Wide Residual Lightweight Network Using Simplified Adaptive Parameter Rectifying Units

Yufeng Ling, Jian Lu, Jian Dong, Tianjian Li, Zhiming Cai
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Abstract

Aiming at the problems of complex network structure, long training time and insufficient feature learning ability for deep learning, a lightweight network structure is designed. A kind of new activation function (namely rectifying linear unit) whose adaptive parameter is achieved by simplified training is proposed. The activation function is inserted into convolutional neural network to improve the feature learning ability by making each input signal has its own set of nonlinear transformation. Compared with traditional convolutional neural network, the number of network parameters is reduced by 51.61%, while the structure remains the ability of feature extraction before simplification. The proposed network structure can greatly reduce the network training time and improve the target recognition speed. The experiments on CIFAR-10 and CIFAR-100 datasets respectively show that the accuracies reach 95.26% and 76.54%, which are 1.67% and 3.76% higher than those of the traditional convolutional neural network.
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采用简化自适应参数整流单元的宽剩余轻量级网络
针对深度学习网络结构复杂、训练时间长、特征学习能力不足等问题,设计了一种轻量级网络结构。提出了一种新的激活函数(即整流线性单元),其自适应参数通过简化训练得到。将激活函数插入到卷积神经网络中,使每个输入信号都有自己的一组非线性变换,从而提高特征学习能力。与传统卷积神经网络相比,网络参数数量减少了51.61%,而结构保持了简化前的特征提取能力。所提出的网络结构可以大大减少网络训练时间,提高目标识别速度。在CIFAR-10和CIFAR-100数据集上的实验表明,准确率分别达到95.26%和76.54%,分别比传统卷积神经网络提高了1.67%和3.76%。
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