面向移动平台的多分支卷积神经网络

Kangyu Gao, Qingyong Zhang, Luyang Yu, Lutong Huo
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引用次数: 0

摘要

针对低计算能力要求,提出了一种新型的轻量级卷积神经网络mmrinet。该模型采用了深度可分离卷积、通道修剪和ELU激活等策略。在获得较高精度的同时,大大减少了计算量。MRINet可以在手机和其他移动平台上完成培训过程和应用。通过集成到相应的应用程序中,可以解决包括自我药疗在内的许多实际问题。通过在ISIC数据集上进行训练,与MobileNet相比,我们的训练速度提高了23%,准确率提高了3.3%。
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A Muti-branch Convolutional Netural Network for Mobile Platform
We proposed a new type of light-weight convolutional neural network MRINet for low computing power requirements. This model is applied with strategies including depthwise separable convolution, Channel pruning and ELU activation. It greatly reduces the amount of calculation while getting high accuracy. MRINet can complete the training process and application on mobile phones and other mobile platforms. By integrating into the corresponding application, which can solve many real problems including self-medication. By training on the ISIC dataset, as compared to MobileNet, we improved training speed by 23%, while accuracy is increased 3.3%.
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