Lost in binarization: query-adaptive ranking for similar image search with compact codes

Yu-Gang Jiang, Jun Wang, Shih-Fu Chang
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引用次数: 47

Abstract

With the proliferation of images on the Web, fast search of visually similar images has attracted significant attention. State-of-the-art techniques often embed high-dimensional visual features into low-dimensional Hamming space, where search can be performed in real-time based on Hamming distance of compact binary codes. Unlike traditional metrics (e.g., Euclidean) of raw image features that produce continuous distance, the Hamming distances are discrete integer values. In practice, there are often a large number of images sharing equal Hamming distances to a query, resulting in a critical issue for image search where ranking is very important. In this paper, we propose a novel approach that facilitates query-adaptive ranking for the images with equal Hamming distance. We achieve this goal by firstly offline learning bit weights of the binary codes for a diverse set of predefined semantic concept classes. The weight learning process is formulated as a quadratic programming problem that minimizes intra-class distance while preserving interclass relationship in the original raw image feature space. Query-adaptive weights are then rapidly computed by evaluating the proximity between a query and the concept categories. With the adaptive bit weights, the returned images can be ordered by weighted Hamming distance at a finer-grained binary code level rather than at the original integer Hamming distance level. Experimental results on a Flickr image dataset show clear improvements from our query-adaptive ranking approach.
在二值化中丢失:使用紧凑代码搜索相似图像的查询自适应排序
随着网络上图像的激增,快速搜索视觉上相似的图像引起了人们的极大关注。最先进的技术通常将高维视觉特征嵌入到低维汉明空间中,在该空间中可以基于紧凑二进制码的汉明距离进行实时搜索。与产生连续距离的原始图像特征的传统度量(例如欧几里得度量)不同,汉明距离是离散的整数值。在实践中,经常有大量的图像共享相同的汉明距离的查询,导致一个关键问题的图像搜索,其中排名是非常重要的。在本文中,我们提出了一种新的方法来促进具有相等汉明距离的图像的查询自适应排序。我们首先通过离线学习一组预定义语义概念类的二进制码的位权重来实现这一目标。权重学习过程是一个二次规划问题,最小化类内距离,同时保留原始原始图像特征空间中的类间关系。然后通过评估查询和概念类别之间的接近度来快速计算自适应查询权重。使用自适应位权,返回的图像可以在更细粒度的二进制码级别上按加权汉明距离排序,而不是在原始的整数汉明距离级别上排序。在Flickr图像数据集上的实验结果表明,我们的查询自适应排序方法有明显的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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