基于移动平台的运动目标检测中自我运动不确定性建模

Dingfu Zhou, V. Fremont, B. Quost, Bihao Wang
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引用次数: 14

摘要

在本文中,我们提出了一种基于自我运动不确定性建模和基于图切的运动分割的有效运动目标检测方法。首先,通过最小化重投影误差和估计相对相机姿态,并使用一阶误差传播法计算其协方差矩阵;接下来,通过将自我运动的不确定性传播到残余图像运动流(RIMF)来获得每个像素的运动可能性。最后,将运动似然和深度梯度分别作为区域项和边界项,采用基于图切的方法对运动目标进行分割。实际数据的实验结果表明,我们的方法可以检测到在极平面上移动的动态物体或在复杂的城市交通场景中被部分遮挡的动态物体。
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On modeling ego-motion uncertainty for moving object detection from a mobile platform
In this paper, we propose an effective approach for moving object detection based on modeling the ego-motion uncertainty and using a graph-cut based motion segmentation. First, the relative camera pose is estimated by minimizing the sum of reprojection errors and its covariance matrix is calculated using a first-order errors propagation method. Next, a motion likelihood for each pixel is obtained by propagating the uncertainty of the ego-motion to the Residual Image Motion Flow (RIMF). Finally, the motion likelihood and the depth gradient are used in a graph-cut based approach as region and boundary terms respectively, in order to obtain the moving objects segmentation. Experimental results on real-world data show that our approach can detect dynamic objects which move on the epipolar plane or that are partially occluded in complex urban traffic scenes.
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