基于皮肤检测的自适应反向传播神经网络色情过滤

M. S. Farooq, Muhammad Adnan Khan, Sagheer Abbas, Atifa Athar, N. Ali, Arfa Hassan
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引用次数: 5

摘要

随着互联网变得更快、更便宜,它的滥用,如色情制作和消费也有所增加。色情被认为是一个敏感的问题,在我们的社会公开讨论,这是一个被忽视了。心理学研究表明,色情和裸体图片会对观看者的心灵产生负面影响。而且看色情片也是一种上瘾。在第一阶段,这些人与他们所爱的人产生距离,导致他们抑郁,在极端阶段,他们可能参与许多类型的犯罪活动。本文提出了一种基于皮肤检测的自适应反向传播神经网络(SD-PFT-ABPNN)色情过滤技术。与使用全局图像增强(PFTGIE)和不使用全局图像增强(PFTWGIE)技术的基于皮肤检测的色情过滤技术相比,所提出的SD-PFT-ABPNN技术的仿真结果显示,在MMSE和回归方面取得了理想的结果。对比结果发现,BR算法的准确率最高,达到99.70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Skin Detection based Pornography Filtering using Adaptive Back Propagation Neural Network
As the internet becomes faster and cheaper, its misuses like pornographic production and consumption has also been increased. Pornography is considered a sensitive issue to discuss openly in our society and this is a neglected one too. Psychological research says that Pornographic and nude images create a negative impact on the viewer's mind. And also watching pornography is a kind of addiction too. At the first stage, such people create distance from their loved ones which leads them to depression and on extreme stages they could be involved in many types of criminal activities. In this article, the Skin Detection based Pornographic Filtering using Adaptive Back Propagation Neural Network (SD-PFT-ABPNN) Technique is presented. The Simulation results of Proposed SD-PFT-ABPNN techniques shown desirable results regarding MMSE and regression as compared to conventional skin detection-based Porn Filtering Techniques using Global Image Enhancement (PFTGIE), Porn Filtering Techniques Without using Global Image Enhancement (PFTWGIE) techniques. When the results were compared, it was seen that the BR algorithm has the highest accuracy rate with 99.70%.
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