Omni-face detection for video/image content description

Gang Wei, I. Sethi
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引用次数: 23

Abstract

An omni-face detection scheme for image/video content description is proposed in this paper. It provides the ability to extract high-level features in terms of human activities rather than low-level features like color, texture and shape. The system relies on an omni-face detection system capable of locating human faces over a broad range of views in color images or videos with complex scenes. It uses the presence of skin-tone pixels coupled with shape, edge pattern and face-specific features to locate faces. The main distinguishing contribution of this work is being able to detect faces irrespective of their poses, including frontal-view and side-view, whereas contemporary systems deal with frontal-view faces only. The other novel aspects of the work lie in its iterative candidate filtering to segment objects from extraneous region, the use of Hausdorff distance-based normalized similarity measure to identify side-view facial profiles, and the exploration of hidden Markov model (HMM) to verify the presence of a side-view face. Image and video can be assigned with semantic descriptors based on human face information for later indexing and retrieval.
面向视频/图像内容描述的全方位人脸检测
提出了一种用于图像/视频内容描述的全人脸检测方案。它提供了根据人类活动提取高级特征的能力,而不是像颜色、纹理和形状这样的低级特征。该系统依赖于一个全人脸检测系统,该系统能够在彩色图像或复杂场景视频的大范围内定位人脸。它利用肤色像素的存在,加上形状、边缘图案和面部特定特征来定位人脸。这项工作的主要显著贡献是能够检测人脸,而不考虑他们的姿势,包括正面视图和侧面视图,而当代系统只处理正面视图的人脸。这项工作的其他新颖方面在于其迭代候选滤波以从外部区域分割对象,使用基于Hausdorff距离的归一化相似性度量来识别侧视图面部轮廓,以及探索隐马尔可夫模型(HMM)来验证侧视图面部的存在。基于人脸信息为图像和视频分配语义描述符,便于后期索引和检索。
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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