车道线检测的PSPNet改进算法
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西安石油大学电子工程学院 西安 710065

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TP391.41

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陕西省教育厅基金(17JS108)、西安石油大学研究生创新与实践能力培养项目(YCS21213204)、陕西省科技厅一般工业项目(2020GY152)资助


Improved PSPNet algorithm for lane detection
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College of Electronic Engineering, Xi′an Shiyou Universty,Xi′an 710065, China

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    摘要:

    车道线检测已成为智能驾驶领域研究的一项重要课题,而实际应用时,常出现车道线分割不准确、实时检测能力不佳的问题。为此本文提出一种金字塔场景分析网络的改进算法。在编码结构的基础上搭建主体网络PSPNet,选用MobileNet v2轻量级网络作为编码器的主干网络,减少了整体网络的计算复杂度及参数量;网络中添加了空洞卷积,并在不同层间实现特征融合,扩充了模型感受野,同时丰富了局部特征;最后用自适应直线拟合算法对各类型车道线拟合。本文使用Caltech车道线数据集进行测试,实验结果显示,改进后的PSPNet算法对不同类型的车道线均有较好的分割结果,与PSPNet算法相比精度和交并比分别提升了391%、414%,且FPS达28帧/s,本文算法的分割精度和推理速度均优于其他对比算法。

    Abstract:

    Lane detection is a significant research subject in the field of intelligent driving. However, there will always be inaccurate lane segmentation and insufficient realtime processing capabilities in practical applications. Accordingly, an improved algorithm based on the Pyramid Scene Parsing Network is proposed. A main network PSPNet is built on a basis of the encoding structure, and the encoder backbone network is replaced by the lightweight MobileNet v2 network, which effectively cut down the parameter amount and computational complexity of the whole network. Hole convolution is added into the network and feature fusion is realized between different layers, which expands the model receptive field and enriches local feature information. Finally, an adaptive line fitting algorithm is used to fit different lane lines in order to obtain the final prediction result. The Caltech lane data set is come into use for testing. The experimental results show that the improved algorithm has better segmentation for different types of lane lines. Compared with the original algorithm, the Pixel Accuracy and the Intersection over Union is improved by 3.91%, 4.14%, and FPS up to 28 frames per second. The segmentation accuracy and inference speed of the proposed algorithm are superior to other comparison algorithms.

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霍爱清,冯若水,李易.车道线检测的PSPNet改进算法[J].电子测量技术,2023,46(10):144-149

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  • 在线发布日期: 2024-01-09
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