基于多色空间动态阈值的改进皮肤检测

M. Z. Osman, M. A. Maarof, M. F. Rohani
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引用次数: 6

摘要

肤色检测广泛应用于成人图像过滤、隐写术、基于内容的图像检索(CBIR)、人脸跟踪、人脸识别和面部手术等领域。近年来,研究人员对基于在线样本学习方法的高级静态图像皮肤检测策略更感兴趣,该方法不需要离线训练数据集。在类肤色和种族因素方面,以往的动态肤色检测工作显示出比静态肤色检测更高的真阳性结果。然而,动态肤色检测也会产生较高的假阳性结果,降低了皮肤检测的准确性。这是由于目前椭圆掩模模型的方法不能灵活地进行人脸旋转,并且是基于单一颜色空间。因此,我们提出了基于多色空间的动态肤色检测方法。结果表明,该方法的有效性,将假阳性率从19.6069%降低到6.9887%,准确率从81.27%提高到91.49%。
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Improved skin detection based on dynamic threshold using multi-colour space
Skin colour detection is widely used in applications such as adult image filtering, steganography, content-based image retrieval (CBIR), face tracking, face recognition, and facial surgery. Recently, researchers are more interested in developing high level skin detection strategy for still images based on online sample learning approach which requires no offline training dataset. Previous dynamic skin color detection works has shown high true positive result than the static skin detection in term of skin-like colour and ethnicity factors. However, dynamic skin colour detection also produced high false positives result which lowers the accuracy of skin detection. This is due to the current approach of elliptical mask model that is not flexible for face rotation and is based on single colour space. Therefore, we propose dynamic skin colour detection based on multi-colour space. The result shows the effectiveness of the proposed method by reducing the false positive rate from 19.6069% to 6.9887% and increased the precision rate from 81.27% to 91.49%.
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