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Dynamic Hand Gesture Recognition Based on Short-Term Sampling Neural Networks

机译:基于短期采样神经网络的动态手势识别

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摘要

Hand gestures are a natural way for human-robot interaction.Vision based dynamic hand gesture recognition has become a hot research topic due to its various applications.This paper presents a novel deep learning network for hand gesture recognition.The network integrates several well-proved modules together to learn both short-term and long-term features from video inputs and meanwhile avoid intensive computation.To learn short-term features,each video input is segmented into a fixed number of frame groups.A frame is randomly selected from each group and represented as an RGB image as well as an optical flow snapshot.These two entities are fused and fed into a convolutional neural network(Conv Net)for feature extraction.The Conv Nets for all groups share parameters.To learn longterm features,outputs from all Conv Nets are fed into a long short-term memory(LSTM)network,by which a final classification result is predicted.The new model has been tested with two popular hand gesture datasets,namely the Jester dataset and Nvidia dataset.Comparing with other models,our model produced very competitive results.The robustness of the new model has also been proved with an augmented dataset with enhanced diversity of hand gestures.
机译:手势是人机交互的自然方式。基于动态手势识别已经成为它的热门研究主题,因为它的各种应用。这篇论文提出了一种用于手势识别的新型深度学习网络。网络集成了几种熟练的一起模块以了解视频输入的短期和长期特征,同时避免深入计算。要学习短期功能,每个视频输入都被分段为固定数量的帧组。帧是从每个组中随机选择的。并表示为RGB图像以及光学流快照。这些实体融合并送入卷积神经网络(CONV NET)以进行特征提取。对于所有组的CONV网共享参数。要学习Longterm功能,从所有CONV网都被送入了一个长期的短期内存(LSTM)网络,通过预测最终分类结果。新模型已经用两个流行的手势数据集进行了测试S,即Jester DataSet和NVIDIA DataSet.com与其他模型相比,我们的模型产生了非常有竞争力的结果。还有一个具有增强的手势多样性的增强数据集的新模型的鲁棒性。

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