Accurate and flexible calibration is a prerequisite for visual sensor networks to retrieve metric information from image data. This paper presents the design and implementation of an accurate and flexible calibration ...
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Accurate and flexible calibration is a prerequisite for visual sensor networks to retrieve metric information from image data. This paper presents the design and implementation of an accurate and flexible calibration method for a class of visual sensor networks intended for 3d measurement and tracking in large volumes. The proposed method employs a generic camera model that is applicable for wide-angle lens cameras as well as for conventional cameras. It does not require all the employed cameras to share a common field of view, and only pairwise overlap is needed. In the calibration process, the poses between stereo cameras are first initialized using essential matrix decomposition and then optimized by the Levenberg-Marquardt algorithm. A weighted vision graph is proposed to select optimal transformation paths among cameras by using dijkstra's shortest path algorithms for multi-camera calibration. Then, the global coordinates are constructed using a four-marker calibration triangle. Finally, a Unity3d-based virtual platform, in which the total number and configurations of cameras, as well as the environment scene, can be arbitrarily edited, is designed to test the proposedcalibration algorithms. Extensive experiments based on synthetic and real data are performed to demonstrate the effectiveness of the proposed multi-camera calibration method. Experimental results show that the multi-camera calibration method is accurate and easy-to-implement in the presence of noise.
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