深度神经网络优化中的滤波剪枝技术综述

Uday Kulkarni, Sitanshu S Hallad, A. Patil, Tanvi Bhujannavar, Satwik Kulkarni, S. Meena
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引用次数: 1

摘要

深度神经网络(dnn)已成为计算机视觉和人工智能领域发展迅速的重要工具。由于这些算法被广泛用于图像分类,它们必然存在一些问题,这就需要对DNN模型进行优化。由于计算复杂性、参数数量和模型大小,需要进行优化。修剪技术已经被用来缓解dnn中的这个问题,其中一种技术是过滤器修剪。已经提出了大量的过滤器修剪方法,每一种方法都基于特定的子目标。在本文中,我们旨在以一种概括的方式表示不同类型的修剪方法,并总结出一种最有效的修剪模型交付方法。在一个通用的数据集和计算系统环境中对该方法进行了试验,得出了结论。
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A Survey on Filter Pruning Techniques for Optimization of Deep Neural Networks
Deep Neural Networks (DNNs) have been an important and fast-developing tool used for computer vision, and artificial intelligence. Since these algorithms are widely used for image classification, they are bound to a few issues, creating a need for the DNN models to be optimized. The need for optimization is created due to computational complexity, the number of parameters and model size. Pruning techniques have been employed to mitigate this issue in DNNs, one of these techniques is Filter pruning. There are huge numbers of methods under Filter pruning that have been proposed and each one of them is based on specific sub-objectives. In this paper, we aim to represent different types of pruning methods in a summarized way and conclude on a method that is most efficient in delivering pruned model. The conclusion is stated after trying the methods in a common environment of data set and computational system.
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