Crossing obstacle detection with a vehicle-mounted camera

Ikuro Sato, C. Yamano, H. Yanagawa
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引用次数: 13

Abstract

We propose a computer vision algorithm that detects obstacles crossing a vehicle's path with a monocular camera mounted on the vehicle. False positives are strongly suppressed even for low-resolution images by imposing constraints on feature-based optical flows. The constraints are derived from a model of crossing obstacle motion under perspective projection. A key concept in this model is “Relative Incoming Angle”, which is an angle between the camera's translational direction and relative velocity of a crossing obstacle with respect to the camera. We show a ROC curve that has been obtained by varying the Relative Incoming Angle using our dataset consisting of 18 scenes, 1456 frames. A representative point on the curve yields the detection rate of 59.7% and false positive rate of 2.6% (per-image).
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使用车载摄像头进行障碍物检测
我们提出了一种计算机视觉算法,该算法通过安装在车辆上的单目摄像头来检测穿过车辆路径的障碍物。通过对基于特征的光流施加约束,即使对于低分辨率图像,假阳性也被强烈抑制。约束条件来源于透视投影下的穿越障碍运动模型。这个模型中的一个关键概念是“相对入射角”,它是相机的平移方向与穿越障碍物相对于相机的相对速度之间的夹角。我们展示了一个ROC曲线,该曲线是通过使用我们的数据集(包括18个场景,1456帧)改变相对入射角度获得的。曲线上的一个代表性点的检出率为59.7%,假阳性率为2.6%(每张图像)。
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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