VSB2-Net: Visual-Semantic Bi-Branch Network for Zero-Shot Hashing

Xin Li, Xiangfeng Wang, Bo Jin, Wenjie Zhang, Jun Wang, H. Zha
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引用次数: 1

Abstract

Zero-shot hashing aims at learning hashing model from seen classes and the obtained model is capable of generalizing to unseen classes for image retrieval. Inspired by zero-shot learning, existing zero-shot hashing methods usually transfer the supervised knowledge from seen to unseen classes, by embedding the hamming space to a shared semantic space. However, this makes instances difficult to distinguish due to limited hashing bit numbers, especially for semantically similar unseen classes. We propose a novel inductive zero-shot hashing framework, i.e., VSB2-Net, where both semantic space and visual feature space are embedded to the same hamming space instead. The reconstructive semantic relationships are established in the hamming space, preserving local similarity relationships and explicitly enlarging the discrepancy between semantic hamming vectors. A two-task architecture, comprising of classification module and visual feature reconstruction module, is employed to enhance the generalization and transfer abilities. Extensive evaluation results on several benchmark datasets demonstrate the superiority of our proposed method compared to several state-of-the-art baselines.
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VSB2-Net:零次哈希的视觉语义双分支网络
零次哈希的目的是从可见类中学习哈希模型,得到的模型能够泛化到不可见类中进行图像检索。受零次学习的启发,现有的零次哈希方法通常通过将汉明空间嵌入到共享的语义空间中,将监督知识从可见类转移到不可见类。然而,由于哈希位数有限,这使得实例难以区分,特别是对于语义相似的未见过的类。我们提出了一种新的归纳零射散列框架,即VSB2-Net,其中语义空间和视觉特征空间嵌入到相同的汉明空间中。在汉明空间中建立重构语义关系,保留局部相似关系,并显式地扩大语义汉明向量之间的差异。采用由分类模块和视觉特征重构模块组成的双任务结构,增强了图像的泛化和迁移能力。在几个基准数据集上的广泛评估结果表明,与几个最先进的基线相比,我们提出的方法具有优越性。
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