基于深度强化学习的序列和相关图像哈希码生成

Can Yüzkollar
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引用次数: 0

摘要

图像哈希是一种算法,用于表示具有唯一值的图像。哈希方法通常用于搜索图像的相似示例,通过使用深度网络结构获得了一个新的维度,并且开始获得更好的结果。现有的深度网络模型一般单独考虑哈希函数,而不考虑它们之间的相关性。此外,大多数现有的依赖于数据的散列方法使用从本地角度捕获数据关系的成对/三元组相似性度量。本研究将具有较好效果的Central similarity metric应用于具有顺序学习策略的深度强化学习方法中,并在二元哈希码的学习中取得了成功的结果。通过考虑深度强化学习策略中先前哈希函数的误差,提出了一种新的模型,该模型执行相互关联和基于中心相似度的学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential and Correlated Image Hash Code Generation with Deep Reinforcement Learning
Image hashing is an algorithm used to represent an image with a unique value. Hashing methods, which are generally developed to search for similar examples of an image, have gained a new dimension with the use of deep network structures and better results have started to be obtained with the methods. The developed deep network models generally consider hash functions independently and do not take into account the correlation between them. In addition, most of the existing data-dependent hashing methods use pairwise/triplet similarity metrics that capture data relationships from a local perspective. In this study, the Central similarity metric, which can achieve better results, is adapted to the deep reinforcement learning method with sequential learning strategy, and successful results are obtained in learning binary hash codes. By taking into account the errors of previous hash functions in the deep reinforcement learning strategy, a new model is presented that performs interrelated and central similarity based learning.
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