卷积神经网络简化的冗余特征检测与去除

Shih-Chang Hsia, Yuedong Yang
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引用次数: 0

摘要

随着gpu的快速发展,卷积神经网络(CNN)的AI模型也取得了很大的进步。研究人员逐渐向更深更广的方向发展模型,希望有更好的准确性。虽然这确实是有效的,但也会导致模型参数过多,计算时间较长。在这样一个复杂的模型中,有些操作对输出结果没有影响。在本文中,我们使用了几种方法从CNN模型中去除不太重要的操作。该算法可以在保持精度的同时减少参数和计算量。
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Redundancy Features Detection and Removal for Simplification of Convolutional Neural Networks
Since the rapid development of GPUs, the AI model of the convolutional neural network (CNN) has also made great progress. Researchers have gradually developed the model in a deeper and wider direction, hoping to have better accuracy. Although this is indeed effective, it also causes the model has too many parameters, and it takes a lot of time to calculate. In such a complex model, some operations are no effect on the output results. In this paper, we use several methods to remove the less important operations from the CNN model. This algorithm can reduce the amount of parameters and calculations while maintaining accuracy.
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