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基于深度学习的自动驾驶汽车轻量化车道检测方法(LLDNet)

LLDNet: A Lightweight Lane Detection Approach for Autonomous Cars Using Deep Learning.

机构信息

Department of ICT Integrated Ocean Smart Cities Engineering, Dong-A University, Busan 49315, Korea.

Department of Electronic Engineering, Dong-A University, Busan 49315, Korea.

出版信息

Sensors (Basel). 2022 Jul 26;22(15):5595. doi: 10.3390/s22155595.

Abstract

Lane detection plays a vital role in making the idea of the autonomous car a reality. Traditional lane detection methods need extensive hand-crafted features and post-processing techniques, which make the models specific feature-oriented, and susceptible to instability for the variations on road scenes. In recent years, Deep Learning (DL) models, especially Convolutional Neural Network (CNN) models have been proposed and utilized to perform pixel-level lane segmentation. However, most of the methods focus on achieving high accuracy while considering structured roads and good weather conditions and do not put emphasis on testing their models on defected roads, especially ones with blurry lane lines, no lane lines, and cracked pavements, which are predominant in the real world. Moreover, many of these CNN-based models have complex structures and require high-end systems to operate, which makes them quite unsuitable for being implemented in embedded devices. Considering these shortcomings, in this paper, we have introduced a novel CNN model named LLDNet based on an encoder-decoder architecture that is lightweight and has been tested in adverse weather as well as road conditions. A channel attention and spatial attention module are integrated into the designed architecture to refine the feature maps for achieving outstanding results with a lower number of parameters. We have used a hybrid dataset to train our model, which was created by combining two separate datasets, and have compared the model with a few state-of-the-art encoder-decoder architectures. Numerical results on the utilized dataset show that our model surpasses the compared methods in terms of dice coefficient, IoU, and the size of the models. Moreover, we carried out extensive experiments on the videos of different roads in Bangladesh. The visualization results exhibit that our model can detect the lanes accurately in both structured and defected roads and adverse weather conditions. Experimental results elicit that our designed method is capable of detecting lanes accurately and is ready for practical implementation.

摘要

车道检测对于实现自动驾驶汽车的理念至关重要。传统的车道检测方法需要广泛的手工制作的特征和后处理技术,这使得模型具有特定的特征导向,并且容易受到道路场景变化的不稳定性的影响。近年来,深度学习(DL)模型,特别是卷积神经网络(CNN)模型已被提出并用于执行像素级车道分割。然而,大多数方法侧重于在考虑结构化道路和良好天气条件下实现高精度,而不注重在有缺陷的道路上测试其模型,特别是在模糊的车道线、没有车道线和路面裂缝等缺陷的道路上进行测试,这些缺陷在现实世界中很常见。此外,许多基于 CNN 的模型结构复杂,需要高端系统来运行,这使得它们不太适合在嵌入式设备中实现。考虑到这些缺点,在本文中,我们引入了一种名为 LLDNet 的新型 CNN 模型,该模型基于编码器-解码器架构,结构轻量,已经在恶劣天气和道路条件下进行了测试。我们在设计的架构中集成了通道注意力和空间注意力模块,以细化特征图,从而在使用较少参数的情况下获得出色的结果。我们使用了一个混合数据集来训练我们的模型,该模型是通过结合两个独立的数据集创建的,并将该模型与一些最先进的编码器-解码器架构进行了比较。在使用的数据集上的数值结果表明,我们的模型在骰子系数、IoU 和模型大小方面都优于比较方法。此外,我们在孟加拉国不同道路的视频上进行了广泛的实验。可视化结果表明,我们的模型能够在结构化和有缺陷的道路以及恶劣天气条件下准确地检测车道。实验结果表明,我们设计的方法能够准确地检测车道,并准备好实际应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2933/9332112/3b1cd1e73c25/sensors-22-05595-g001.jpg

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