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Comparing models for gesture recognition of children's bullying behaviors

机译:儿童欺凌行为的手势识别比较模型

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We explored gesture recognition applied to the problem of classifying natural physical bullying behaviors by children. To capture natural bullying behavior data, we developed a humanoid robot that used hand-coded gesture recognition to identify basic physical bullying gestures and responded by explaining why the gestures were inappropriate. Children interacted with the robot by trying various bullying behaviors, thereby allowing us to collect a natural bullying behavior dataset for training the classifiers. We trained three different sequence classifiers using the collected data and compared their effectiveness at classifying different types of common physical bullying behaviors. Overall, Hidden Conditional Random Fields achieved the highest average F1 score (0.645) over all tested gesture classes.
机译:我们探索了手势识别应用于儿童对自然欺凌行为进行分类的问题。为了捕获自然的欺凌行为数据,我们开发了一个人形机器人,该机器人使用手手势手势识别来识别基本的物理欺凌手势,并通过解释为什么手势不合适的方式做出响应。孩子们通过尝试各种欺凌行为与机器人互动,从而使我们能够收集自然的欺凌行为数据集来训练分类器。我们使用收集的数据训练了三个不同的序列分类器,并比较了它们在分类不同类型的常见身体欺凌行为方面的有效性。总体而言,在所有测试的手势类别中,隐藏条件随机场均获得最高的平均F1分数(0.645)。

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