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Monocular multi-kernel based lane marking detection

机译:单眼多核的车道标记检测

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Lane marking detection provides key information for scene understanding in structured environments. Such information has been widely exploited in Advanced Driving Assistance Systems and Autonomous Vehicle applications. This paper presents an enhanced lane marking detection approach intended for low-level perception. It relies on a multi-kernel detection framework with hierarchical weights. First, the detection strategy performs in Bird's Eye View (BEV) space and starts with an image filtering using a cell-based blob method. Then, lane marking parameters are optimized following a parabolic model. Finally, a self-assessment process provides an integrity indicator to improve the output performance of detection results. An evaluation using images from a public dataset confirms the effectiveness of the method.
机译:车道标记检测为结构化环境中的场景理解提供关键信息。这些信息已广泛利用高级驾驶辅助系统和自主车辆应用。本文介绍了用于低级别感知的增强型车道标记检测方法。它依赖于具有分层权重的多内核检测框架。首先,检测策略在鸟瞰图(BEV)空间中执行并使用基于小区的BLOB方法开始与图像滤波开始。然后,在抛物面模型之后优化车道标记参数。最后,自我评估过程提供了完整性指标,以提高检测结果的输出性能。使用公共数据集的图像的评估证实了该方法的有效性。

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