SNIF: a simple nude image finder

Ruan J. S. Belém, J. Cavalcanti, E. Moura, M. Nascimento
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引用次数: 11

Abstract

The lack of control of the content published is broadly regarded as a positive aspect of the Web, assuring freedom of speech to its users. On the other hand, there is also a lack of control of the content accessed by users when browsing Web pages. In some situations this lack of control may be undesired. For instance, parents may not desire their children to have access to offensive content available on the Web. In particular, accessing Web pages with nude images is among the most common problem of this sort. One way to tackle this problem is by using automated offensive image detection algorithms which can filter undesired images. Recent approaches on nude image detection use a combination of features based on color, texture, shape and other low level features in order to describe the image content. These features are then used by a classifier which is able to detect offensive images accordingly. In this paper we propose SNIF - simple nude image finder - which uses a color based feature only, extracted by an effective and efficient algorithm for image description, the border/interior pixel classification (BIC), combined with a machine learning technique, namely support vector machines (SVM). SNIF uses a simpler feature model when compared to previously proposed methods, which makes it a fast image classifier. The experiments carried out depict that the proposed method, despite its simplicity, is capable to identify up to 98% of nude images from the test set. This indicates that SNIF is as effective as previously proposed methods for detecting nude images.
SNIF:一个简单的裸体图像查找器
对发布的内容缺乏控制被广泛认为是网络的一个积极方面,它保证了用户的言论自由。另一方面,用户在浏览网页时也缺乏对所访问内容的控制。在某些情况下,这种缺乏控制可能是不受欢迎的。例如,父母可能不希望他们的孩子接触到网络上令人反感的内容。特别是,访问带有裸体图片的网页是此类问题中最常见的。解决这个问题的一种方法是使用自动的攻击性图像检测算法,它可以过滤不需要的图像。最近的裸体图像检测方法使用基于颜色、纹理、形状和其他低级特征的特征组合来描述图像内容。然后,这些特征被分类器使用,分类器能够相应地检测攻击性图像。在本文中,我们提出了SNIF -简单裸体图像查找器-它只使用基于颜色的特征,通过一种有效且高效的图像描述算法,即边界/内部像素分类(BIC)提取,并结合机器学习技术,即支持向量机(SVM)。与以前提出的方法相比,SNIF使用更简单的特征模型,这使其成为快速的图像分类器。实验表明,尽管该方法简单,但能够从测试集中识别高达98%的裸体图像。这表明SNIF与以前提出的检测裸体图像的方法一样有效。
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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