基于语义信息的车辆相对方位和尾灯检测

F. Vancea, S. Nedevschi
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引用次数: 5

摘要

汽车尾灯检测是避碰系统和自动驾驶汽车领域的一个重要课题。通过分析车辆尾灯的变化,可以了解驾驶员的意图,从而预防可能发生的事故。本文提出了一种卷积神经网络结构,该结构能够通过检测车辆来分割尾灯像素,并使用已经计算的特征来分割尾灯。该网络由一个更快的RCNN组成,该网络检测车辆并根据车辆相对于摄像头的方向对其进行分类,而子网络则负责从汽车的尾灯像素中分割出后面向摄像头的车辆。对多个更快的RCNN配置进行了训练和评估。本文还提出了一种将ERFNet语义分割架构用于尾灯提取、目标检测和分类的方法。使用KITTI目标检测数据集对网络进行训练和评估。
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Semantic information based vehicle relative orientation and taillight detection
Vehicle taillight detection is an important topic in the fields of collision avoidance systems and autonomous vehicles. By analyzing the changes in the taillights of vehicles, the intention of the driver can be understood, which can prevent possible accidents. This paper presents a convolutional neural network architecture capable of segmenting taillight pixels by detecting vehicles and uses already computed features to segment taillights. The network is composed of a Faster RCNN that detects vehicles and classify them based their orientation relative to the camera and a subnetwork that is responsible for segmenting taillight pixels from vehicles that have their rear facing the camera. Multiple Faster RCNN configurations were trained and evaluated. This work also presents a way of adapting the ERFNet semantic segmentation architecture for the purpose of taillight extraction, object detection and classification. The networks were trained and evaluated using the KITTI object detection dataset.
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