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Hotel Recognition via Latent Image Embedding
Published 15 Jun 2021 in cs.CV, cs.IR, and cs.LG | (2106.08042v1)
Abstract: We approach the problem of hotel recognition with deep metric learning. We overview the existing approaches and propose a modification to Contrastive loss called Contrastive-Triplet loss. We construct a robust pipeline for benchmarking metric learning models and perform experiments on Hotels-50K and CUB200 datasets. Contrastive-Triplet loss is shown to achieve better retrieval on Hotels-50k. We open-source our code.
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