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Global Optimal Structured Embedding Learning for Remote Sensing Image Retrieval.


ABSTRACT: A rich line of works focus on designing elegant loss functions under the deep metric learning (DML) paradigm to learn a discriminative embedding space for remote sensing image retrieval (RSIR). Essentially, such embedding space could efficiently distinguish deep feature descriptors. So far, most existing losses used in RSIR are based on triplets, which have disadvantages of local optimization, slow convergence and insufficient use of similarity structure in a mini-batch. In this paper, we present a novel DML method named as global optimal structured loss to deal with the limitation of triplet loss. To be specific, we use a softmax function rather than a hinge function in our novel loss to realize global optimization. In addition, we present a novel optimal structured loss, which globally learn an efficient deep embedding space with mined informative sample pairs to force the positive pairs within a limitation and push the negative ones far away from a given boundary. We have conducted extensive experiments on four public remote sensing datasets and the results show that the proposed global optimal structured loss with pairs mining scheme achieves the state-of-the-art performance compared with the baselines.

SUBMITTER: Liu P 

PROVIDER: S-EPMC6983082 | biostudies-literature | 2020 Jan

REPOSITORIES: biostudies-literature

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Global Optimal Structured Embedding Learning for Remote Sensing Image Retrieval.

Liu Pingping P   Gou Guixia G   Shan Xue X   Tao Dan D   Zhou Qiuzhan Q  

Sensors (Basel, Switzerland) 20200104 1


A rich line of works focus on designing elegant loss functions under the deep metric learning (DML) paradigm to learn a discriminative embedding space for remote sensing image retrieval (RSIR). Essentially, such embedding space could efficiently distinguish deep feature descriptors. So far, most existing losses used in RSIR are based on triplets, which have disadvantages of local optimization, slow convergence and insufficient use of similarity structure in a mini-batch. In this paper, we presen  ...[more]

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