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首页> 外文期刊>IEEE Transactions on Robotics >An adaptive visual attentive tracker for human communicational behaviors using HMM-based TD learning with new State distinction capability
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An adaptive visual attentive tracker for human communicational behaviors using HMM-based TD learning with new State distinction capability

机译:使用具有新状态区分功能的基于HMM的TD学习,用于人类交流行为的自适应视觉专心跟踪器

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To develop a nonverbal communication channel between an operator and a system, we built a tracking system called the Adaptive Visual Attentive Tracker (AVAT) to track and zoom in to the operator's behavioral sequence which represents his/her intention. In our system, hidden Markov models (HMMs) first roughly model the gesture pattern. Then, the state transition probabilities in HMMs are used to assign as the rewards in temporal difference (TD) learning. Later, the TD learning method is utilized to adjust the action model of the tracker for its situated behaviors in the tracking task. Identification of the hand sign gesture context through wavelet analysis autonomously provides a reward value for optimizing AVAT's action patterns. Experimental results of tracking the operator's hand sign action sequences during her natural walking motion with higher accuracy are shown which demonstrate the effectiveness of the proposed HMM-based TD learning algorithm of AVAT. During TD learning experiments, the exploring randomly chosen actions sometimes exceed the predefined state area, and thus involuntarily enlarge the domain of states. We describe a method utilizing HMMs with continuous observation distribution to detect whether the state would be split to make a new state. The generation of new states brings the ability of enlarging the predefined area of states.
机译:为了开发操作员与系统之间的非语言交流渠道,我们构建了一个称为自适应视觉注意力跟踪器(AVAT)的跟踪系统,用于跟踪和放大代表操作员意图的操作序列。在我们的系统中,隐马尔可夫模型(HMM)首先大致模拟手势模式。然后,HMM中的状态转换概率用于指定为时差(TD)学习中的奖励。后来,TD学习方法被用于针对跟踪器在跟踪任务中的行为来调整跟踪器的动作模型。通过小波分析对手势姿势上下文的识别自动提供了用于优化AVAT动作模式的奖励值。实验结果表明,以较高的精度跟踪操作员在其自然步行运动过程中的手势动作序列,证明了所提出的基于HMM的AVAT TD学习算法的有效性。在TD学习实验中,探索随机选择的动作有时会超出预定义的状态范围,因此会不由自主地扩大状态范围。我们描述了一种利用具有连续观察分布的HMM来检测状态是否将被拆分为新状态的方法。新状态的产生带来了扩大状态的预定义区域的能力。

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