CNN图像分类模型的优化

Meriam Dhouibi, A. K. Ben Salem, S. Ben Saoud
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引用次数: 2

摘要

卷积神经网络(cnn)在一些领域特别精确,尤其是计算机视觉,其中图像分类是研究最多和商业化应用的领域之一。在嵌入式设备上部署这些模型需要高吞吐量和低延迟,即使资源和能源预算有限。CNN模型结构的复杂性意味着非常高的计算成本。在本文中,我们正在寻找确定最优拓扑(层数和每层神经元的数量),使我们能够减少模型并将其部署在嵌入式平台中。我们提出了一种基于生长方法的小型CNN架构,该架构在CIFAR-10上以更少的参数实现了81.50%的高水平准确率。为了进一步优化,我们使用了剪枝技术,结果表明,在更优的架构下,我们获得了82.43%的准确率,参数数量减少了15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of CNN model for image classification
Convolutional Neural Networks (CNNs) are particularly precise in several fields, especially computer vision where image classification is one of the most researched and commercialized application. Deploying these models on embedded devices requires high throughput and low latency even with limited resources and energy budgets. The complexity of the architecture of CNN models implies a very high computation cost. We are looking in this paper for determining the optimal topology (the number of layers and the number of neurons per layer) that allows us to reduce the model and deploy it in embedded platforms. We have proposed a small CNN architecture that achieves high level accuracy 81.50% on CIFAR-10 with fewer parameters based on the growing approach. For more optimization we used the pruning technique and the results showed that with more optimal architecture we obtained 82.43% accuracy and 15% reduction of the number of parameters.
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