淫秽图像检测算法利用高、低质量图像

Myoungbeom Chung, Il-Ju Ko, Daesik Jang
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引用次数: 9

摘要

淫秽图像检测,是指从给定的视频文件中预先提取的图像中识别淫秽和色情部分的过程;这个过程构成了更广泛的淫秽视频过滤系统的核心。现有的淫秽图像检测方法依赖于RGB比例、颜色分布直方图、YIG等图像纹理信息来跟踪相关图像的肤色和边缘信息。然而,现有的方法在确定低质量UCC视频的淫秽程度时并不十分准确。本文提出了一种改进的方法,首先利用Canny Edge对图像的细颗粒进行分析,确定图像的质量是高还是低,然后利用Canny Edge来确定图像是否通过最终的淫秽性测试。为了检验该方法的有效性,首先对任意选择的一批图像进行Canny Edge测试,根据图像质量水平将这批图像分成两组。然后对图像进行两次淫秽水平测试,首先使用现有方法,然后使用本文提出的方法。然后对结果进行分析,结果表明,新方法产生的结果准确度提高了10%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Obscene image detection algorithm using high-and low-quality images
Obscene image detection refers to the process of identifying obscene and pornographic portions in images previously extracted from a given video file; a process that constitutes the core of the broader obscene-video filtering system. Existing obscene-image detection methods rely on information about image texture such as RGB proportions, color-distribution histograms, and YIG to track the skin-color and edge information of the image concerned. Existing methods, however, are not very accurate when it comes to determining the obscenity level in low-quality UCC videos. This paper proposes an improved method that first utilizes Canny Edge to analyze the fine grains of the image to determine whether the image is of high or low quality, and then employs to determine whether the image passes the final obscenity test. In order to check for the efficacy of this method, an arbitrarily selected batch of images was first put through the Canny Edge test to separate the batch into two groups based on the image-quality level. The images were then tested for their obscenity levels twice, first with an existing method and then with the method proposed in this paper. Results were then analyzed, which showed that the new method yielded results that were about 10% more accurate.
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