DISK: Learning local features with policy gradient
Local feature frameworks are difficult to learn in an end-to-end fashion, due to the discreteness inherent to the selection and matching of sparse keypoints. We introduce DISK (DIScrete Keypoints), a novel method that overcomes these obstacles by leveraging principles from Reinforcement Learning (RL...
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Zusammenfassung: | Local feature frameworks are difficult to learn in an end-to-end fashion, due
to the discreteness inherent to the selection and matching of sparse keypoints.
We introduce DISK (DIScrete Keypoints), a novel method that overcomes these
obstacles by leveraging principles from Reinforcement Learning (RL), optimizing
end-to-end for a high number of correct feature matches. Our simple yet
expressive probabilistic model lets us keep the training and inference regimes
close, while maintaining good enough convergence properties to reliably train
from scratch. Our features can be extracted very densely while remaining
discriminative, challenging commonly held assumptions about what constitutes a
good keypoint, as showcased in Fig. 1, and deliver state-of-the-art results on
three public benchmarks. |
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DOI: | 10.48550/arxiv.2006.13566 |