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Zero-Shot Sketch-Image Hashing

机译:零射素描图像散列

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Recent studies show that large-scale sketch-based image retrieval (SBIR) can be efficiently tackled by cross-modal binary representation learning methods, where Hamming distance matching significantly speeds up the process of similarity search. Providing training and test data subjected to a fixed set of pre-defined categories, the cutting-edge SBIR and cross-modal hashing works obtain acceptable retrieval performance. However, most of the existing methods fail when the categories of query sketches have never been seen during training. In this paper, the above problem is briefed as a novel but realistic zero-shot SBIR hashing task. We elaborate the challenges of this special task and accordingly propose a zero-shot sketch-image hashing (ZSIH) model. An end-to-end three-network architecture is built, two of which are treated as the binary encoders. The third network mitigates the sketch-image heterogeneity and enhances the semantic relations among data by utilizing the Kronecker fusion layer and graph convolution, respectively. As an important part of ZSIH, we formulate a generative hashing scheme in reconstructing semantic knowledge representations for zero-shot retrieval. To the best of our knowledge, ZSIH is the first zero-shot hashing work suitable for SBIR and cross-modal search. Comprehensive experiments are conducted on two extended datasets, i.e., Sketchy and TU-Berlin with a novel zero-shot train-test split. The proposed model remarkably outperforms related works.
机译:最近的研究表明,跨模式二进制表示学习方法可以有效地解决大规模基于草图的图像检索(SBIR),其中汉明距离匹配可以显着加快相似性搜索的过程。通过提供一组固定的预定义类别的培训和测试数据,尖端的SBIR和跨模式散列工作可获得可接受的检索性能。但是,当训练期间从未看到查询草图的类别时,大多数现有方法都会失败。在本文中,将上述问题作为一种新颖但现实的零脉冲SBIR哈希任务进行了简要介绍。我们详细阐述了这项特殊任务的挑战,并据此提出了零镜头草图图像哈希(ZSIH)模型。建立了端到端的三网络体系结构,其中两个被视为二进制编码器。第三网络分别利用Kronecker融合层和图卷积来减轻草图图像的异质性并增强数据之间的语义关系。作为ZSIH的重要组成部分,我们制定了一种生成哈希算法,用于重建零射击检索的语义知识表示形式。据我们所知,ZSIH是第一个适用于SBIR和跨模式搜索的零散列哈希工作。对两个扩展的数据集(即Sketchy和TU-Berlin)进行了全面的实验,并采用了新颖的零速火车测试方法。所提出的模型明显胜过相关工作。

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