Approximate nearest neighbors by deep hashing on large-scale search: Comparison of representations and retrieval performance

Alexander Ocsa, J. L. Huillca, R. Coronado, Oscar Quispe, Carlos Arbieto, Cristian Lopez
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Abstract

The growing volume of data and its increasing complexity require even more efficient and faster information retrieval techniques. Approximate nearest neighbor search algorithms based on hashing were proposed to query high-dimensional datasets due to its high retrieval speed and low storage cost. Recent studies promote the use of Convolutional Neural Network (CNN) with hashing techniques to improve the search accuracy. However, there are challenges to solve in order to find a practical and efficient solution to index CNN features, such as the need for a heavy training process to achieve accurate query results and the critical dependency on data-parameters. In this work we execute exhaustive experiments in order to compare recent methods that are able to produces a better representation of the data space with a less computational cost for a better accuracy by computing the best data-parameter values for optimal sub-space projection exploring the correlations among CNN feature attributes using fractal theory. We give an overview of these different techniques and present our comparative experiments for data representation and retrieval performance.
在大规模搜索中通过深度哈希逼近最近邻:表示和检索性能的比较
不断增长的数据量及其复杂性需要更高效、更快的信息检索技术。基于哈希的近似最近邻搜索算法由于检索速度快、存储成本低而被提出用于高维数据集的查询。最近的研究提倡使用卷积神经网络(CNN)和哈希技术来提高搜索精度。然而,为了找到一个实用而高效的CNN特征索引解决方案,需要解决一些挑战,例如需要大量的训练过程来获得准确的查询结果,以及对数据参数的关键依赖。在这项工作中,我们进行了详尽的实验,以比较最近的方法,这些方法能够以更少的计算成本产生更好的数据空间表示,通过计算最佳子空间投影的最佳数据参数值来获得更高的精度,并使用分形理论探索CNN特征属性之间的相关性。我们概述了这些不同的技术,并提出了我们的数据表示和检索性能的比较实验。
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