Robust Compression Technique for YOLOv3 on Real-Time Vehicle Detection

Nattanon Krittayanawach, P. Vateekul
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引用次数: 4

Abstract

For vehicle detection, YOLOv3 has shown promising accuracy. Since the number of parameters in this network can be more than ten million parameters, it cannot be fit into a commodity camera. In this paper, we propose a compression mechanism designed specifically for YOLOv 3's network by removing unnecessary filters. Since YOLOv3 composes of two network components: backbone and pyramid networks, we propose a robust pruning mechanism to prune filters of each network separately. This can help to avoid over-pruning the network in some part of the model making our model more robust. There are two main pruning criteria investigated: Average Percentage of Zero (APoZ) and Sum Magnitude Weight. The experiment was conducted on UA-DETRAC. The results show that our compression mechanism with APoZ criterion can reduce more than 90% of the network size, while the accuracy is even higher than the full model for about 2%.
实时车辆检测中YOLOv3的鲁棒压缩技术
对于车辆检测,YOLOv3显示出了良好的准确性。由于该网络的参数数量可以超过1000万个,因此无法适应于普通摄像机。在本文中,我们提出了一种专门为YOLOv 3的网络设计的压缩机制,通过去除不必要的过滤器。由于YOLOv3由两个网络组件组成:骨干网络和金字塔网络,我们提出了一种鲁棒的修剪机制来分别修剪每个网络的过滤器。这可以帮助避免在模型的某些部分过度修剪网络,使我们的模型更健壮。研究了两个主要的修剪标准:平均零百分比(APoZ)和总和量级权重。实验在UA-DETRAC上进行。结果表明,采用APoZ准则的压缩机制可以减少90%以上的网络大小,而精度甚至比完整模型高2%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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