吉林大学学报(工学版) ›› 2025, Vol. 55 ›› Issue (12): 3840-3851.doi: 10.13229/j.cnki.jdxbgxb.20240397
• 交通运输工程·土木工程 • 上一篇
Tian-min DENG(
),Peng-fei XIE,Yang YU,Yue-tian CHEN
摘要:
为解决深浅层特征直接融合易导致的特征腐蚀和淹没问题,实现复杂环境车道线精准检测,提出了双分支特征自适应融合的车道线检测方法。首先,设计了双分支特征提取网络,提升复杂环境车道线特征提取能力,减少空间细节信息损失;其次,构建了特征自适应融合模块,利用通道注意力与自注意力引导特征选择和融合,自适应地调整融合过程,优化特征图的通道和空间语义信息;此外,改进的并行混合金字塔池化模块更符合道路细长、大跨度特性,多方向捕获远程上下文关系;最后,本文方法在TuSimple、CULane和Curvelanes数据集进行了实验测试,F1分别达到了96.93%、76.48%和83.21%,实验结果表明:本文方法能有效应对遮挡、阴影等复杂场景车道线检测任务,其性能相对于主流分割类车道线检测方法有显著提升。
中图分类号:
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