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# Originating Authors: Paul-Edouard Sarlin | |
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Described in: | |
SuperPoint: Self-Supervised Interest Point Detection and Description, | |
Daniel DeTone, Tomasz Malisiewicz, Andrew Rabinovich, CVPRW 2018. | |
Original code: github.com/MagicLeapResearch/SuperPointPretrainedNetwork | |
Adapted by Philipp Lindenberger (Phil26AT) | |
""" | |
import os.path | |
import torch | |
from torch import nn | |
from gluefactory.models.base_model import BaseModel | |
from gluefactory.models.utils.misc import pad_and_stack | |
def simple_nms(scores, radius): | |
"""Perform non maximum suppression on the heatmap using max-pooling. | |
This method does not suppress contiguous points that have the same score. | |
Args: | |
scores: the score heatmap of size `(B, H, W)`. | |
radius: an integer scalar, the radius of the NMS window. | |
""" | |
def max_pool(x): | |
return torch.nn.functional.max_pool2d( | |
x, kernel_size=radius * 2 + 1, stride=1, padding=radius | |
) | |
zeros = torch.zeros_like(scores) | |
max_mask = scores == max_pool(scores) | |
for _ in range(2): | |
supp_mask = max_pool(max_mask.float()) > 0 | |
supp_scores = torch.where(supp_mask, zeros, scores) | |
new_max_mask = supp_scores == max_pool(supp_scores) | |
max_mask = max_mask | (new_max_mask & (~supp_mask)) | |
return torch.where(max_mask, scores, zeros) | |
def top_k_keypoints(keypoints, scores, k): | |
if k >= len(keypoints): | |
return keypoints, scores | |
scores, indices = torch.topk(scores, k, dim=0, sorted=True) | |
return keypoints[indices], scores | |
def sample_k_keypoints(keypoints, scores, k): | |
if k >= len(keypoints): | |
return keypoints, scores | |
indices = torch.multinomial(scores, k, replacement=False) | |
return keypoints[indices], scores[indices] | |
def soft_argmax_refinement(keypoints, scores, radius: int): | |
width = 2 * radius + 1 | |
sum_ = torch.nn.functional.avg_pool2d( | |
scores[:, None], width, 1, radius, divisor_override=1 | |
) | |
ar = torch.arange(-radius, radius + 1).to(scores) | |
kernel_x = ar[None].expand(width, -1)[None, None] | |
dx = torch.nn.functional.conv2d(scores[:, None], kernel_x, padding=radius) | |
dy = torch.nn.functional.conv2d( | |
scores[:, None], kernel_x.transpose(2, 3), padding=radius | |
) | |
dydx = torch.stack([dy[:, 0], dx[:, 0]], -1) / sum_[:, 0, :, :, None] | |
refined_keypoints = [] | |
for i, kpts in enumerate(keypoints): | |
delta = dydx[i][tuple(kpts.t())] | |
refined_keypoints.append(kpts.float() + delta) | |
return refined_keypoints | |
# Legacy (broken) sampling of the descriptors | |
def sample_descriptors(keypoints, descriptors, s): | |
b, c, h, w = descriptors.shape | |
keypoints = keypoints - s / 2 + 0.5 | |
keypoints /= torch.tensor( | |
[(w * s - s / 2 - 0.5), (h * s - s / 2 - 0.5)], | |
).to( | |
keypoints | |
)[None] | |
keypoints = keypoints * 2 - 1 # normalize to (-1, 1) | |
args = {"align_corners": True} if torch.__version__ >= "1.3" else {} | |
descriptors = torch.nn.functional.grid_sample( | |
descriptors, keypoints.view(b, 1, -1, 2), mode="bilinear", **args | |
) | |
descriptors = torch.nn.functional.normalize( | |
descriptors.reshape(b, c, -1), p=2, dim=1 | |
) | |
return descriptors | |
# The original keypoint sampling is incorrect. We patch it here but | |
# keep the original one above for legacy. | |
def sample_descriptors_fix_sampling(keypoints, descriptors, s: int = 8): | |
"""Interpolate descriptors at keypoint locations""" | |
b, c, h, w = descriptors.shape | |
keypoints = keypoints / (keypoints.new_tensor([w, h]) * s) | |
keypoints = keypoints * 2 - 1 # normalize to (-1, 1) | |
descriptors = torch.nn.functional.grid_sample( | |
descriptors, keypoints.view(b, 1, -1, 2), mode="bilinear", align_corners=False | |
) | |
descriptors = torch.nn.functional.normalize( | |
descriptors.reshape(b, c, -1), p=2, dim=1 | |
) | |
return descriptors | |
class SuperPoint(BaseModel): | |
default_conf = { | |
"has_detector": True, | |
"has_descriptor": True, | |
"descriptor_dim": 256, | |
# Inference | |
"sparse_outputs": True, | |
"dense_outputs": False, | |
"nms_radius": 4, | |
"refinement_radius": 0, | |
"detection_threshold": 0.005, | |
"max_num_keypoints": -1, | |
"max_num_keypoints_val": None, | |
"force_num_keypoints": False, | |
"randomize_keypoints_training": False, | |
"remove_borders": 4, | |
"legacy_sampling": True, # True to use the old broken sampling | |
} | |
required_data_keys = ["image"] | |
checkpoint_url = "https://github.com/magicleap/SuperGluePretrainedNetwork/raw/master/models/weights/superpoint_v1.pth" # noqa: E501 | |
def _init(self, conf): | |
self.relu = nn.ReLU(inplace=True) | |
self.pool = nn.MaxPool2d(kernel_size=2, stride=2) | |
c1, c2, c3, c4, c5 = 64, 64, 128, 128, 256 | |
self.conv1a = nn.Conv2d(1, c1, kernel_size=3, stride=1, padding=1) | |
self.conv1b = nn.Conv2d(c1, c1, kernel_size=3, stride=1, padding=1) | |
self.conv2a = nn.Conv2d(c1, c2, kernel_size=3, stride=1, padding=1) | |
self.conv2b = nn.Conv2d(c2, c2, kernel_size=3, stride=1, padding=1) | |
self.conv3a = nn.Conv2d(c2, c3, kernel_size=3, stride=1, padding=1) | |
self.conv3b = nn.Conv2d(c3, c3, kernel_size=3, stride=1, padding=1) | |
self.conv4a = nn.Conv2d(c3, c4, kernel_size=3, stride=1, padding=1) | |
self.conv4b = nn.Conv2d(c4, c4, kernel_size=3, stride=1, padding=1) | |
if conf.has_detector: | |
self.convPa = nn.Conv2d(c4, c5, kernel_size=3, stride=1, padding=1) | |
self.convPb = nn.Conv2d(c5, 65, kernel_size=1, stride=1, padding=0) | |
for param in self.convPa.parameters(): | |
param.requires_grad = False | |
for param in self.convPb.parameters(): | |
param.requires_grad = False | |
if conf.has_descriptor: | |
self.convDa = nn.Conv2d(c4, c5, kernel_size=3, stride=1, padding=1) | |
self.convDb = nn.Conv2d( | |
c5, conf.descriptor_dim, kernel_size=1, stride=1, padding=0 | |
) | |
self.load_state_dict(torch.load(os.path.join('weights', 'superpoint_v1.pth'))) | |
def _forward(self, data): | |
image = data["image"] | |
if image.shape[1] == 3: # RGB | |
scale = image.new_tensor([0.299, 0.587, 0.114]).view(1, 3, 1, 1) | |
image = (image * scale).sum(1, keepdim=True) | |
# Shared Encoder | |
x = self.relu(self.conv1a(image)) | |
x = self.relu(self.conv1b(x)) | |
x = self.pool(x) | |
x = self.relu(self.conv2a(x)) | |
x = self.relu(self.conv2b(x)) | |
x = self.pool(x) | |
x = self.relu(self.conv3a(x)) | |
x = self.relu(self.conv3b(x)) | |
x = self.pool(x) | |
x = self.relu(self.conv4a(x)) | |
x = self.relu(self.conv4b(x)) | |
pred = {} | |
if self.conf.has_detector: | |
# Compute the dense keypoint scores | |
cPa = self.relu(self.convPa(x)) | |
scores = self.convPb(cPa) | |
scores = torch.nn.functional.softmax(scores, 1)[:, :-1] | |
b, c, h, w = scores.shape | |
scores = scores.permute(0, 2, 3, 1).reshape(b, h, w, 8, 8) | |
scores = scores.permute(0, 1, 3, 2, 4).reshape(b, h * 8, w * 8) | |
pred["keypoint_scores"] = dense_scores = scores | |
if self.conf.has_descriptor: | |
# Compute the dense descriptors | |
cDa = self.relu(self.convDa(x)) | |
dense_desc = self.convDb(cDa) | |
dense_desc = torch.nn.functional.normalize(dense_desc, p=2, dim=1) | |
pred["descriptors"] = dense_desc | |
if self.conf.sparse_outputs: | |
assert self.conf.has_detector and self.conf.has_descriptor | |
scores = simple_nms(scores, self.conf.nms_radius) | |
# Discard keypoints near the image borders | |
if self.conf.remove_borders: | |
scores[:, : self.conf.remove_borders] = -1 | |
scores[:, :, : self.conf.remove_borders] = -1 | |
if "image_size" in data: | |
for i in range(scores.shape[0]): | |
w, h = data["image_size"][i] | |
scores[i, int(h.item()) - self.conf.remove_borders :] = -1 | |
scores[i, :, int(w.item()) - self.conf.remove_borders :] = -1 | |
else: | |
scores[:, -self.conf.remove_borders :] = -1 | |
scores[:, :, -self.conf.remove_borders :] = -1 | |
# Extract keypoints | |
best_kp = torch.where(scores > self.conf.detection_threshold) | |
scores = scores[best_kp] | |
# Separate into batches | |
keypoints = [ | |
torch.stack(best_kp[1:3], dim=-1)[best_kp[0] == i] for i in range(b) | |
] | |
scores = [scores[best_kp[0] == i] for i in range(b)] | |
# Keep the k keypoints with highest score | |
max_kps = self.conf.max_num_keypoints | |
# for val we allow different | |
if not self.training and self.conf.max_num_keypoints_val is not None: | |
max_kps = self.conf.max_num_keypoints_val | |
# Keep the k keypoints with highest score | |
if max_kps > 0: | |
if self.conf.randomize_keypoints_training and self.training: | |
# instead of selecting top-k, sample k by score weights | |
keypoints, scores = list( | |
zip( | |
*[ | |
sample_k_keypoints(k, s, max_kps) | |
for k, s in zip(keypoints, scores) | |
] | |
) | |
) | |
else: | |
keypoints, scores = list( | |
zip( | |
*[ | |
top_k_keypoints(k, s, max_kps) | |
for k, s in zip(keypoints, scores) | |
] | |
) | |
) | |
keypoints, scores = list(keypoints), list(scores) | |
if self.conf["refinement_radius"] > 0: | |
keypoints = soft_argmax_refinement( | |
keypoints, dense_scores, self.conf["refinement_radius"] | |
) | |
# Convert (h, w) to (x, y) | |
keypoints = [torch.flip(k, [1]).float() for k in keypoints] | |
if self.conf.force_num_keypoints: | |
keypoints = pad_and_stack( | |
keypoints, | |
max_kps, | |
-2, | |
mode="random_c", | |
bounds=( | |
0, | |
data.get("image_size", torch.tensor(image.shape[-2:])) | |
.min() | |
.item(), | |
), | |
) | |
scores = pad_and_stack(scores, max_kps, -1, mode="zeros") | |
else: | |
keypoints = torch.stack(keypoints, 0) | |
scores = torch.stack(scores, 0) | |
# Extract descriptors | |
if (len(keypoints) == 1) or self.conf.force_num_keypoints: | |
# Batch sampling of the descriptors | |
if self.conf.legacy_sampling: | |
desc = sample_descriptors(keypoints, dense_desc, 8) | |
else: | |
desc = sample_descriptors_fix_sampling(keypoints, dense_desc, 8) | |
else: | |
if self.conf.legacy_sampling: | |
desc = [ | |
sample_descriptors(k[None], d[None], 8)[0] | |
for k, d in zip(keypoints, dense_desc) | |
] | |
else: | |
desc = [ | |
sample_descriptors_fix_sampling(k[None], d[None], 8)[0] | |
for k, d in zip(keypoints, dense_desc) | |
] | |
pred = { | |
"keypoints": keypoints + 0.5, | |
"descriptors": desc.transpose(-1, -2), | |
} | |
if self.conf.dense_outputs: | |
pred["dense_descriptors"] = dense_desc | |
return pred | |
def loss(self, pred, data): | |
raise NotImplementedError | |
def metrics(self, pred, data): | |
raise NotImplementedError | |