联合稀疏度提升和冗余缩减的神经网络压缩

T. M. Khan, S. Naqvi, A. Robles-Kelly, E. Meijering
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引用次数: 5

摘要

近年来,卷积神经网络模型的压缩一直以修剪方法为主。以前的一类工作只关注于修剪不重要的过滤器以实现网络压缩。另一个重要的方向是稀疏性诱导约束的设计,这也在孤立的情况下进行了探索。本文提出了一种新的基于复合约束的训练方案,该方案通过稀疏性提升来去除冗余滤波器并将其对整体网络学习的影响降至最低。此外,与之前使用基于伪规范的稀疏性诱导约束的工作相反,我们在我们的框架中提出了基于梯度计数的稀疏方案。我们在几个逐像素分割基准测试上的测试表明,在测试阶段,神经元的数量和网络的内存占用显著减少,而不会影响性能。利用MobileNetV3和UNet这两种著名的体系结构对所提出的方案进行了测试。我们的网络压缩方法不仅减少了参数,而且与已经优化的架构MobileNetv3相比,性能得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Compression by Joint Sparsity Promotion and Redundancy Reduction
Compression of convolutional neural network models has recently been dominated by pruning approaches. A class of previous works focuses solely on pruning the unimportant filters to achieve network compression. Another important direction is the design of sparsity-inducing constraints which has also been explored in isolation. This paper presents a novel training scheme based on composite constraints that prune redundant filters and minimize their effect on overall network learning via sparsity promotion. Also, as opposed to prior works that employ pseudo-norm-based sparsity-inducing constraints, we propose a sparse scheme based on gradient counting in our framework. Our tests on several pixel-wise segmentation benchmarks show that the number of neurons and the memory footprint of networks in the test phase are significantly reduced without affecting performance. MobileNetV3 and UNet, two well-known architectures, are used to test the proposed scheme. Our network compression method not only results in reduced parameters but also achieves improved performance compared to MobileNetv3, which is an already optimized architecture.
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