Research on YOLOv3 model compression strategy for UAV deployment

Fei Xu , Litao Huang , Xiaoyang Gao , Tingting Yu , Leyi Zhang
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Abstract

UAVs are often limited by limited resources when performing flight tasks, especially the contradiction between storage resources and computing resources when the huge YOLOv3 model is deployed on the edge UAVs. In this paper, we tend to compress YOLOv3 model in different aspects to achieve load availability at the edge. In this paper, deep separable convolution is introduced to reduce the computation of the model. Then, PR regularization term is used as the regularization term of sparse training to better distinguish scaling factors, and then the hybrid pruning combining channel pruning and layer pruning is carried out on the model according to scaling factors, in order to reduce the number of model parameters and the amount of calculation. Finally, since the training data is a 32-bit floating point number, DoReFa-Net quantization method is used to quantify the model, so as to compress the storage capacity of the model. The experimental results show that the compression scheme proposed in this paper can effectively reduce the number of parameters by 97.5 % and the calculation amount by 82.3 %, and can maintain the original detection efficiency of UAVs.

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无人机部署中YOLOv3模型压缩策略研究
无人机在执行飞行任务时往往受到有限资源的限制,特别是在边缘无人机上部署庞大的YOLOv3模型时,存储资源与计算资源之间的矛盾尤为突出。在本文中,我们倾向于对YOLOv3模型进行不同方面的压缩,以实现边缘的负载可用性。本文引入深度可分离卷积来减少模型的计算量。然后,利用PR正则化项作为稀疏训练的正则化项,更好地区分尺度因子,然后根据尺度因子对模型进行通道剪枝和层剪枝相结合的混合剪枝,以减少模型参数的数量和计算量。最后,由于训练数据为32位浮点数,采用DoReFa-Net量化方法对模型进行量化,从而压缩模型的存储容量。实验结果表明,本文提出的压缩方案可有效减少97.5%的参数个数和82.3%的计算量,并能保持无人机原有的检测效率。
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