基于多尺度扩展轻量级网络模型的图像识别

Yewei Shi, Xiao Yao, Ruixuan Chen, Lili Yuan, Ning Xu, Xiaofeng Liu
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引用次数: 1

摘要

轻量化模型主要应用于保持性能和减少参数量,将复杂的实验室模型简化到移动嵌入式设备。提出了一种用于图像识别的多尺度扩展轻量级网络模型。ShuffleNet是一种经典的轻量级神经网络,它提出通道洗牌来帮助组间在组卷积过程中交换信息。然而,ShuffleNet并没有充分利用洗牌后的每组信息。由于通道shuffle保证了每一组都包含其他组的信息,因此本文提出对分组数据进行不同展开卷积处理,在不增加参数的情况下获得不同感受野的多尺度信息。同时,我们对网络模型进行了改进,减少了扩张卷积带来的网格伪影。在CIFAR-10和EMNIST上的实验表明,改进算法的性能优于传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image recognition based on multi-scale dilated lightweight network model
Lightweight model is mainly applied to maintain performance and reduce the amount of parameters, simplifying the complex laboratory model to the mobile embedded device. We present a multi-scale dilated lightweight network model for image recognition. ShuffleNet is an classical lightweight neural network that proposes channel shuffle to help exchange information between groups during group convolution. However, ShuffleNet does not make full use of each group of information after channel shuffle. Since channel shuffle guarantees that each group contains the information of other groups, in this paper, we propose to process the grouping data with different dilated convolution, and obtain the multi-scale information of different receptive fields without increasing parameters. At the same time, we make an improvement on the network model to reduce the gridding artifacts caused by dilated convolution. Experiments on CIFAR-10 and EMNIST show that the improved algorithm performs better than traditional method.
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