基于级联分类器的多阶段深度学习转弯车道识别技术

Pubudu Sanjeewani, B. Verma, J. Affum
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摘要

包括自动驾驶汽车在内的许多应用都需要准确识别车道和转弯箭头等道路标记。然而,文献中对道路标线检测的研究较多,转弯车道箭头的检测与分类尚未得到重视。现有的弯道箭头检测与分类研究大多存在精度低等局限性。为此,本文提出了一种基于两个新概念的转弯车道箭头检测与分类新技术。首先,提出将所有转弯车道箭头逐像素分割为一类,而不是将每个转弯车道箭头单独分割为一类;其次,提出了一种新的级联分类器,该分类器通过权值进化来识别转弯车道箭头。三个转弯车道的道路标记,分别是左转弯车道、右转弯车道和连续中央转弯车道(CCTL),使用由我们的行业合作伙伴提供的视频数据创建的真实路边图像数据集进行评估。通过对实验结果的对比分析,证明了该方法在精度方面取得了优异的成绩。
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Multi-stage Deep Learning Technique with a Cascaded Classifier for Turn Lanes Recognition
The accurate recognition of road markings such as lanes and turn arrows is required in many applications including autonomous vehicles. Nevertheless, studies on road markings detection are commonly found in literature, detection and classification of turn lane arrows has not gained much attention. Most of the research which exists on the detection and classification of turn lane arrows have many limitations including low accuracy. Therefore, a novel technique based on two novel concepts for improving the performance of the detection and classification of turn lane arrows is proposed in this paper. Firstly, pixel-wise segmentation of all turn lane arrows into one class instead of each turn lane arrow in a separate class is proposed. Secondly, a novel cascaded classifier that evolves its weights so that it can identify turn lane arrows is proposed. Three turn lane road markings named left turn lane, right turn lane and Continuous Central Turning Lane (CCTL) are evaluated using a real-world roadside image dataset created by video data including all state roads in Queensland provided by our industry partners. The comparative analysis of the experimental results demonstrated outstanding results in terms of accuracy.
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