Lane Detection Using CNN-LSTM with Curve Fitting for Autonomous Driving

Wenwei Wang, Zhipeng Zhang, Yue Gao, Yiding Li
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引用次数: 3

Abstract

The efficient and accurate detection of lanes and the extraction of their key features are critical to autonomous driving. In this paper, a lane detection method that combines convolutional neural networks (CNN) and long-short-time memory neural networks (LSTM) is proposed to extract key features of lanes with great rapidity and accuracy. The main process is as follows: ( 1 ) The video is processed using a featurebased image processing method to extract key information of the lanes which is stored as a label. (2) The CNN model and the CNN-LSTM model are established respectively. ( 3 ) Training and testing are operated on above-mentioned models using the images and labels obtained in step(1). ( 4 ) Multi-platform verification of trained models is operated with entirely new videos. The results show that the detection rates of CNN model on training data and verification data are 94.9% and 91.2%, respectively, and the processing speed reaches up to 46.2 milliseconds per frame and its time consumption is only 5.59% of the traditional processing method; the detection rates of CNN-LSTM model are respectively 97.6% and 94.4%, and the processing speed achieves 54.7 milliseconds per frame which consumes only 6.61% time of the traditional method, and it also shows great performance on the micro platform.
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基于CNN-LSTM曲线拟合的自动驾驶车道检测
高效、准确的车道检测及其关键特征提取对自动驾驶至关重要。本文提出了一种将卷积神经网络(CNN)和长短时记忆神经网络(LSTM)相结合的车道检测方法,快速准确地提取车道的关键特征。主要过程如下:(1)采用基于特征的图像处理方法对视频进行处理,提取车道的关键信息,以标签的形式存储。(2)分别建立CNN模型和CNN- lstm模型。(3)使用步骤(1)获得的图像和标签对上述模型进行训练和测试。(4)用全新的视频对训练好的模型进行多平台验证。结果表明:CNN模型对训练数据和验证数据的检测率分别为94.9%和91.2%,处理速度高达46.2毫秒/帧,时间消耗仅为传统处理方法的5.59%;CNN-LSTM模型的检测率分别为97.6%和94.4%,处理速度达到54.7毫秒/帧,耗时仅为传统方法的6.61%,在微平台上也表现出良好的性能。
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