无约束环境下的人脸检测和跟踪系统

Augusto Destrero, F. Odone, A. Verri
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引用次数: 7

摘要

我们描述了一个可训练的人脸检测和跟踪系统。该系统的结构基于多个线索,这些线索会尽快丢弃非面部区域:我们将运动、皮肤和面部检测结合起来。后者是我们系统的核心,由基于自动特征选择过程输出的小SVM分类器组成。我们的特征选择完全是数据驱动的,允许我们从相对较小的数据集中获得强大的描述。最后,人脸区域的卡尔曼跟踪随着时间的推移优化检测结果。我们对人脸检测模块进行了实验分析,并结合整个系统对进入场景的人数进行了统计。
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A system for face detection and tracking in unconstrained environments
We describe a trainable system for face detection and tracking. The structure of the system is based on multiple cues that discard non face areas as soon as possible: we combine motion, skin, and face detection. The latter is the core of our system and consists of a hierarchy of small SVM classifiers built on the output of an automatic feature selection procedure. Our feature selection is entirely data-driven and allows us to obtain powerful descriptions from a relatively small set of data. Finally, a Kalman tracking on the face region optimizes detection results over time. We present an experimental analysis of the face detection module and results obtained with the whole system on the specific task of counting people entering the scene.
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