A Time-Distributed Convolutional Long Short-Term Memory for Hand Gesture Recognition

Mehdi Fatan Serj, Mersad Asgari, Bahram Lavi, Domènec Puig Valls, Miguel Angel Garcia
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引用次数: 2

Abstract

The applications of human-robot interaction have recently raised many research interests, and hand gesture recognition to recognize human gestures in video-based problems is one of them. In the recent decade, deep learning techniques have proven their promising performance in the fields of pattern recognition and computer vision. This study presents an improved version of the Convolutional Neural Network in combination with Long Short-Term Memory for hand gesture recognition. The proposed structure is fully considered in a time-distributed framework to effectively train the network of the frame-level classification. Hence, employing a time-distributed framework, a TD-CNN-LSTM method is developed. Finally, the efficacy of our proposed architecture is evaluated on the recent publicly available GRIT corpus dataset, and we also show that our method outperforms the recent state of the art CNN-LSTM method.
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一种用于手势识别的时间分布卷积长短期记忆
人机交互的应用近年来引起了许多研究的兴趣,手势识别在基于视频的问题中识别人类手势就是其中之一。近十年来,深度学习技术在模式识别和计算机视觉领域已经证明了其有前景的表现。本研究提出了一种改进的卷积神经网络与长短期记忆相结合的手势识别方法。在时间分布的框架中充分考虑了该结构,有效地训练了框架级分类网络。因此,采用时间分布框架,提出了一种TD-CNN-LSTM方法。最后,我们在最近公开可用的GRIT语料库数据集上评估了我们提出的架构的有效性,并且我们还表明我们的方法优于最新的CNN-LSTM方法。
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