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Object detection and object tracking in front of the vehicle using front view camera

机译:使用前视摄像头在车辆前方进行物体检测和物体跟踪

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Modern vehicles are equipped with the different systems that help driver in the driving process ensuring safer and more comfortable driving. These systems are called Advanced Driver Assistance Systems (ADAS) and are step toward fully autonomous driving. The integral part of autonomous driving is an object detection and tracking by using front view camera which provides necessary information for emergency braking, collision avoidance, path planning, etc. In this paper, one possible approach to object detection and tracking in autonomous driving is presented. Two object detection methods are implemented and tested: Viola-Jones algorithm and YOLOv3. The Viola-Jones algorithm is used to create object detectors which detections are tracked in a video sequence. Nine object detectors were trained and they are divided into four groups (vehicle detectors, pedestrian detector, traffic light detector and traffic sign detectors). In second case, the YOLOv3 model was used for object detection. Both methods are evaluated in terms of accuracy and processing speed. For the purpose of object tracking, Median Flow tracking method and correlation tracking method are implemented and evaluated.
机译:现代车辆配备了不同的系统,可以帮助驾驶员在驾驶过程中确保更安全,更舒适的驾驶。这些系统被称为高级驾驶员辅助系统(ADAS),并朝着全自动驾驶迈进了一步。自主驾驶的组成部分是使用前视摄像头进行物体检测和跟踪,它为紧急制动,避撞,路径规划等提供了必要的信息。在本文中,提出了一种可能的自主驾驶对象检测和跟踪方法。实现并测试了两种对象检测方法:Viola-Jones算法和YOLOv3。 Viola-Jones算法用于创建对象检测器,该检测器在视频序列中进行跟踪。训练了9个物体探测器,它们分为四类(车辆探测器,行人探测器,交通信号灯探测器和交通标志探测器)。在第二种情况下,将YOLOv3模型用于对象检测。两种方法均在准确性和处理速度方面进行了评估。出于对象跟踪的目的,实现并评估了中值流跟踪方法和相关性跟踪方法。

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