基于改进型 RESA 的发电厂车道检测系统

Dan Zhang, Guolv Zhu, Shibo Lu, Chang Li
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引用次数: 0

摘要

车道检测是电厂环境巡检工作的重要任务之一。为了提高车道的检测精度,本文以车道检测模型 RESA 为基准,提出了一种张量融合结构 RCFPN。在 RESA 模型的骨干特征提取网络之后,加入 RCFPN,构建改进网络。实验结果证明,RCFPN 有助于提高 RESA 的精度。RCFPN 不仅可以提高 RESA 模型的精度,还可以灵活地集成到其他车道检测模型和其他目标检测模型中。CULANE 的平均检测精度从 75.31% 提高到 77.76%。在 Tusimple 数据集中的 F1 分数、精确度、FP、FN 均优于原始模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lane Detection Based on Improved RESA in Power Plant
Lane detection is one of the important tasks of the environmental patrol work in power plant. In order to improve the detection accuracy of lane, this paper proposes a tensor fusion structure RCFPN, and takes the lane detection model RESA as baseline. After the backbone feature extraction network of RESA model, RCFPN is added to construct the improved network. The experimental results prove that RCFPN has an effect on improving RESA's precision. RCFPN can not only improve the precision of RESA model, but also can be flexibly integrated into other lane detection models and other target detection models. The average detection accuracy of CULANE was increased from 75.31% to 77.76%. The F1 score, accurary, FP, FN are better than the original model in the Tusimple data set.
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