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import warnings | |
import numpy as np | |
import cv2 | |
import math | |
import torch | |
from torchvision import transforms | |
from torchvision.transforms.functional import InterpolationMode | |
import torch.nn.functional as F | |
from PIL import Image | |
import kornia | |
def recover_pose(E, kpts0, kpts1, K0, K1, mask): | |
best_num_inliers = 0 | |
K0inv = np.linalg.inv(K0[:2, :2]) | |
K1inv = np.linalg.inv(K1[:2, :2]) | |
kpts0_n = (K0inv @ (kpts0 - K0[None, :2, 2]).T).T | |
kpts1_n = (K1inv @ (kpts1 - K1[None, :2, 2]).T).T | |
for _E in np.split(E, len(E) / 3): | |
n, R, t, _ = cv2.recoverPose(_E, kpts0_n, kpts1_n, np.eye(3), 1e9, mask=mask) | |
if n > best_num_inliers: | |
best_num_inliers = n | |
ret = (R, t, mask.ravel() > 0) | |
return ret | |
# Code taken from https://github.com/PruneTruong/DenseMatching/blob/40c29a6b5c35e86b9509e65ab0cd12553d998e5f/validation/utils_pose_estimation.py | |
# --- GEOMETRY --- | |
def estimate_pose(kpts0, kpts1, K0, K1, norm_thresh, conf=0.99999): | |
if len(kpts0) < 5: | |
return None | |
K0inv = np.linalg.inv(K0[:2, :2]) | |
K1inv = np.linalg.inv(K1[:2, :2]) | |
kpts0 = (K0inv @ (kpts0 - K0[None, :2, 2]).T).T | |
kpts1 = (K1inv @ (kpts1 - K1[None, :2, 2]).T).T | |
E, mask = cv2.findEssentialMat( | |
kpts0, kpts1, np.eye(3), threshold=norm_thresh, prob=conf | |
) | |
ret = None | |
if E is not None: | |
best_num_inliers = 0 | |
for _E in np.split(E, len(E) / 3): | |
n, R, t, _ = cv2.recoverPose(_E, kpts0, kpts1, np.eye(3), 1e9, mask=mask) | |
if n > best_num_inliers: | |
best_num_inliers = n | |
ret = (R, t, mask.ravel() > 0) | |
return ret | |
def estimate_pose_uncalibrated(kpts0, kpts1, K0, K1, norm_thresh, conf=0.99999): | |
if len(kpts0) < 5: | |
return None | |
method = cv2.USAC_ACCURATE | |
F, mask = cv2.findFundamentalMat( | |
kpts0, | |
kpts1, | |
ransacReprojThreshold=norm_thresh, | |
confidence=conf, | |
method=method, | |
maxIters=10000, | |
) | |
E = K1.T @ F @ K0 | |
ret = None | |
if E is not None: | |
best_num_inliers = 0 | |
K0inv = np.linalg.inv(K0[:2, :2]) | |
K1inv = np.linalg.inv(K1[:2, :2]) | |
kpts0_n = (K0inv @ (kpts0 - K0[None, :2, 2]).T).T | |
kpts1_n = (K1inv @ (kpts1 - K1[None, :2, 2]).T).T | |
for _E in np.split(E, len(E) / 3): | |
n, R, t, _ = cv2.recoverPose( | |
_E, kpts0_n, kpts1_n, np.eye(3), 1e9, mask=mask | |
) | |
if n > best_num_inliers: | |
best_num_inliers = n | |
ret = (R, t, mask.ravel() > 0) | |
return ret | |
def unnormalize_coords(x_n, h, w): | |
x = torch.stack( | |
(w * (x_n[..., 0] + 1) / 2, h * (x_n[..., 1] + 1) / 2), dim=-1 | |
) # [-1+1/h, 1-1/h] -> [0.5, h-0.5] | |
return x | |
def rotate_intrinsic(K, n): | |
base_rot = np.array([[0, 1, 0], [-1, 0, 0], [0, 0, 1]]) | |
rot = np.linalg.matrix_power(base_rot, n) | |
return rot @ K | |
def rotate_pose_inplane(i_T_w, rot): | |
rotation_matrices = [ | |
np.array( | |
[ | |
[np.cos(r), -np.sin(r), 0.0, 0.0], | |
[np.sin(r), np.cos(r), 0.0, 0.0], | |
[0.0, 0.0, 1.0, 0.0], | |
[0.0, 0.0, 0.0, 1.0], | |
], | |
dtype=np.float32, | |
) | |
for r in [np.deg2rad(d) for d in (0, 270, 180, 90)] | |
] | |
return np.dot(rotation_matrices[rot], i_T_w) | |
def scale_intrinsics(K, scales): | |
scales = np.diag([1.0 / scales[0], 1.0 / scales[1], 1.0]) | |
return np.dot(scales, K) | |
def to_homogeneous(points): | |
return np.concatenate([points, np.ones_like(points[:, :1])], axis=-1) | |
def angle_error_mat(R1, R2): | |
cos = (np.trace(np.dot(R1.T, R2)) - 1) / 2 | |
cos = np.clip(cos, -1.0, 1.0) # numercial errors can make it out of bounds | |
return np.rad2deg(np.abs(np.arccos(cos))) | |
def angle_error_vec(v1, v2): | |
n = np.linalg.norm(v1) * np.linalg.norm(v2) | |
return np.rad2deg(np.arccos(np.clip(np.dot(v1, v2) / n, -1.0, 1.0))) | |
def compute_pose_error(T_0to1, R, t): | |
R_gt = T_0to1[:3, :3] | |
t_gt = T_0to1[:3, 3] | |
error_t = angle_error_vec(t.squeeze(), t_gt) | |
error_t = np.minimum(error_t, 180 - error_t) # ambiguity of E estimation | |
error_R = angle_error_mat(R, R_gt) | |
return error_t, error_R | |
def pose_auc(errors, thresholds): | |
sort_idx = np.argsort(errors) | |
errors = np.array(errors.copy())[sort_idx] | |
recall = (np.arange(len(errors)) + 1) / len(errors) | |
errors = np.r_[0.0, errors] | |
recall = np.r_[0.0, recall] | |
aucs = [] | |
for t in thresholds: | |
last_index = np.searchsorted(errors, t) | |
r = np.r_[recall[:last_index], recall[last_index - 1]] | |
e = np.r_[errors[:last_index], t] | |
aucs.append(np.trapz(r, x=e) / t) | |
return aucs | |
# From Patch2Pix https://github.com/GrumpyZhou/patch2pix | |
def get_depth_tuple_transform_ops_nearest_exact(resize=None): | |
ops = [] | |
if resize: | |
ops.append(TupleResizeNearestExact(resize)) | |
return TupleCompose(ops) | |
def get_depth_tuple_transform_ops(resize=None, normalize=True, unscale=False): | |
ops = [] | |
if resize: | |
ops.append(TupleResize(resize, mode=InterpolationMode.BILINEAR)) | |
return TupleCompose(ops) | |
def get_tuple_transform_ops( | |
resize=None, normalize=True, unscale=False, clahe=False, colorjiggle_params=None | |
): | |
ops = [] | |
if resize: | |
ops.append(TupleResize(resize)) | |
ops.append(TupleToTensorScaled()) | |
if normalize: | |
ops.append( | |
TupleNormalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]) | |
) # Imagenet mean/std | |
return TupleCompose(ops) | |
class ToTensorScaled(object): | |
"""Convert a RGB PIL Image to a CHW ordered Tensor, scale the range to [0, 1]""" | |
def __call__(self, im): | |
if not isinstance(im, torch.Tensor): | |
im = np.array(im, dtype=np.float32).transpose((2, 0, 1)) | |
im /= 255.0 | |
return torch.from_numpy(im) | |
else: | |
return im | |
def __repr__(self): | |
return "ToTensorScaled(./255)" | |
class TupleToTensorScaled(object): | |
def __init__(self): | |
self.to_tensor = ToTensorScaled() | |
def __call__(self, im_tuple): | |
return [self.to_tensor(im) for im in im_tuple] | |
def __repr__(self): | |
return "TupleToTensorScaled(./255)" | |
class ToTensorUnscaled(object): | |
"""Convert a RGB PIL Image to a CHW ordered Tensor""" | |
def __call__(self, im): | |
return torch.from_numpy(np.array(im, dtype=np.float32).transpose((2, 0, 1))) | |
def __repr__(self): | |
return "ToTensorUnscaled()" | |
class TupleToTensorUnscaled(object): | |
"""Convert a RGB PIL Image to a CHW ordered Tensor""" | |
def __init__(self): | |
self.to_tensor = ToTensorUnscaled() | |
def __call__(self, im_tuple): | |
return [self.to_tensor(im) for im in im_tuple] | |
def __repr__(self): | |
return "TupleToTensorUnscaled()" | |
class TupleResizeNearestExact: | |
def __init__(self, size): | |
self.size = size | |
def __call__(self, im_tuple): | |
return [ | |
F.interpolate(im, size=self.size, mode="nearest-exact") for im in im_tuple | |
] | |
def __repr__(self): | |
return "TupleResizeNearestExact(size={})".format(self.size) | |
class TupleResize(object): | |
def __init__(self, size, mode=InterpolationMode.BICUBIC): | |
self.size = size | |
self.resize = transforms.Resize(size, mode) | |
def __call__(self, im_tuple): | |
return [self.resize(im) for im in im_tuple] | |
def __repr__(self): | |
return "TupleResize(size={})".format(self.size) | |
class Normalize: | |
def __call__(self, im): | |
mean = im.mean(dim=(1, 2), keepdims=True) | |
std = im.std(dim=(1, 2), keepdims=True) | |
return (im - mean) / std | |
class TupleNormalize(object): | |
def __init__(self, mean, std): | |
self.mean = mean | |
self.std = std | |
self.normalize = transforms.Normalize(mean=mean, std=std) | |
def __call__(self, im_tuple): | |
c, h, w = im_tuple[0].shape | |
if c > 3: | |
warnings.warn(f"Number of channels c={c} > 3, assuming first 3 are rgb") | |
return [self.normalize(im[:3]) for im in im_tuple] | |
def __repr__(self): | |
return "TupleNormalize(mean={}, std={})".format(self.mean, self.std) | |
class TupleCompose(object): | |
def __init__(self, transforms): | |
self.transforms = transforms | |
def __call__(self, im_tuple): | |
for t in self.transforms: | |
im_tuple = t(im_tuple) | |
return im_tuple | |
def __repr__(self): | |
format_string = self.__class__.__name__ + "(" | |
for t in self.transforms: | |
format_string += "\n" | |
format_string += " {0}".format(t) | |
format_string += "\n)" | |
return format_string | |
def cls_to_flow(cls, deterministic_sampling=True): | |
B, C, H, W = cls.shape | |
device = cls.device | |
res = round(math.sqrt(C)) | |
G = torch.meshgrid( | |
*[ | |
torch.linspace(-1 + 1 / res, 1 - 1 / res, steps=res, device=device) | |
for _ in range(2) | |
] | |
) | |
G = torch.stack([G[1], G[0]], dim=-1).reshape(C, 2) | |
if deterministic_sampling: | |
sampled_cls = cls.max(dim=1).indices | |
else: | |
sampled_cls = torch.multinomial( | |
cls.permute(0, 2, 3, 1).reshape(B * H * W, C).softmax(dim=-1), 1 | |
).reshape(B, H, W) | |
flow = G[sampled_cls] | |
return flow | |
def cls_to_flow_refine(cls): | |
B, C, H, W = cls.shape | |
device = cls.device | |
res = round(math.sqrt(C)) | |
G = torch.meshgrid( | |
*[ | |
torch.linspace(-1 + 1 / res, 1 - 1 / res, steps=res, device=device) | |
for _ in range(2) | |
] | |
) | |
G = torch.stack([G[1], G[0]], dim=-1).reshape(C, 2) | |
cls = cls.softmax(dim=1) | |
mode = cls.max(dim=1).indices | |
index = ( | |
torch.stack((mode - 1, mode, mode + 1, mode - res, mode + res), dim=1) | |
.clamp(0, C - 1) | |
.long() | |
) | |
neighbours = torch.gather(cls, dim=1, index=index)[..., None] | |
flow = ( | |
neighbours[:, 0] * G[index[:, 0]] | |
+ neighbours[:, 1] * G[index[:, 1]] | |
+ neighbours[:, 2] * G[index[:, 2]] | |
+ neighbours[:, 3] * G[index[:, 3]] | |
+ neighbours[:, 4] * G[index[:, 4]] | |
) | |
tot_prob = neighbours.sum(dim=1) | |
flow = flow / tot_prob | |
return flow | |
def get_gt_warp( | |
depth1, | |
depth2, | |
T_1to2, | |
K1, | |
K2, | |
depth_interpolation_mode="bilinear", | |
relative_depth_error_threshold=0.05, | |
H=None, | |
W=None, | |
): | |
if H is None: | |
B, H, W = depth1.shape | |
else: | |
B = depth1.shape[0] | |
with torch.no_grad(): | |
x1_n = torch.meshgrid( | |
*[ | |
torch.linspace(-1 + 1 / n, 1 - 1 / n, n, device=depth1.device) | |
for n in (B, H, W) | |
] | |
) | |
x1_n = torch.stack((x1_n[2], x1_n[1]), dim=-1).reshape(B, H * W, 2) | |
mask, x2 = warp_kpts( | |
x1_n.double(), | |
depth1.double(), | |
depth2.double(), | |
T_1to2.double(), | |
K1.double(), | |
K2.double(), | |
depth_interpolation_mode=depth_interpolation_mode, | |
relative_depth_error_threshold=relative_depth_error_threshold, | |
) | |
prob = mask.float().reshape(B, H, W) | |
x2 = x2.reshape(B, H, W, 2) | |
return x2, prob | |
def warp_kpts( | |
kpts0, | |
depth0, | |
depth1, | |
T_0to1, | |
K0, | |
K1, | |
smooth_mask=False, | |
return_relative_depth_error=False, | |
depth_interpolation_mode="bilinear", | |
relative_depth_error_threshold=0.05, | |
): | |
"""Warp kpts0 from I0 to I1 with depth, K and Rt | |
Also check covisibility and depth consistency. | |
Depth is consistent if relative error < 0.2 (hard-coded). | |
# https://github.com/zju3dv/LoFTR/blob/94e98b695be18acb43d5d3250f52226a8e36f839/src/loftr/utils/geometry.py adapted from here | |
Args: | |
kpts0 (torch.Tensor): [N, L, 2] - <x, y>, should be normalized in (-1,1) | |
depth0 (torch.Tensor): [N, H, W], | |
depth1 (torch.Tensor): [N, H, W], | |
T_0to1 (torch.Tensor): [N, 3, 4], | |
K0 (torch.Tensor): [N, 3, 3], | |
K1 (torch.Tensor): [N, 3, 3], | |
Returns: | |
calculable_mask (torch.Tensor): [N, L] | |
warped_keypoints0 (torch.Tensor): [N, L, 2] <x0_hat, y1_hat> | |
""" | |
( | |
n, | |
h, | |
w, | |
) = depth0.shape | |
if depth_interpolation_mode == "combined": | |
# Inspired by approach in inloc, try to fill holes from bilinear interpolation by nearest neighbour interpolation | |
if smooth_mask: | |
raise NotImplementedError("Combined bilinear and NN warp not implemented") | |
valid_bilinear, warp_bilinear = warp_kpts( | |
kpts0, | |
depth0, | |
depth1, | |
T_0to1, | |
K0, | |
K1, | |
smooth_mask=smooth_mask, | |
return_relative_depth_error=return_relative_depth_error, | |
depth_interpolation_mode="bilinear", | |
relative_depth_error_threshold=relative_depth_error_threshold, | |
) | |
valid_nearest, warp_nearest = warp_kpts( | |
kpts0, | |
depth0, | |
depth1, | |
T_0to1, | |
K0, | |
K1, | |
smooth_mask=smooth_mask, | |
return_relative_depth_error=return_relative_depth_error, | |
depth_interpolation_mode="nearest-exact", | |
relative_depth_error_threshold=relative_depth_error_threshold, | |
) | |
nearest_valid_bilinear_invalid = (~valid_bilinear).logical_and(valid_nearest) | |
warp = warp_bilinear.clone() | |
warp[nearest_valid_bilinear_invalid] = warp_nearest[ | |
nearest_valid_bilinear_invalid | |
] | |
valid = valid_bilinear | valid_nearest | |
return valid, warp | |
kpts0_depth = F.grid_sample( | |
depth0[:, None], | |
kpts0[:, :, None], | |
mode=depth_interpolation_mode, | |
align_corners=False, | |
)[:, 0, :, 0] | |
kpts0 = torch.stack( | |
(w * (kpts0[..., 0] + 1) / 2, h * (kpts0[..., 1] + 1) / 2), dim=-1 | |
) # [-1+1/h, 1-1/h] -> [0.5, h-0.5] | |
# Sample depth, get calculable_mask on depth != 0 | |
nonzero_mask = kpts0_depth != 0 | |
# Unproject | |
kpts0_h = ( | |
torch.cat([kpts0, torch.ones_like(kpts0[:, :, [0]])], dim=-1) | |
* kpts0_depth[..., None] | |
) # (N, L, 3) | |
kpts0_n = K0.inverse() @ kpts0_h.transpose(2, 1) # (N, 3, L) | |
kpts0_cam = kpts0_n | |
# Rigid Transform | |
w_kpts0_cam = T_0to1[:, :3, :3] @ kpts0_cam + T_0to1[:, :3, [3]] # (N, 3, L) | |
w_kpts0_depth_computed = w_kpts0_cam[:, 2, :] | |
# Project | |
w_kpts0_h = (K1 @ w_kpts0_cam).transpose(2, 1) # (N, L, 3) | |
w_kpts0 = w_kpts0_h[:, :, :2] / ( | |
w_kpts0_h[:, :, [2]] + 1e-4 | |
) # (N, L, 2), +1e-4 to avoid zero depth | |
# Covisible Check | |
h, w = depth1.shape[1:3] | |
covisible_mask = ( | |
(w_kpts0[:, :, 0] > 0) | |
* (w_kpts0[:, :, 0] < w - 1) | |
* (w_kpts0[:, :, 1] > 0) | |
* (w_kpts0[:, :, 1] < h - 1) | |
) | |
w_kpts0 = torch.stack( | |
(2 * w_kpts0[..., 0] / w - 1, 2 * w_kpts0[..., 1] / h - 1), dim=-1 | |
) # from [0.5,h-0.5] -> [-1+1/h, 1-1/h] | |
# w_kpts0[~covisible_mask, :] = -5 # xd | |
w_kpts0_depth = F.grid_sample( | |
depth1[:, None], | |
w_kpts0[:, :, None], | |
mode=depth_interpolation_mode, | |
align_corners=False, | |
)[:, 0, :, 0] | |
relative_depth_error = ( | |
(w_kpts0_depth - w_kpts0_depth_computed) / w_kpts0_depth | |
).abs() | |
if not smooth_mask: | |
consistent_mask = relative_depth_error < relative_depth_error_threshold | |
else: | |
consistent_mask = (-relative_depth_error / smooth_mask).exp() | |
valid_mask = nonzero_mask * covisible_mask * consistent_mask | |
if return_relative_depth_error: | |
return relative_depth_error, w_kpts0 | |
else: | |
return valid_mask, w_kpts0 | |
imagenet_mean = torch.tensor([0.485, 0.456, 0.406]) | |
imagenet_std = torch.tensor([0.229, 0.224, 0.225]) | |
def numpy_to_pil(x: np.ndarray): | |
""" | |
Args: | |
x: Assumed to be of shape (h,w,c) | |
""" | |
if isinstance(x, torch.Tensor): | |
x = x.detach().cpu().numpy() | |
if x.max() <= 1.01: | |
x *= 255 | |
x = x.astype(np.uint8) | |
return Image.fromarray(x) | |
def tensor_to_pil(x, unnormalize=False): | |
if unnormalize: | |
x = x * (imagenet_std[:, None, None].to(x.device)) + ( | |
imagenet_mean[:, None, None].to(x.device) | |
) | |
x = x.detach().permute(1, 2, 0).cpu().numpy() | |
x = np.clip(x, 0.0, 1.0) | |
return numpy_to_pil(x) | |
def to_cuda(batch): | |
for key, value in batch.items(): | |
if isinstance(value, torch.Tensor): | |
batch[key] = value.cuda() | |
return batch | |
def to_cpu(batch): | |
for key, value in batch.items(): | |
if isinstance(value, torch.Tensor): | |
batch[key] = value.cpu() | |
return batch | |
def get_pose(calib): | |
w, h = np.array(calib["imsize"])[0] | |
return np.array(calib["K"]), np.array(calib["R"]), np.array(calib["T"]).T, h, w | |
def compute_relative_pose(R1, t1, R2, t2): | |
rots = R2 @ (R1.T) | |
trans = -rots @ t1 + t2 | |
return rots, trans | |
def reset_opt(opt): | |
for group in opt.param_groups: | |
for p in group["params"]: | |
if p.requires_grad: | |
state = opt.state[p] | |
# State initialization | |
# Exponential moving average of gradient values | |
state["exp_avg"] = torch.zeros_like(p) | |
# Exponential moving average of squared gradient values | |
state["exp_avg_sq"] = torch.zeros_like(p) | |
# Exponential moving average of gradient difference | |
state["exp_avg_diff"] = torch.zeros_like(p) | |
def flow_to_pixel_coords(flow, h1, w1): | |
flow = torch.stack( | |
( | |
w1 * (flow[..., 0] + 1) / 2, | |
h1 * (flow[..., 1] + 1) / 2, | |
), | |
axis=-1, | |
) | |
return flow | |
def flow_to_normalized_coords(flow, h1, w1): | |
flow = torch.stack( | |
( | |
2 * (flow[..., 0]) / w1 - 1, | |
2 * (flow[..., 1]) / h1 - 1, | |
), | |
axis=-1, | |
) | |
return flow | |
def warp_to_pixel_coords(warp, h1, w1, h2, w2): | |
warp1 = warp[..., :2] | |
warp1 = torch.stack( | |
( | |
w1 * (warp1[..., 0] + 1) / 2, | |
h1 * (warp1[..., 1] + 1) / 2, | |
), | |
axis=-1, | |
) | |
warp2 = warp[..., 2:] | |
warp2 = torch.stack( | |
( | |
w2 * (warp2[..., 0] + 1) / 2, | |
h2 * (warp2[..., 1] + 1) / 2, | |
), | |
axis=-1, | |
) | |
return torch.cat((warp1, warp2), dim=-1) | |
def signed_point_line_distance(point, line, eps: float = 1e-9): | |
r"""Return the distance from points to lines. | |
Args: | |
point: (possibly homogeneous) points :math:`(*, N, 2 or 3)`. | |
line: lines coefficients :math:`(a, b, c)` with shape :math:`(*, N, 3)`, where :math:`ax + by + c = 0`. | |
eps: Small constant for safe sqrt. | |
Returns: | |
the computed distance with shape :math:`(*, N)`. | |
""" | |
if not point.shape[-1] in (2, 3): | |
raise ValueError(f"pts must be a (*, 2 or 3) tensor. Got {point.shape}") | |
if not line.shape[-1] == 3: | |
raise ValueError(f"lines must be a (*, 3) tensor. Got {line.shape}") | |
numerator = ( | |
line[..., 0] * point[..., 0] + line[..., 1] * point[..., 1] + line[..., 2] | |
) | |
denominator = line[..., :2].norm(dim=-1) | |
return numerator / (denominator + eps) | |
def signed_left_to_right_epipolar_distance(pts1, pts2, Fm): | |
r"""Return one-sided epipolar distance for correspondences given the fundamental matrix. | |
This method measures the distance from points in the right images to the epilines | |
of the corresponding points in the left images as they reflect in the right images. | |
Args: | |
pts1: correspondences from the left images with shape | |
:math:`(*, N, 2 or 3)`. If they are not homogeneous, converted automatically. | |
pts2: correspondences from the right images with shape | |
:math:`(*, N, 2 or 3)`. If they are not homogeneous, converted automatically. | |
Fm: Fundamental matrices with shape :math:`(*, 3, 3)`. Called Fm to | |
avoid ambiguity with torch.nn.functional. | |
Returns: | |
the computed Symmetrical distance with shape :math:`(*, N)`. | |
""" | |
import kornia | |
if (len(Fm.shape) < 3) or not Fm.shape[-2:] == (3, 3): | |
raise ValueError(f"Fm must be a (*, 3, 3) tensor. Got {Fm.shape}") | |
if pts1.shape[-1] == 2: | |
pts1 = kornia.geometry.convert_points_to_homogeneous(pts1) | |
F_t = Fm.transpose(dim0=-2, dim1=-1) | |
line1_in_2 = pts1 @ F_t | |
return signed_point_line_distance(pts2, line1_in_2) | |
def get_grid(b, h, w, device): | |
grid = torch.meshgrid( | |
*[torch.linspace(-1 + 1 / n, 1 - 1 / n, n, device=device) for n in (b, h, w)] | |
) | |
grid = torch.stack((grid[2], grid[1]), dim=-1).reshape(b, h, w, 2) | |
return grid | |