Digital Image Processing Using YCbCr Colour Space and Neuro Fuzzy to Identify Pornography

B. Subaeki, Y. A. Gerhana, Meta Barokatul Karomah Rusyana, K. Manaf
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引用次数: 0

Abstract

Pornography is a severe problem in Indonesia, apart from drugs. This can be seen based on data from the Ministry of Communication and Informatics in 2021 which found 1.1 million pornographic content online. The increasing number of access to pornographic content sites on the internet can prove this. Several studies have been conducted to produce preventive formulas. However, this research flow has not been effective in solving the problem. This is because the results of the identification value in the output image obtained are not quite right. This study proposes a procedure for identifying pornographic content in digital images as an alternative approach for the early stages of a destructive content access prevention system. The formulation uses the YCbCr color space to analyze human skin on image objects that represent exposed body parts and the classification process with the Neuro Fuzzy approach. The performance of this formula was tested on 100 digital images of random categories of human objects (usually covered, skimpy, and naked) taken from the internet. The test results are at a relatively good level of accuracy, with a weight of 70% for the entire test data.
利用YCbCr色彩空间和神经模糊识别色情内容的数字图像处理
除了毒品,色情在印尼也是一个严重的问题。这可以从2021年通信和信息部的数据中看出,该数据发现了110万条网络色情内容。互联网上越来越多的色情网站可以证明这一点。为了生产预防配方,进行了几项研究。然而,这种研究流程并没有有效地解决这一问题。这是因为在输出图像中得到的识别值的结果不太正确。本研究提出了一种识别数字图像中的色情内容的程序,作为破坏性内容访问预防系统早期阶段的替代方法。该公式使用YCbCr颜色空间来分析代表暴露身体部位的图像对象上的人体皮肤,并使用神经模糊方法进行分类过程。这个公式的性能测试了100张从互联网上截取的随机类别的人类物体(通常是覆盖的、暴露的和裸露的)的数字图像。测试结果具有相对较好的准确性,整个测试数据的权重为70%。
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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