Monocular Video-Based Trailer Coupler Detection Using Multiplexer Convolutional Neural Network

Yousef Atoum, Joseph Roth, Michael Bliss, Wende Zhang, Xiaoming Liu
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引用次数: 8

Abstract

This paper presents an automated monocular-camera-based computer vision system for autonomous self-backing-up a vehicle towards a trailer, by continuously estimating the 3D trailer coupler position and feeding it to the vehicle control system, until the alignment of the tow hitch with the trailers coupler. This system is made possible through our proposed distance-driven Multiplexer-CNN method, which selects the most suitable CNN using the estimated coupler-to-vehicle distance. The input of the multiplexer is a group made of a CNN detector, trackers, and 3D localizer. In the CNN detector, we propose a novel algorithm to provide a presence confidence score with each detection. The score reflects the existence of the target object in a region, as well as how accurate is the 2D target detection. We demonstrate the accuracy and efficiency of the system on a large trailer database. Our system achieves an estimation error of 1.4 cm when the ball reaches the coupler, while running at 18.9 FPS on a regular PC.
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基于多路卷积神经网络的单目视频拖车耦合器检测
本文提出了一种基于单目相机的自动计算机视觉系统,该系统通过不断估计3D拖车耦合器的位置并将其馈送给车辆控制系统,直到拖车钩与拖车耦合器对齐。该系统是通过我们提出的距离驱动的multipler -CNN方法实现的,该方法使用估计的耦合器到车辆的距离来选择最合适的CNN。多路复用器的输入是由CNN检测器、跟踪器和3D定位器组成的一组。在CNN检测器中,我们提出了一种新的算法,为每次检测提供存在置信度评分。分数反映了目标物体在一个区域内的存在程度,以及二维目标检测的准确性。我们在一个大型拖车数据库上验证了该系统的准确性和效率。当球到达耦合器时,我们的系统实现了1.4 cm的估计误差,而在普通PC上以18.9 FPS运行。
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