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A Novel Image Classification Approach via Dense-MobileNet Models

机译:通过Dense-Mobilenet模型进行新颖的图像分类方法

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As a lightweight deep neural network, MobileNet has fewer parameters and higher classification accuracy. In order to further reduce the number of network parameters and improve the classification accuracy, dense blocks that are proposed in DenseNets are introduced into MobileNet. In Dense-MobileNet models, convolution layers with the same size of input feature maps in MobileNet models are taken as dense blocks, and dense connections are carried out within the dense blocks. The new network structure can make full use of the output feature maps generated by the previous convolution layers in dense blocks, so as to generate a large number of feature maps with fewer convolution cores and repeatedly use the features. By setting a small growth rate, the network further reduces the parameters and the computation cost. Two Dense-MobileNet models, Dense1-MobileNet and Dense2-MobileNet, are designed. Experiments show that Dense2-MobileNet can achieve higher recognition accuracy than MobileNet, while only with fewer parameters and computation cost.
机译:作为轻量级深度神经网络,MobileNet的参数较少,分类准确性较高。为了进一步减少网络参数的数量并提高分类精度,将在语程中提出的密集块引入MobileNet中。在密集的MobileNet模型中,MobileNet模型中具有相同输入特征贴图尺寸的卷积层作为密集块,并且密集的连接在密集的块内进行。新的网络结构可以充分利用密集块中先前卷积图层生成的输出特征映射,以便生成具有较少卷积核心的大量特征映射,并反复使用该功能。通过设置小的增长率,网络进一步降低了参数和计算成本。设计了两种密集的Mobilenet型号,Dense1-Mobilenet和Dense2-Mobilenet。实验表明,Dense2-MobileNet可以比MobileNet实现更高的识别精度,同时仅具有更少的参数和计算成本。

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