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Approach of RSOR Algorithm Using HSV Color Model for Nude Detection in Digital Images

机译:基于HSV颜色模型的RSOR算法在数字图像裸体检测中的应用。

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摘要

This paper analyzes the application of pixel segmentation techniques, the recognition and selection of image regions, as well as the performing of operations on the regions found within the digital images in order to detect nudity. The research aims to develop a software tool capable of nudity detection on digital images. The segmentation in the HSV color model (Hue, Saturation, and Value) to locate and remove the pixels corresponding to human skin is used. The algorithm in Recognition, Selection and Operations in Regions (RSOR), to recognize and separate the region with the highest number of skin pixels within the segmented image (largest region), is proposed. Once selected the largest region, the RSOR algorithm calculates the percentage on the segmented image taken from the original one, and then it calculates the percentage on the largest region, in order to identify whether there is a nude in the image. The criteria for appraising if an image depicts a nude is the following: If the percentage of skin pixels in the segmented image, in comparison to the original image, is less than 25% it is not considered a nude, but if it exceeds this percentage, then, the image is a nude. However, when the percentage of the largest region has been estimated and it amounts to less than 35%, the image is definitely not a nude. The final result is a message that informs the user whether or not the image is a nude. The RSOR algorithm obtains a 4.7% false positive, compared to other systems, and it has shown to possess optimum performance for nudity detection.
机译:本文分析了像素分割技术的应用,图像区域的识别和选择以及在数字图像中发现的区域上执行操作以检测裸露。该研究旨在开发一种能够对数字图像进行裸露检测的软件工具。 HSV颜色模型中的分割(色相,饱和度和值)用于定位和删除与人体皮肤相对应的像素。提出了一种区域识别,选择和操作算法(RSOR),用于识别和分离分割图像中皮肤像素最多的区域(最大区域)。一旦选择了最大区域,RSOR算法将计算从原始图像中获取的分割图像的百分比,然后计算最大区域的百分比,以识别图像中是否存在裸照。评估图像是否描绘出裸体的标准如下:如果与原始图像相比,分割图像中皮肤像素的百分比小于25%,则不认为是裸体,但如果超出该百分比,则图像为裸照。但是,当估计最大区域的百分比并且小于35%时,该图像绝对不是裸照。最终结果是一条消息,通知用户图像是否为裸照。与其他系统相比,RSOR算法获得了4.7%的误报率,并且显示出具有裸露检测的最佳性能。

著录项

  • 来源
    《Computer and information science》 |2011年第4期|p.29-45|共17页
  • 作者单位

    Student. Facultad de Ciencias de la Computation, Benemerita Universidad Autonoma de Puebla Apartado postal J-32, Ciudad Universitaria, Puebla, Mexico;

    Researcher Professor full-time. Facultad de Ciencias de la Computation Benemeiita Universidad Autdnoma de Puebla Apartado postal J-32, Ciudad Universitaria, Puebla, Mexico;

    Researcher and currently working at Intel. Facultad de Ciencias de la Computation Benemerita Universidad Autdnoma de Puebla Apartado postal J-32, Ciudad Universitaria, Puebla, Mexico;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    RSOR; HSV; nudity detection; largest region;

    机译:RSOR;HSV;裸露检测;最大的区域;

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