基于面部特征描述符的视频监控自动索引

Rachida Hannane, Abdessamad Elboushaki, K. Afdel
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引用次数: 4

摘要

自动监控录像索引是更可取的,同时为人员安全提供了辅助工具。由于监控视频中最吸引我们关注的对象是人脸,因此本文的重点是构建一个基于人脸特征的监控视频索引系统。该系统主要分为三个阶段:视频监控摘要、人脸检测、人脸特征描述和索引。将基于局部前景熵的关键帧选择技术用于视频监控摘要。在人脸检测阶段,基于肤色的方法使用从关键帧的颜色空间分量中获得的测量值来定位眼睛,嘴巴和面部边界。随后,应用SURF算法从检测到的人脸区域提取兴趣点的特征描述符。然后使用词汇树对这些描述符进行索引。通过对上述方法的集成,使整个系统鲁棒性强,效率高,效果良好。因此,在包含48个视频序列的ChokePoint公共数据集上进行测试,获得了良好的效果,总共有179 349帧,其中包括64 204张人脸图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automatic video surveillance indexing based on facial feature descriptors
Automatic surveillance video footage indexing is much more desirable while providing an assistive tool for personnel security. Since the most relevant object that attracts our attention in surveillance videos is human face, we focus in this paper on building a system for indexing surveillance videos based on human face features. The proposed system has three main stages: Video Surveillance Summarisation, Face Detection, and Facial Feature Descriptors, and Indexing. A keyframe selection technique based on local foreground entropy is used for video surveillance summarisation. In the Face Detection stage, a skin color based method using measurements derived from the color-space components of the keyframe is used to locate eye, mouth and face boundary. Subsequently, SURF algorithm is applied to extract the feature descriptors of interest point from the detected face region. These descriptors are then indexed using vocabulary tree. The integration of the above-mentioned methods that are all good in their results, have made our overall system robust and efficient. Therefore, good results have been obtained while testing in ChokePoint public dataset contains 48 video sequences with a total of 179 349 frames including 64 204 face images.
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