, 2))

    principal_point = intrinsics[:, [0, 1], [2, 2]].unsqueeze(-2)
    focal_length = intrinsics[:, [0, 1], [0, 1]].unsqueeze(-2)
    tracks_normalized = (pred_tracks - principal_point) / focal_length

    if extra_params is not None:
        # Apply iterative undistortion
        try:
            tracks_normalized = iterative_undistortion(
                extra_params, tracks_normalized
            )
        except:
            tracks_normalized = single_undistortion(
                extra_params, tracks_normalized
            )

    return tracks_normalized

## Droid SLAM Part

MIN_DEPTH = 0.2

def extract_intrinsics(intrinsics):
    return intrinsics[...,None,None,:].unbind(dim=-1)

def projective_transform(
    poses, depths, intrinsics, ii, jj, jacobian=False, return_depth=False
):
    """map points from ii->jj"""

    # inverse project (pinhole)
    X0, Jz = iproj(depths[:, ii], intrinsics[:, ii], jacobian=jacobian)

    # transform
    Gij = poses[:, jj] * poses[:, ii].inv()

    # Gij.data[:, ii == jj] = torch.as_tensor(
    #     [-0.1, 0.0, 0.0, 0.0, 0.0, 0.0, 1.0], device="cuda"
    # )
    X1, Ja = actp(Gij, X0, jacobian=jacobian)

    # project (pinhole)
    x1, Jp = proj(X1, intrinsics[:, jj], jacobian=jacobian, return_depth=return_depth)

    # exclude points too close to camera
    valid = ((X1[..., 2] > MIN_DEPTH) & (X0[..., 2] > MIN_DEPTH)).float()
    valid = valid.unsqueeze(-1)

    if jacobian:
        # Ji transforms according to dual adjoint
        Jj = torch.matmul(Jp, Ja)
        Ji = -Gij[:, :, None, None, None].adjT(Jj)

        Jz = Gij[:, :, None, None] * Jz
        Jz = torch.matmul(Jp, Jz.unsqueeze(-1))

        return x1, valid, (Ji, Jj, Jz)

    return x1, valid


def induced_flow(poses, disps, intrinsics, ii, jj):
    """optical flow induced by camera motion"""

    ht, wd = disps.shape[2:]
    y, x = torch.meshgrid(
        torch.arange(ht, device=disps.device, dtype=torch.float),
        torch.arange(wd, device=disps.device, dtype=torch.float),
        indexing="ij",
    )
    
    coords0 = torch.stack([x, y], dim=-1)
    coords1, valid = projective_transform(poses, disps, intrinsics, ii, jj, False)

    return coords1[..., :2] - coords0, valid

def all_pairs_distance_matrix(poses, beta=2.5):
    """ compute distance matrix between all pairs of poses """
    poses = np.array(poses, dtype=np.float32)
    poses[:,:3] *= beta # scale to balence rot + trans
    poses = SE3(torch.from_numpy(poses))

    r = (poses[:,None].inv() * poses[None,:]).log()
    return r.norm(dim=-1).cpu().numpy()

def pose_matrix_to_quaternion(pose):
    """ convert 4x4 pose matrix to (t, q) """
    q = Rotation.from_matrix(pose[..., :3, :3]).as_quat()
    return np.concatenate([pose[..., :3, 3], q], axis=-1)

def compute_distance_matrix_flow(poses, disps, intrinsics):
    """ compute flow magnitude between all pairs of frames """
    if not isinstance(poses, SE3):
        poses = torch.from_numpy(poses).float().cuda()[None]
        poses = SE3(poses).inv()

        disps = torch.from_numpy(disps).float().cuda()[None]
        intrinsics = torch.from_numpy(intrinsics).float().cuda()[None]

    N = poses.shape[1]
    
    ii, jj = torch.meshgrid(torch.arange(N), torch.arange(N))
    ii = ii.reshape(-1).cuda()
    jj = jj.reshape(-1).cuda()

    MAX_FLOW = 100.0
    matrix = np.zeros((N, N), dtype=np.float32)

    s = 2048
    for i in range(0, ii.shape[0], s):
        flow1, val1 = induced_flow(poses, disps, intrinsics, ii[i:i+s], jj[i:i+s])
        flow2, val2 = induced_flow(poses, disps, intrinsics, jj[i:i+s], ii[i:i+s])
        
        flow = torch.stack([flow1, flow2], dim=2)
        val = torch.stack([val1, val2], dim=2)
        
        mag = flow.norm(dim=-1).clamp(max=MAX_FLOW)
        mag = mag.view(mag.shape[1], -1)
        val = val.view(val.shape[1], -1)

        mag = (mag * val).mean(-1) / val.mean(-1)
        mag[val.mean(-1) < 0.7] = np.inf

        i1 = ii[i:i+s].cpu().numpy()
        j1 = jj[i:i+s].cpu().numpy()
        matrix[i1, j1] = mag.cpu().numpy()

    return matrix


def compute_distance_matrix_flow2(poses, disps, intrinsics, beta=0.4):
    """ compute flow magnitude between all pairs of frames """
    # if not isinstance(poses, SE3):
    #     poses = torch.from_numpy(poses).float().cuda()[None]
    #     poses = SE3(poses).inv()

    #     disps = torch.from_numpy(disps).float().cuda()[None]
    #     intrinsics = torch.from_numpy(intrinsics).float().cuda()[None]

    N = poses.shape[1]
    
    ii, jj = torch.meshgrid(torch.arange(N), torch.arange(N))
    ii = ii.reshape(-1)
    jj = jj.reshape(-1)

    MAX_FLOW = 128.0
    matrix = np.zeros((N, N), dtype=np.float32)

    s = 2048
    for i in range(0, ii.shape[0], s):
        flow1a, val1a = induced_flow(poses, disps, intrinsics, ii[i:i+s], jj[i:i+s], tonly=True)
        flow1b, val1b = induced_flow(poses, disps, intrinsics, ii[i:i+s], jj[i:i+s])
        flow2a, val2a = induced_flow(poses, disps, intrinsics, jj[i:i+s], ii[i:i+s], tonly=True)
        flow2b, val2b = induced_flow(poses, disps, intrinsics, ii[i:i+s], jj[i:i+s])

        flow1 = flow1a + beta * flow1b
        val1 = val1a * val2b

        flow2 = flow2a + beta * flow2b
        val2 = val2a * val2b
        
        flow = torch.stack([flow1, flow2], dim=2)
        val = torch.stack([val1, val2], dim=2)
        
        mag = flow.norm(dim=-1).clamp(max=MAX_FLOW)
        mag = mag.view(mag.shape[1], -1)
        val = val.view(val.shape[1], -1)

        mag = (mag * val).mean(-1) / val.mean(-1)
        mag[val.mean(-1) < 0.8] = np.inf

        i1 = ii[i:i+s].cpu().numpy()
        j1 = jj[i:i+s].cpu().numpy()
        matrix[i1, j1] = mag.cpu().numpy()

    return matrix

def coords_grid(ht, wd, **kwargs):
    y, x = torch.meshgrid(
        torch.arange(ht, dtype=torch.float, **kwargs),
        torch.arange(wd, dtype=torch.float, **kwargs),
        indexing="ij",
    )

    return torch.stack([x, y], dim=-1)


def iproj(disps, intrinsics, jacobian=False):
    """pinhole camera inverse projection"""
    ht, wd = disps.shape[2:]
    fx, fy, cx, cy = extract_intrinsics(intrinsics)

    y, x = torch.meshgrid(
        torch.arange(ht, device=disps.device, dtype=torch.float),
        torch.arange(wd, device=disps.device, dtype=torch.float),
        indexing="ij",
    )

    i = torch.ones_like(disps)
    X = (x - cx) / fx
    Y = (y - cy) / fy
    pts = torch.stack([X, Y, i, disps], dim=-1)

    if jacobian:
        J = torch.zeros_like(pts)
        J[..., -1] = 1.0
        return pts, J

    return pts, None


def proj(Xs, intrinsics, jacobian=False, return_depth=False):
    """pinhole camera projection"""
    fx, fy, cx, cy = extract_intrinsics(intrinsics)
    X, Y, Z, D = Xs.unbind(dim=-1)

    Z = torch.where(Z < 0.5 * MIN_DEPTH, torch.ones_like(Z), Z)
    d = 1.0 / Z

    x = fx * (X * d) + cx
    y = fy * (Y * d) + cy
    if return_depth:
        coords = torch.stack([x, y, D * d], dim=-1)
    else:
        coords = torch.stack([x, y], dim=-1)

    if jacobian:
        B, N, H, W = d.shape
        o = torch.zeros_like(d)
        proj_jac = torch.stack(
            [
                fx * d,
                o,
                -fx * X * d * d,
                o,
                o,
                fy * d,
                -fy * Y * d * d,
                o,
                # o,     o,    -D*d*d,  d,
            ],
            dim=-1,
        ).view(B, N, H, W, 2, 4)

        return coords, proj_jac

    return coords, None


def actp(Gij, X0, jacobian=False):
    """action on point cloud"""
    X1 = Gij[:, :, None, None] * X0

    if jacobian:
        X, Y, Z, d = X1.unbind(dim=-1)
        o = torch.zeros_like(d)
        B, N, H, W = d.shape

        if isinstance(Gij, SE3):
            Ja = torch.stack(
                [
                    d,
                    o,
                    o,
                    o,
                    Z,
                    -Y,
                    o,
                    d,
                    o,
                    -Z,
                    o,
                    X,
                    o,
                    o,
                    d,
                    Y,
                    -X,
                    o,
                    o,
                    o,
                    o,
                    o,
                    o,
                    o,
                ],
                dim=-1,
            ).view(B, N, H, W, 4, 6)

        elif isinstance(Gij, Sim3):
            Ja = torch.stack(
                [
                    d,
                    o,
                    o,
                    o,
                    Z,
                    -Y,
                    X,
                    o,
                    d,
                    o,
                    -Z,
                    o,
                    X,
                    Y,
                    o,
                    o,
                    d,
                    Y,
                    -X,
                    o,
                    Z,
                    o,
                    o,
                    o,
                    o,
                    o,
                    o,
                    o,
                ],
                dim=-1,
            ).view(B, N, H, W, 4, 7)

        return X1, Ja

    return X1, None

def _sqrt_positive_part(x: torch.Tensor) -> torch.Tensor:
    """
    Returns torch.sqrt(torch.max(0, x))
    but with a zero subgradient where x is 0.
    """
    ret = torch.zeros_like(x)
    positive_mask = x > 0
    ret[positive_mask] = torch.sqrt(x[positive_mask])
    return ret

def matrix_to_quaternion(matrix: torch.Tensor) -> torch.Tensor:
    """
    Convert rotations given as rotation matrices to quaternions.

    Args:
        matrix: Rotation matrices as tensor of shape (..., 3, 3).

    Returns:
        quaternions with real part first, as tensor of shape (..., 4).
    """
    if matrix.shape[-1] != 3 or matrix.shape[-2] != 3:
        raise ValueError(f"Invalid rotation matrix shape {matrix.shape}.")

    batch_dim = matrix.shape[:-2]
    m00, m01, m02, m10, m11, m12, m20, m21, m22 = torch.unbind(
        matrix.reshape(batch_dim + (9,)), dim=-1
    )

    q_abs = _sqrt_positive_part(
        torch.stack(
            [
                1.0 + m00 + m11 + m22,
                1.0 + m00 - m11 - m22,
                1.0 - m00 + m11 - m22,
                1.0 - m00 - m11 + m22,
            ],
            dim=-1,
        )
    )

    quat_by_rijk = torch.stack(
        [
            torch.stack([q_abs[..., 0] ** 2, m21 - m12, m02 - m20, m10 - m01], dim=-1),
            torch.stack([m21 - m12, q_abs[..., 1] ** 2, m10 + m01, m02 + m20], dim=-1),
            torch.stack([m02 - m20, m10 + m01, q_abs[..., 2] ** 2, m12 + m21], dim=-1),
            torch.stack([m10 - m01, m20 + m02, m21 + m12, q_abs[..., 3] ** 2], dim=-1),
        ],
        dim=-2,
    )

    flr = torch.tensor(0.1).to(dtype=q_abs.dtype, device=q_abs.device)
    quat_candidates = quat_by_rijk / (2.0 * q_abs[..., None].max(flr))

    out = quat_candidates[
        F.one_hot(q_abs.argmax(dim=-1), num_classes=4) > 0.5, :
    ].reshape(batch_dim + (4,))
    return standardize_quaternion(out)


def standardize_quaternion(quaternions: torch.Tensor) -> torch.Tensor:
    """
    Convert a unit quaternion to a standard form: one in which the real
    part is non negative.

    Args:
        quaternions: Quaternions with real part first,
            as tensor of shape (..., 4).

    Returns:
        Standardized quaternions as tensor of shape (..., 4).
    """
    quaternions = F.normalize(quaternions, p=2, dim=-1)
    return torch.where(quaternions[..., 0:1] < 0, -quaternions, quaternions)

def umeyama(X, Y):
    """
    Estimates the Sim(3) transformation between `X` and `Y` point sets.

    Estimates c, R and t such as c * R @ X + t ~ Y.

    Parameters
    ----------
    X : numpy.array
        (m, n) shaped numpy array. m is the dimension of the points,
        n is the number of points in the point set.
    Y : numpy.array
        (m, n) shaped numpy array. Indexes should be consistent with `X`.
        That is, Y[:, i] must be the point corresponding to X[:, i].

    Returns
    -------
    c : float
        Scale factor.
    R : numpy.array
        (3, 3) shaped rotation matrix.
    t : numpy.array
        (3, 1) shaped translation vector.
    """
    mu_x = X.mean(axis=1).reshape(-1, 1)
    mu_y = Y.mean(axis=1).reshape(-1, 1)
    var_x = np.square(X - mu_x).sum(axis=0).mean()
    cov_xy = ((Y - mu_y) @ (X - mu_x).T) / X.shape[1]
    U, D, VH = np.linalg.svd(cov_xy)
    S = np.eye(X.shape[0])
    if np.linalg.det(U) * np.linalg.det(VH) < 0:
        S[-1, -1] = -1
    c = np.trace(np.diag(D) @ S) / var_x
    R = U @ S @ VH
    t = mu_y - c * R @ mu_x
    return c, R, t