Vision based road profile estimation for preview-controlled vehicle suspension systems

Mert Büyükköprü, E. Uzunsoy, X. Mouton
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Abstract

In this paper, a vision-based road profile estimation method was studied for the control of semi-active and active suspension systems. For the purpose, a monocular camera was used to collect data from the road tests to develop a logic to convert the camera measurements into the road profile data. For the generation of the road profile, alignment of the different sets of camera measurements and their coherence were expressed. Importance of the sensor and process noise removal were shown in recognition of the high frequency content of the road profile, which was a particular interest of the study. Additionally, a density-based clustering algorithm was taken into account to cluster the measured points vertically, to remove the process and sensor noise. The density-based clustering method reduced the noises and allowed detection of the high and low frequency contents of the road.
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基于视觉的路面轮廓估计,用于预览控制的车辆悬挂系统
本文研究了一种基于视觉的路面轮廓估计方法,用于半主动和主动悬架系统的控制。为此,使用了单目摄像头收集路面测试数据,并开发了一套将摄像头测量数据转换为路面轮廓数据的逻辑。为了生成路面轮廓,需要对不同的相机测量数据集进行校准,并使其保持一致。在识别路面轮廓的高频内容时,显示了传感器和过程噪声去除的重要性,这也是本研究的一个特别关注点。此外,还采用了基于密度的聚类算法,对测量点进行垂直聚类,以消除过程噪声和传感器噪声。基于密度的聚类方法减少了噪音,并能检测出道路的高频和低频内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Optimal method to monitor network for IoT devices based on anomaly detection Vision based road profile estimation for preview-controlled vehicle suspension systems
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