Adaptive Hashing for Fast Similarity Search

Fatih Çakir, S. Sclaroff
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引用次数: 75

Abstract

With the staggering growth in image and video datasets, algorithms that provide fast similarity search and compact storage are crucial. Hashing methods that map the data into Hamming space have shown promise, however, many of these methods employ a batch-learning strategy in which the computational cost and memory requirements may become intractable and infeasible with larger and larger datasets. To overcome these challenges, we propose an online learning algorithm based on stochastic gradient descent in which the hash functions are updated iteratively with streaming data. In experiments with three image retrieval benchmarks, our online algorithm attains retrieval accuracy that is comparable to competing state-of-the-art batch-learning solutions, while our formulation is orders of magnitude faster and being online it is adaptable to the variations of the data. Moreover, our formulation yields improved retrieval performance over a recently reported online hashing technique, Online Kernel Hashing.
快速相似性搜索的自适应哈希算法
随着图像和视频数据集的惊人增长,提供快速相似性搜索和紧凑存储的算法至关重要。将数据映射到汉明空间的哈希方法已经显示出了希望,然而,这些方法中的许多都采用了批处理学习策略,其中计算成本和内存需求可能变得难以处理,并且随着数据集越来越大而变得不可行的。为了克服这些挑战,我们提出了一种基于随机梯度下降的在线学习算法,该算法使用流数据迭代更新哈希函数。在三个图像检索基准的实验中,我们的在线算法达到了与最先进的批量学习解决方案相媲美的检索精度,而我们的公式要快几个数量级,并且在线可以适应数据的变化。此外,我们的公式比最近报道的在线哈希技术——在线内核哈希——产生了更好的检索性能。
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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