Abstract
Content-based image retrieval (CBIR) has attracted increasing attention in the field of computer-aided diagnosis, for which learning-based hashing approaches represent the most prominent techniques for large-scale image retrieval. In this work, we propose a Supervised Hashing method with Energy-Based Modeling (SH-EBM) for scalable multi-label image retrieval, where concurrence of multiple symptoms with subtle differences in visual feature makes the search problem quite challenging, even for sophisticated hashing models built upon modern deep architectures. In addition to similarity-preserving ranking loss, multi-label classification loss is often employed in existing supervised hashing to further improve the expressiveness of hash codes, by optimizing a normalized probabilistic objective with tractable likelihood (e.g., multi-label cross-entropy). On the contrary, we present a multi-label EBM loss without restriction on the tractability of the log-likelihood, which is more flexible to parameterize and can model a more expressive probability distribution over multimorbidity image data. We further develop a multi-label Noise Contrastive Estimation (ml-NCE) algorithm for discriminative training of the proposed hashing network. On a multimorbidity dataset constructed by the NIH Chest X-ray, our SH-EBM outperforms most supervised hashing methods by a significant margin, implying its effectiveness in facilitating multilevel similarity preservation for scalable image retrieval.
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This work was supported in part by the National Natural Science Foundation of China under grants 61972046, and in part by the Beijing Natural Science Foundation under grants 4202051.
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Huang, P., Zhou, X., Wei, Z., Guo, G. (2021). Energy-Based Supervised Hashing for Multimorbidity Image Retrieval. In: de Bruijne, M., et al. Medical Image Computing and Computer Assisted Intervention – MICCAI 2021. MICCAI 2021. Lecture Notes in Computer Science(), vol 12905. Springer, Cham. https://doi.org/10.1007/978-3-030-87240-3_20
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