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SBHA:用于图像检索的敏感二进制哈希自动编码器。

SBHA: Sensitive Binary Hashing Autoencoder for Image Retrieval.

作者信息

Wang Ting, Lu Su, Zhang Jianjun, Liu Xuyu, Tian Xing, Ng Wing W Y, Chen Wei-Neng

出版信息

IEEE Trans Cybern. 2024 Jul;54(7):3954-3967. doi: 10.1109/TCYB.2023.3269756. Epub 2024 Jul 11.

DOI:10.1109/TCYB.2023.3269756
PMID:37167035
Abstract

Binary hashing is an effective approach for content-based image retrieval, and learning binary codes with neural networks has attracted increasing attention in recent years. However, the training of hashing neural networks is difficult due to the binary constraint on hash codes. In addition, neural networks are easily affected by input data with small perturbations. Therefore, a sensitive binary hashing autoencoder (SBHA) is proposed to handle these challenges by introducing stochastic sensitivity for image retrieval. SBHA extracts meaningful features from original inputs and maps them onto a binary space to obtain binary hash codes directly. Different from ordinary autoencoders, SBHA is trained by minimizing the reconstruction error, the stochastic sensitive error, and the binary constraint error simultaneously. SBHA reduces output sensitivity to unseen samples with small perturbations from training samples by minimizing the stochastic sensitive error, which helps to learn more robust features. Moreover, SBHA is trained with a binary constraint and outputs binary codes directly. To tackle the difficulty of optimization with the binary constraint, we train the SBHA with alternating optimization. Experimental results on three benchmark datasets show that SBHA is competitive and significantly outperforms state-of-the-art methods for binary hashing.

摘要

二进制哈希是基于内容的图像检索的一种有效方法,近年来,利用神经网络学习二进制编码受到了越来越多的关注。然而,由于哈希码的二进制约束,哈希神经网络的训练具有一定难度。此外,神经网络很容易受到具有微小扰动的输入数据的影响。因此,提出了一种敏感二进制哈希自动编码器(SBHA),通过引入用于图像检索的随机敏感性来应对这些挑战。SBHA从原始输入中提取有意义的特征,并将其映射到二进制空间以直接获得二进制哈希码。与普通自动编码器不同,SBHA通过同时最小化重构误差、随机敏感误差和二进制约束误差来进行训练。通过最小化随机敏感误差,SBHA降低了对来自训练样本的具有微小扰动的未见样本的输出敏感性,这有助于学习更鲁棒的特征。此外,SBHA在二进制约束下进行训练并直接输出二进制编码。为了解决二进制约束带来的优化困难,我们采用交替优化来训练SBHA。在三个基准数据集上的实验结果表明,SBHA具有竞争力,并且在二进制哈希方面显著优于现有方法。

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