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RF-Net: An End-to-End Image Matching Network based on Receptive Field

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arxiv 1906.00604 v1 pith:5BOC33XN submitted 2019-06-03 cs.CV

RF-Net: An End-to-End Image Matching Network based on Receptive Field

classification cs.CV
keywords matchingrf-netend-to-endreceptivetrainablefeaturefieldlf-net
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper proposes a new end-to-end trainable matching network based on receptive field, RF-Net, to compute sparse correspondence between images. Building end-to-end trainable matching framework is desirable and challenging. The very recent approach, LF-Net, successfully embeds the entire feature extraction pipeline into a jointly trainable pipeline, and produces the state-of-the-art matching results. This paper introduces two modifications to the structure of LF-Net. First, we propose to construct receptive feature maps, which lead to more effective keypoint detection. Second, we introduce a general loss function term, neighbor mask, to facilitate training patch selection. This results in improved stability in descriptor training. We trained RF-Net on the open dataset HPatches, and compared it with other methods on multiple benchmark datasets. Experiments show that RF-Net outperforms existing state-of-the-art methods.

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