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Moving object detection by multi-view geometric techniques from a single camera mounted robot

机译:通过安装在单个摄像机上的机器人通过多视角几何技术检测运动物体

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The ability to detect, and track multiple moving objects like person and other robots, is an important prerequisite for mobile robots working in dynamic indoor environments. We approach this problem by detecting independently moving objects in image sequence from a monocular camera mounted on a robot. We use multi-view geometric constraints to classify a pixel as moving or static. The first constraint, we use, is the epipolar constraint which requires images of static points to lie on the corresponding epipolar lines in subsequent images. In the second constraint, we use the knowledge of the robot motion to estimate a bound in the position of image pixel along the epipolar line. This is capable of detecting moving objects followed by a moving camera in the same direction, a so-called degenerate configuration where the epipolar constraint fails. To classify the moving pixels robustly, a Bayesian framework is used to assign a probability that the pixel is stationary or dynamic based on the above geometric properties and the probabilities are updated when the pixels are tracked in subsequent images. The same framework also accounts for the error in estimation of camera motion. Successful and repeatable detection and pursuit of people and other moving objects in realtime with a monocular camera mounted on the Pioneer 3DX, in a cluttered environment confirms the efficacy of the method.
机译:检测和跟踪多个移动物体(例如人和其他机器人)的能力是移动机器人在动态室内环境中工作的重要前提。我们通过从安装在机器人上的单眼相机检测图像序列中的独立移动物体来解决此问题。我们使用多视图几何约束将像素分类为移动或静态。我们使用的第一个约束是对极约束,它要求静态点的图像位于后续图像中相应的对极线上。在第二个约束中,我们使用机器人运动的知识来估计沿对极线的图像像素位置的界限。这能够检测移动物体,然后检测移动照相机沿相同方向移动,这就是对极约束失效的所谓简并配置。为了稳健地对运动像素进行分类,贝叶斯框架用于基于上述几何属性分配像素静止或动态的概率,并且在后续图像中跟踪像素时更新概率。相同的框架还考虑了摄像机运动估计中的误差。在混乱的环境中,通过安装在Pioneer 3DX上的单眼相机,可以成功,重复地实时检测和追踪人和其他移动物体,从而证实了该方法的有效性。

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