基于人脸检测和理想女性比例的随机森林乳头自动检测

Verapluth Thaweekote, P. Songram, C. Jareanpon
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引用次数: 8

摘要

目前网络世界上的色情图片,青少年和儿童可以轻易浏览。从而刺激性欲。由此产生的性侵害行为,引诱15岁以下儿童增多,造成怀孕问题和性传播疾病。通过分析图像内容来进行色情检测是防止访问的必要手段。许多研究人员对乳头的色情检测感兴趣,使用扩展的Haar-like提取特征,颜色,纹理和形状,用于使用各种算法级联AdaBoost进行分类。然而,缺点是乳头模板需要大量的训练集,并且需要花费大量的时间来检测与乳头相似的多个可能位置,如眼睛和肚脐。本研究提出了一种不使用模板的乳头检测算法。我们提出了一种基于理想比例检测的新模型。结果表明,与现有方法相比,该算法精度高,计算时间短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic nipple detection based on face detection and ideal proportion female using random forest
Currently pornographic image on the online world, teenagers and kids can visit easily. Which stimulate sexual desire. Resulting behavior of sexual abuse, enticing a child under the age of 15 years increased, cause problems getting pregnant and sexually transmitted diseases. Pornographic detection is essential to prevent to access through analyzing image content. Many researchers are interested in pornographic detection of nipple using extended Haar-like for extracting the features, color, texture and shape that are used for classification using various algorithms cascaded AdaBoost. However, this disadvantage is the templates for nipple which require a lot of training set and it consumes the time to detect a multiple possible position similar to nipples such as eyes and navel. This research proposed the novel algorithm without using templates for detecting the nipple. Our proposed creates the novel model based on ideal proportion detection. The result of this algorithm shows the high accuracy and reducing the computational time when compares with the existing method.
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