Video-based roll angle estimation for two-wheeled vehicles

Marc Schlipsing, Jakob Schepanek, J. Salmen
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引用次数: 26

Abstract

Video-based driver assistance systems are a key component for intelligent vehicles today. Applications for lane detection, traffic sign recognition, and collision avoidance have been successfully deployed in cars and trucks. State-of-the art algorithms rely on machine learning and therefore depend on invariance conditions, e.g. a fixed image perspective. In order to apply current modules in two-wheeled vehicles one needs to determine the roll angle, i.e. the angle between the road plane and the slanted vehicle. It can either be used for parametrisation of the algorithms or for rotation of the video image back to a horizontal alignment. Using an inertial measurement unit to acquire this data is unreasonably expensive. We propose a video-based module that estimates the current roll angle based on gradient orientation histograms to overcome this flaw. Due to the visual structure of a traffic scene we are able to derive possible roll angles from the gradient statistics by correlation with learnt data. Analogously, we estimate the roll rate by correlating subsequent image statistics and stabilise both measures within a linear Kalman filter. Experiments on real image data from various test scenarios show high accuracy of the proposed approach. Thus, estimating the roll angle / rate from video only, enables us to employ established video-based assistance modules for two-wheeled vehicles without any additional hardware expense.
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基于视频的两轮车辆侧倾角估计
基于视频的驾驶员辅助系统是当今智能汽车的关键组成部分。车道检测、交通标志识别和避碰等应用已成功应用于汽车和卡车。最先进的算法依赖于机器学习,因此依赖于不变性条件,例如固定的图像视角。为了将当前的模块应用于两轮车辆,需要确定侧倾角度,即路面与倾斜车辆之间的角度。它既可以用于算法的参数化,也可以用于将视频图像旋转回水平对齐。使用惯性测量单元来获取这些数据是不合理的昂贵。为了克服这一缺陷,我们提出了一个基于视频的模块,该模块基于梯度方向直方图估计当前的滚转角。由于交通场景的视觉结构,我们能够通过与学习数据的相关性,从梯度统计中得出可能的滚转角。类似地,我们通过关联随后的图像统计来估计滚动率,并在线性卡尔曼滤波器中稳定这两个测量。在不同测试场景的真实图像数据上进行的实验表明,该方法具有较高的精度。因此,仅从视频中估计滚转角/速率,使我们能够为两轮车辆使用基于视频的辅助模块,而无需任何额外的硬件费用。
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