Pornographic images detection is necessary for us to filter out objectionable information on the Internet. Bag-of-visual-words (BoVW) based pornographic images detection is promising because it can compensate the defect of the traditional approach. However, there are many choices to construct visual-words which are crucial to the tradeoff between the speed and the performance. We propose a novel method of constructing SURF (speeded up robust features) visual-words in skin regions and combining it with color moments. The results show that the performance of SURF visual-words is better than that of SIFT (scale-invariant feature transform) visual-words and our method is more effective to detect pornographic images than many existing methods.
Fangfang LiSiwei LuoXiyao LiuBeiji Zou
Yizhi LiuXiangdong WangYongdong ZhangSheng Tang
Haiming YinXiangqiong HuangYuanwang Wei
Lujie SuiJi ZhangZhuo LiYutuo Yang
Alaa Yaseen TaqaBayez Al-Sulaifanie