Comparison of Video Face Detection methods Using HSV, HSL and HSI Color Spaces

S. Elaw, W. Abd-Elhafiez, M. Heshmat
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引用次数: 1

Abstract

this paper presents, new face detection methods based on HSL and HSI color spaces are presented. A comparison of the new face detection methods and a new HSV skin color range is presented. The three color spaces are based on: H, S, V, L, and I, whose represent Hue, Saturation, Value, Luminance and Intensity respectively. YouTube Celebrities Face Tracking and Recognition Dataset is used. It contains 1910 sequences of 47 subjects. All dataset videos are encoded in MPEG4 at 25fps rate. The proposed methods based on two main steps, at the beginning, the skin like regions is detected by the gradient values of the proposed color space. According to main facial features, such as eyes, mouth and nose the desired faces are determined from the recommended regions. According to experimental results, HSV color space gives good results in lighten_faces, HSL color space gives good results for multi_faces and HSI color space gives good results for single_faces and zoomed_faces videos.
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基于HSV、HSL和HSI色彩空间的视频人脸检测方法比较
本文提出了基于HSL和HSI颜色空间的人脸检测新方法。对新的人脸检测方法和新的HSV肤色范围进行了比较。这三个色彩空间基于:H、S、V、L和I,分别代表Hue、Saturation、Value、Luminance和Intensity。使用YouTube名人面部跟踪和识别数据集。它包含47个主题的1910个序列。所有数据集视频都以25fps的速率以MPEG4编码。该方法主要分为两个步骤:首先,利用所提出的颜色空间的梯度值检测类皮肤区域;根据主要的面部特征,如眼睛、嘴巴和鼻子,从推荐的区域确定理想的脸。实验结果表明,HSV色彩空间对lighten_faces具有较好的效果,HSL色彩空间对multi_faces具有较好的效果,HSI色彩空间对single_faces和zoomed_faces具有较好的效果。
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