Hamming Distributions of Popular Perceptual Hashing Techniques

Sean McKeown, W. Buchanan
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引用次数: 2

Abstract

Content-based file matching has been widely deployed for decades, largely for the detection of sources of copyright infringement, extremist materials, and abusive sexual media. Perceptual hashes, such as Microsoft's PhotoDNA, are one automated mechanism for facilitating detection, allowing for machines to approximately match visual features of an image or video in a robust manner. However, there does not appear to be much public evaluation of such approaches, particularly when it comes to how effective they are against content-preserving modifications to media files. In this paper, we present a million-image scale evaluation of several perceptual hashing archetypes for popular algorithms (including Facebook's PDQ, Apple's Neuralhash, and the popular pHash library) against seven image variants. The focal point is the distribution of Hamming distance scores between both unrelated images and image variants to better understand the problems faced by each approach.
流行感知哈希技术的汉明分布
基于内容的文件匹配已经被广泛应用了几十年,主要用于检测版权侵权、极端主义材料和性侵犯媒体的来源。感知哈希,如微软的PhotoDNA,是一种促进检测的自动化机制,允许机器以稳健的方式近似匹配图像或视频的视觉特征。然而,对这些方法似乎没有太多的公众评价,特别是当涉及到它们对媒体文件的内容保留修改的有效性时。在本文中,我们提出了针对七种图像变体的几种流行算法(包括Facebook的PDQ, Apple的Neuralhash和流行的pHash库)的感知哈希原型的百万图像规模评估。重点是汉明距离分数在不相关图像和图像变体之间的分布,以便更好地理解每种方法面临的问题。
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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