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# Originating Authors: Paul-Edouard Sarlin | |
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import torch | |
from .superpoint import SuperPoint | |
from .superglue import SuperGlue | |
class Matching(torch.nn.Module): | |
"""Image Matching Frontend (SuperPoint + SuperGlue)""" | |
def __init__(self, config={}): | |
super().__init__() | |
self.superpoint = SuperPoint(config.get("superpoint", {})) | |
self.superglue = SuperGlue(config.get("superglue", {})) | |
def forward(self, data): | |
"""Run SuperPoint (optionally) and SuperGlue | |
SuperPoint is skipped if ['keypoints0', 'keypoints1'] exist in input | |
Args: | |
data: dictionary with minimal keys: ['image0', 'image1'] | |
""" | |
pred = {} | |
# Extract SuperPoint (keypoints, scores, descriptors) if not provided | |
if "keypoints0" not in data: | |
pred0 = self.superpoint({"image": data["image0"]}) | |
pred = {**pred, **{k + "0": v for k, v in pred0.items()}} | |
if "keypoints1" not in data: | |
pred1 = self.superpoint({"image": data["image1"]}) | |
pred = {**pred, **{k + "1": v for k, v in pred1.items()}} | |
# Batch all features | |
# We should either have i) one image per batch, or | |
# ii) the same number of local features for all images in the batch. | |
data = {**data, **pred} | |
for k in data: | |
if isinstance(data[k], (list, tuple)): | |
data[k] = torch.stack(data[k]) | |
# Perform the matching | |
pred = {**pred, **self.superglue(data)} | |
return pred | |