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Learning Cross-Domain Descriptors for 2D-3D Matching with Hard Triplet Loss and Spatial Transformer Network.

, , , , , , , , и . ICIG (3), том 12890 из Lecture Notes in Computer Science, стр. 15-27. Springer, (2021)

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