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Recognizing objectionable pictures using sparse coding

机译:使用稀疏编码识别不良图片

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In recent years different methods for detecting objectionable images have proposed. Generally these methods are based on skin color detection and extracting features from human body. In this paper a variant of SPM method is proposed in order to discriminate normal images from objectionable ones. In this method first SIFT features are extracted. Next features are learned by sparse coding the features of previous step. Finally classes are separated by a linear SVM. This approach remarkably improves the scalability of the training phase. The proposed system is tested on 80,000 images and experiments indicate that it outperforms other methods including methods based on histogram features and nonlinear classifiers.
机译:近年来,已经提出了用于检测令人反感的图像的不同方法。通常,这些方法基于肤色检测和从人体提取特征。在本文中,提出了一种SPM方法的变体,以区分正常图像和有害图像。在这种方法中,首先提取SIFT特征。通过稀疏编码上一步的功能来学习下一个功能。最后,类由线性SVM分隔。这种方法显着提高了训练阶段的可伸缩性。该系统在8万张图像上进行了测试,实验表明,该系统的性能优于其他方法,包括基于直方图特征和非线性分类器的方法。

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