Lane-Crossing Detection Method of Vehicles with In-Vehicle Image
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    Abstract:

    Lane-crossing detection of vehicles is an important part of intelligent transportation system. To tackle this issue, we proposed a lane-crossing detection method of vehicles with in-vehicle image. First, we use synthesizing-data method to build a rich and varied lane-crossing detection dataset. Then, we use image semantic segmentation to detect vehicle and lane lines, and then we estimate wheels positions of vehicle. Finally, we contrast wheels positions with lane lines positions to judge whether there is lane-crossing behavior. Experiment results show that combined with semantic segmentation model, we achieve an average precision of 88.7% for lane-crossing detection, and the average detection time is 35 ms, which means that the proposed method has certain practical application value.

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邱康,王子磊.基于车载图像的目标车辆压线检测方法.计算机系统应用,2019,28(11):188-194

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History
  • Received:April 18,2019
  • Revised:May 16,2019
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  • Online: November 08,2019
  • Published: November 15,2019
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