基于改进YOLOv3的输电线路异物检测及芯片部署

Jing Li, Yuhu Nie, WenpengCui Cui, R. Liu, Zhe Zheng
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引用次数: 2

摘要

目标检测在各个领域的应用越来越广泛,当然也包括电力行业。而YOLOv3算法以其高性能和高效性成为目标检测领域中最受欢迎的算法之一。然而,传统的YOLOv3算法仍然过于笨重,无法部署在移动或嵌入式平台上。因此,本文提出了一种改进YOLOv3的方法,使其可以轻松地部署到嵌入式平台而不会损失性能。首先,替代YOLOv3的骨干,即Darknet53代替MobileNet, MobileNet已被证明是一个非常高效的轻量级网络框架。其次,YOLOv3的检测头中存在大量冗余,并且在推理过程中会花费大量时间,因此我们将检测头修剪为非常简单的结构。在我们自己的输电线路数据集上进行的各种实验验证了我们的方法具有最先进的性能,并且可以满足部署到移动平台的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power Transmission Line Foreign Object Detection based on Improved YOLOv3 and Deployed to the Chip
The application of object detection is becoming more and more widely in various fields, including the power industry, of course. And YOLOv3 is one of the most popular algorithms in the field of object detection owing to its high performance and efficiency. However, the conventional YOLOv3 algorithm is still too heavy to deploy on mobile or embedded platforms. Consequently, this paper proposes a method to improve the YOLOv3 thus it can be easily deployed to embedded platforms without losing performance. First, substitutes the backbone of YOLOv3, i.e. Darknet53 for MobileNet, which has been proven to be a very efficiency framework for lightweight network. Second, there are numerous redundancies in the detection heads of YOLOv3 and will take a lot of time in the inference process, so we prune the detection heads to a dead-simple structure. Various experiments on our own Power Transmission Line datasets verify our method has state-of-the-art performance while can meet the requirements for deployment to the mobile platforms.
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