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Synthetic Training of Deep CNN for 3D Hand Gesture Identification

机译:深度CNN的3D手势识别综合训练

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In this paper, we present some experiments and investigations on a synthetically-trained neural network for the 3D hand gesture identification problem. The training process of a deep-learning neural network typically requires a large amount of training data to converge to a valid recognition model. However, in practice, it is difficult to obtain a large set of tagged real-data for the training purposes. In this paper, we investigate the plausibility of combining a large set of computer-generated 3D hand images with few real-camera images to form the training data set for the 3D hand gesture recognition applications. It is shown that by adding 0.09% of real images to the synthetic training data set, the recognition accuracy are raised from 37.5% to 77.08% for the problem of identifying 24 classes of hand gestures of an unknown user whose hand was not used in the training data set. In this paper, we have shown that the effect of the few real images to the trained CNN models mainly falls upon the fully-connected layers.
机译:在本文中,我们提出了针对3D手势识别问题的经过综合训练的神经网络的一些实验和研究。深度学习神经网络的训练过程通常需要大量的训练数据才能收敛到有效的识别模型。但是,实际上,为了训练目的,很难获得大量的带标签的真实数据。在本文中,我们研究了将大量计算机生成的3D手图像与少量真实相机图像组合在一起以形成3D手势识别应用程序的训练数据集的可行性。结果表明,对于识别未知用户的24种手势的问题,通过将0.09%的真实图像添加到合成训练数据集,识别精度从37.5%提高到77.08%。训练数据集中未使用手。在本文中,我们已经表明,少数实际图像对训练后的CNN模型的影响主要落在完全连接的层上。

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