实时姿态分类用于驾驶员监控

Xia Liu, Youding Zhu, K. Fujimura
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引用次数: 20

摘要

驾驶员姿态估计是未来驾驶辅助系统的关键组成部分之一,因为驾驶员姿态包含了有关其驾驶状态的许多信息,如注意力和疲劳程度。为了实现这一目标,提出了一个系统,可以在真实的照明条件下实时检测驾驶员面部的姿势。这项工作的目标是使训练阶段自动化,从而尽可能地消除输入用户信息的过程。提出了驾驶员姿态估计的两种学习方法。第一种方法使用Kohonen竞争网络的无监督学习,而第二种方法使用基于外观的方法探索SVR。
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Real-time pose classification for driver monitoring
Driver pose estimation is one of the key components for future driver assistance systems since driver pose contains much information about his driving condition such as attention and fatigue levels. To this goal, a system is presented that detects the pose of the driver face in real time under realistic lighting conditions. The goal of the work is to automate the training phase, thereby eliminating the process of entering user information as much as possible. Two learning methods are presented for driver pose estimation. The first method uses unsupervised learning with Kohonen competitive networks, while the second method explores SVR with an appearance-based method.
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