Hand Gesture Recognition from RGB-D Data using 2D and 3D Convolutional Neural Networks: a comparative study

M. Kurmanji, F. Ghaderi
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引用次数: 3

Abstract

Despite considerable enhances in recognizing hand gestures from still images, there are still many challenges in the classification of hand gestures in videos. The latter comes with more challenges, including higher computational complexity and arduous task of representing temporal features. Hand movement dynamics, represented by temporal features, have to be extracted by analyzing the total frames of a video. So far, both 2D and 3D convolutional neural networks have been used to manipulate the temporal dynamics of the video frames. 3D CNNs can extract the changes in the consecutive frames and tend to be more suitable for the video classification task, however, they usually need more time. On the other hand, by using techniques like tiling it is possible to aggregate all the frames in a single matrix and preserve the temporal and spatial features. This way, using 2D CNNs, which are inherently simpler than 3D CNNs can be used to classify the video instances. In this paper, we compared the application of 2D and 3D CNNs for representing temporal features and classifying hand gesture sequences. Additionally, providing a two-stage two-stream architecture, we efficiently combined color and depth modalities and 2D and 3D CNN predictions. The effect of different types of augmentation techniques is also investigated. Our results confirm that appropriate usage of 2D CNNs outperforms a 3D CNN implementation in this task.
基于二维和三维卷积神经网络的RGB-D手势识别的比较研究
尽管在识别静止图像中的手势方面有了很大的提高,但在视频中的手势分类方面仍然存在许多挑战。后者带来了更多的挑战,包括更高的计算复杂度和表示时间特征的艰巨任务。用时间特征表示的手部运动动态,必须通过分析视频的总帧来提取。到目前为止,2D和3D卷积神经网络都被用来操纵视频帧的时间动态。3D cnn可以提取连续帧的变化,更适合于视频分类任务,但通常需要更多的时间。另一方面,通过使用像平铺这样的技术,可以将所有帧聚合在一个矩阵中,并保留时间和空间特征。这样,使用2D cnn(本质上比3D cnn简单)就可以对视频实例进行分类。在本文中,我们比较了2D和3D cnn在表示时间特征和分类手势序列方面的应用。此外,提供两阶段两流架构,我们有效地结合了颜色和深度模式以及2D和3D CNN预测。研究了不同类型的增强技术的效果。我们的结果证实,在该任务中适当使用2D CNN优于3D CNN实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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