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Construct Informative Triplet with Two-stage Hard-sample Generation

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arxiv 2112.02259 v1 pith:IC3CMYEM submitted 2021-12-04 cs.CV

Construct Informative Triplet with Two-stage Hard-sample Generation

classification cs.CV
keywords generationhardsamplesamplesconstructexistinghard-sampleinformative
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we propose a robust sample generation scheme to construct informative triplets. The proposed hard sample generation is a two-stage synthesis framework that produces hard samples through effective positive and negative sample generators in two stages, respectively. The first stage stretches the anchor-positive pairs with piecewise linear manipulation and enhances the quality of generated samples by skillfully designing a conditional generative adversarial network to lower the risk of mode collapse. The second stage utilizes an adaptive reverse metric constraint to generate the final hard samples. Extensive experiments on several benchmark datasets verify that our method achieves superior performance than the existing hard-sample generation algorithms. Besides, we also find that our proposed hard sample generation method combining the existing triplet mining strategies can further boost the deep metric learning performance.

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