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Robustness of Deep LSTM Networks in Freehand Gesture Recognition

机译:徒劳的手势识别深层LSTM网络的鲁棒性

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We present an analysis of the robustness of deep LSTM networks for freehand gesture recognition against temporal shifts of the performed gesture w.r.t. the "temporal receptive field". Such shifts inevitably occur when not only the gesture type but also its onset needs to be determined from sensor data, and it is imperative that recognizers be as invariant as possible to this effect which we term gesture onset variability. Based on a real-world hand gesture classification task we find that LSTM networks are very sensitive to this type of variability, which we confirm by creating a synthetic sequence classification task of similar dimensionality. Lastly, we show that including gesture onset variability in the training data by a simple data augmentation strategy leads to a high robustness against all tested effects, so we conclude that LSTM networks can be considered good candidates for real-time and real-world gesture recognition.
机译:我们对徒劳的手势识别的深层LSTM网络的鲁棒性分析,反对执行的手势的时间偏移w.r.t. “时间接收领域”。当不仅需要从传感器数据确定手势类型而且需要确定其发作时不可避免地发生这种偏移,并且识别员必须尽可能不变地实现这一效果,因此我们术语手势发挥变异性。基于真实世界的手势分类任务,我们发现LSTM网络对这种类型的可变性非常敏感,我们通过创建类似维度的合成序列分类任务来确认。最后,我们表明,通过简单的数据增强策略,培训数据中包括手势发作可变性导致对所有测试效果的高稳健性,因此我们得出结论,LSTM网络可以被视为实时和真实世界的姿态识别的好候选人。

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