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Partially transferred convolution neural network with cross-layer inheriting for posture recognition from top-view depth camera

机译:具有跨层继承功能的部分转移卷积神经网络用于顶视深度相机的姿势识别

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This paper proposes a new method for human posture recognition from top-view depth maps on small training datasets. There are two strategies developed to leverage the capability of convolution neural network (CNN) in mining the fundamental and generic features for recognition. First, the early layers of CNN should serve the function to extract feature without specific representation. By applying the concept of transfer learning, the first few layers from the pre-learned VGG model can be used directly without further fine-tuning. To alleviate the computational loading and to increase the accuracy of our partially transferred model, a cross-layer inheriting feature fusion (CLIFF) is proposed by using the information from the early layer in fully connected layer without further processing. The experimental result shows that combination of partial transferred model and CLIFF can provide better performance than VGG16 [1] model with re-trained FC layer and other hand-crafted features like RBPs [2].
机译:本文提出了一种从小型训练数据集上的顶视深度图识别人体姿势的新方法。已开发出两种策略来利用卷积神经网络(CNN)的能力来挖掘识别的基本特征和通用特征。首先,CNN的早期层应具有提取特征而无需特定表示的功能。通过应用转移学习的概念,可以直接使用预先学习的VGG模型的前几层,而无需进行进一步的微调。为了减轻计算负荷并提高部分转移模型的准确性,提出了一种跨层继承特征融合(CLIFF)的方法,该方法利用来自完全连接层中早期层的信息,而无需进行进一步处理。实验结果表明,部分传输模型和CLIFF的组合比具有重新训练的FC层和其他手工制作的功能(如RBP)的VGG16 [1]模型可提供更好的性能[2]。

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