优化精度-复杂度权衡的有效剩余网络压缩

A. Luo, Beibei Huang, Yuan Li, Chang Lu, Rui Wang, Zunkai Huang, Yicong Zhou
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引用次数: 1

摘要

基于深度学习技术的图像识别算法在军事、医疗、工业和许多其他应用中发挥了重要作用。然而,大多数现有的深度神经网络消耗了过多的计算资源,这对于广泛使用的边缘设备(如手机)来说是无法承受的。在本文中,我们提出了一种基于ResNet-50的轻量级网络CResNet,将有效的信道修剪与深度分解相结合。消融实验基于Animals-10数据集进行,以测量所采用的每种技术的影响。以较低的精度为代价,可以获得较好的模型参数压缩性能。最终,CResNet得到4.08 M个参数,仅为原始ResNet-50参数大小的五分之一,充分降低了资源消耗。通过我们轻量级的CResNet,估计在Animals-10上的Top-1分类准确率约为90.2%。与ResNet-50和许多现有的轻量级网络相比,这项工作通过优化计算效率,在分割精度和计算复杂性之间实现了更好的权衡,从而获得了较小的模型尺寸和不错的精度。
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Efficient Residual Network Compression for Optimizing the Accuracy-Complexity Tradeoff
Image recognition algorithms based on deep learning techniques have played an important role in the military, medical, industrial, and many other applications. However, most existing deep neural networks consume excessive computational resources which are unaffordable for the widely used edge devices, such as mobile phones. In this paper, we propose a lightweight network CResNet based on ResNet-50 by combining efficient channel pruning with depthwise decomposition. Ablation experiments are carried out based on the Animals-10 dataset for measuring the impact of each adopted technique. Great compression performance of the model parameters can be achieved at the price of slightly lower accuracy. Eventually, CResNet results in 4.08 M parameters, which is only one-fifth of the parameter size of the original ResNet-50, sufficiently reducing resource consumption. Approximately 90.2% Top-1 classification accuracy estimated on Animals-10 can be achieved by our lightweight CResNet. Compared to ResNet-50 and many existing lightweight networks, this work achieves a better tradeoff between segmentation accuracy and computing complexity by optimizing the computational efficiency, resulting in a small model size and a decent accuracy.
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