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Fusion of Deep Learning Descriptors for Gesture Recognition

机译:融合深度学习描述符的手势识别

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In this paper, we propose an approach for dynamic hand gesture recognition, which exploits depth and skeleton joint data captured by Kinect™ sensor. Also, we select the most relevant points in the hand trajectory with our proposed method to extract keyframes, reducing the processing time in a video. In addition, this approach combines pose and motion information of a dynamic hand gesture, taking advantage of the transfer learning property of CNNs. First, we use the optical flow method to generate a flow image for each keyframe, next we extract the pose and motion information using two pre-trained CNNs: a CNN-flow for flow-images and a CNN-pose for depth-images. Finally, we analyze different schemes to fusion both informations in order to achieve the best method. The proposed approach was evaluated in different datasets, achieving promising results compared to other methods, outperforming state-of-the-art methods.
机译:在本文中,我们提出了一种动态手势识别方法,该方法利用了Kinect™传感器捕获的深度和骨骼关节数据。此外,我们使用我们提出的方法选择手部轨迹中最相关的点来提取关键帧,从而减少了视频中的处理时间。另外,该方法利用了CNN的传递学习特性,结合了动态手势的姿势和运动信息。首先,我们使用光流方法为每个关键帧生成一个流图像,然后使用两个预先训练的CNN提取姿势和运动信息:用于流图像的CNN流和用于深度图像的CNN姿势。最后,我们分析了将两种信息融合的不同方案,以实现最佳方法。在不同的数据集中对提出的方法进行了评估,与其他方法相比,该方法取得了可喜的结果,优于最新方法。

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