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Collaborative Quantization for Cross-Modal Similarity Search

机译:跨模态相似搜索的协作量化

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Cross-modal similarity search is a problem about designing a search system supporting querying across content modalities, e.g., using an image to search for texts or using a text to search for images. This paper presents a compact coding solution for efficient search, with a focus on the quantization approach which has already shown the superior performance over the hashing solutions in the single-modal similarity search. We propose a cross-modal quantization approach, which is among the early attempts to introduce quantization into cross-modal search. The major contribution lies in jointly learning the quantizers for both modalities through aligning the quantized representations for each pair of image and text belonging to a document. In addition, our approach simultaneously learns the common space for both modalities in which quantization is conducted to enable efficient and effective search using the Euclidean distance computed in the common space with fast distance table lookup. Experimental results compared with several competitive algorithms over three benchmark datasets demonstrate that the proposed approach achieves the state-of-the-art performance.
机译:跨模式相似性搜索是有关设计支持跨内容模式进行查询的搜索系统的问题,例如,使用图像搜索文本或使用文本搜索图像。本文提出了一种用于高效搜索的紧凑编码解决方案,重点是量化方法,该方法已显示出比单模态相似性搜索中的哈希解决方案优越的性能。我们提出了一种跨模式量化方法,这是将量化引入跨模式搜索的早期尝试之一。主要的贡献在于,通过对齐属于一个文档的每对图像和文本的量化表示,可以共同学习两种模态的量化器。此外,我们的方法同时学习两种模态的公共空间,在其中进行量化以使用快速距离表查找在公共空间中计算出的欧几里得距离来进行高效有效的搜索。实验结果与在三个基准数据集上的几种竞争算法进行了比较,结果表明,该方法可实现最先进的性能。

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