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A Detector-oblivious Multi-arm Network for Keypoint Matching

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This paper presents a matching network to establish point correspondence between images. We propose a Multi-Arm Network (MAN) to learn region overlap and depth, which can greatly improve the keypoint matching robustness while bringing little computational cost during the inference stage. Another design that makes this framework different from many existing learning based pipelines that require re-training when a different keypoint detector is adopted, our network can directly work with different keypoint detectors without such a time-consuming re-training process. Comprehensive experiments conducted on outdoor and indoor datasets demonstrated that our proposed MAN outperforms state-of-the-art methods.

Xuelun Shen, Qian Hu, Xin Li, Cheng Wang• 2021

Related benchmarks

TaskDatasetResultRank
Relative Pose EstimationMegaDepth 1500
AUC @ 5°56.8
104
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