R-MnasNet:用于计算机视觉的简化MnasNet

Prasham Shah, M. El-Sharkawy
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引用次数: 3

摘要

在深度学习中,卷积神经网络(cnn)被广泛用于计算机视觉应用。随着新技术的出现,cnn不可避免地需要降低计算成本。它已成为决定其能力的关键因素。当部署在嵌入式系统上时,CNN模型必须体积小巧,工作效率高。为了实现这一目标,研究人员发明了新的算法,使cnn重量轻,但足够精确,可以用于物体检测等应用。在本文中,我们试图通过修改体系结构来做同样的事情,使其在模型大小和准确性之间进行公平的权衡。引入了一种新的架构R-MnasNet (Reduced MnasNet),其模型大小为3 MB。它在CIFAR-10[4]上进行训练,验证准确率为91.13%。而基线架构MnasNet[1]在使用CIFAR-10数据集训练时,模型大小为12.7 MB,验证准确率为80.8%。R-MnasNet可以在资源受限的设备上使用。它可以部署在嵌入式系统的视觉应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
R-MnasNet: Reduced MnasNet for Computer Vision
In Deep Learning, Convolutional Neural Networks (CNNs) are widely used for Computer Vision applications. With the advent of new technology, there is an inevitable necessity for CNNs to be computationally less expensive. It has become a key factor in determining its competence. CNN models must be compact in size and work efficiently when deployed on embedded systems. In order to achieve this goal, researchers have invented new algorithms which make CNNs lightweight yet accurate enough to be used for applications like object detection. In this paper, we have tried to do the same by modifying an architecture to make it compact with a fair trade-off between model size and accuracy. A new architecture, R-MnasNet (Reduced MnasNet), has been introduced which has a model size of 3 MB. It is trained on CIFAR-10 [4] and has a validation accuracy of 91.13%. Whereas the baseline architecture, MnasNet [1], has a model size of 12.7 MB with a validation accuracy of 80.8% when trained with CIFAR-10 dataset. R-MnasNet can be used on resource-constrained devices. It can be deployed on embedded systems for vision applications.
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