基于改进型YOLOv4-Tiny的功率元件决策支持系统

Sci. Program. Pub Date : 2021-12-28 DOI:10.1155/2021/4447271
Yangyang Tian, Wandeng Mao, Shaoguang Yuan, Diming Wan, Yuan-Wei Chen
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引用次数: 1

摘要

传统的图像目标检测算法在电力巡检中不能有效定位电力部件,在存在一定干扰的场景中识别精度较低。在本研究中,我们提出了一种基于改进的YOLOv4-tiny模型的数据驱动功率检测方法,将ResNet-D模块和调整后的Res-CBAM结合到现有YOLOv4-tiny模块的骨干网中。我们将YOLOv4-tiny骨干网中的cspoanet模块替换为ResNet-D模块,以降低模型所需的FLOPS。同时,结合调整后的Res-CBAM作为辅助分类器,将其特征融合方式替换为通道中的叠加。最后,利用5种不同接受尺度的特征进行预测,并通过合并预测框优化结果的显示。在实验中,对电力巡检线上采集的57134幅图像进行处理和标记,对默认锚盒进行重新聚类,并通过3459幅图像的视频和验证集对模型的速度和准确性进行评估。处理从电力巡检项目中收集的多张图片和视频,对默认锚盒进行重新聚类,并测试模型的速度和准确性。结果表明,与原始的YOLOv4-tiny模型相比,我们的方法在遮挡和复杂光照条件下的目标定位精度得到了保证,检测速度提高了13%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。
A Decision Support System for Power Components Based on Improved YOLOv4-Tiny
The traditional image object detection algorithm applied in power inspection cannot effectively position power components, and the accuracy of recognition is low in scenes with some interference. In this research, we proposed a data-driven power detection method based on the improved YOLOv4-tiny model, which combined the ResNet-D module and the adjusted Res-CBAM to the backbone network of the existing YOLOv4-tiny module. We replaced the CSPOSANet module in the YOLOv4-tiny backbone network with the ResNet-D module to reduce the FLOPS required by the model. At the same time, the adjusted Res-CBAM whose feature fusion ways were replaced with stacking in the channels was combined as an auxiliary classifier. Finally, the features of five different receptive scales were used for prediction, and the display of the results was optimized by merging the prediction boxes. In the experiment, 57134 images collected on the power inspection line were processed and labeled, and the default anchor boxes were re-clustered, and the speed and accuracy of the model were evaluated by video and validation set of 3459 images. Processing multiple pictures and videos collected from the power inspection projects, we re-clustered the default anchor box and tested the speed and accuracy of the model. The results show that compared with the original YOLOv4-tiny model, the accuracy of our method that can position objects under occlusion and complex lighting conditions is guaranteed while the detection speed is about 13% faster.
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