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Simultaneous Scene Reconstruction and Auto-Calibration Using Constrained Iterative Closest Point for 3D Depth Sensor Array

机译:使用3D深度传感器阵列的受约束迭代最近点同时进行场景重建和自动校准

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Being able to monitor a large area is essential for intelligent warehouse automation. Complete depth map of a plant floor allows Automated Guided Vehicles (AGV) to navigate the environment and safely interact with nearby people and equipment, eliminating the need for installation of guide tracks and range sensors on individual robots. A single camera does not have sufficient field of view irresolution to monitor a large scene, and a camera mounted on a moving platform introduces delays and blind spots that could put people at risk in busy areas. Multi-camera arrays are needed in order to reconstruct the scene from simultaneous captures. Existing iterative closest point (ICP) based algorithms fail to produce meaningful results due to ICP attempting to minimize Euclidean distance between non-matching pairs. This paper describes a method for accurate and computationally efficient simultaneous scene reconstruction and auto-calibration using depth maps captured with multiple downward looking overhead cameras. The proposed method extends upon standard ICP algorithm by incorporating constraints imposed by the camera setup. The common field of view constraint imposed on the ICP algorithm matches a subset of points that are simultaneously in two camera's field of view. The planar constraint restricts the search space for closest points between 2point clouds to be on a projected planar surface. To simulate a typical warehouse environment, depth maps captured from two overhead Microsoft Kinect cameras were used to evaluate the effectiveness of the proposed algorithm. The results indicate the proposed algorithm successfully reconstructed the scene and produced auto-calibrated extrinsic camera matrix, where as standard ICP algorithm did not generate meaningful results.
机译:能够监视大面积区域对于智能仓库自动化至关重要。完整的工厂车间深度图使自动引导车(AGV)能够在环境中导航并与附近的人员和设备安全地交互,从而无需在单个机器人上安装导轨和距离传感器。单个摄像头没有足够的视野分辨率来监视大场景,而安装在移动平台上的摄像头会带来延迟和盲点,这可能会使人们在繁忙的区域中处于危险之中。为了从同时捕获中重建场景,需要多摄像机阵列。现有的基于迭代最近点(ICP)的算法无法产生有意义的结果,这是因为ICP试图将不匹配对之间的欧式距离最小化。本文介绍了一种使用多个向下看的高架摄像机捕获的深度图进行精确且计算高效的同时场景重建和自动校准的方法。所提出的方法通过结合摄像机设置所施加的约束在标准ICP算法上进行扩展。施加在ICP算法上的公共视场约束与两个摄像头视场中同时存在的点子集匹配。平面约束将2点云之间最接近点的搜索空间限制在投影平面上。为了模拟典型的仓库环境,使用从两个高架Microsoft Kinect摄像机捕获的深度图来评估所提出算法的有效性。结果表明,该算法成功地重构了场景并产生了自动校准的外部相机矩阵,而标准的ICP算法并没有产生有意义的结果。

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