一种实用的基于立体视觉的三维传感模糊建模相机建模技术

Toshihiko Watanabe, Yuichi Saito
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引用次数: 1

摘要

近年来,多摄像机三维传感技术已被应用于可视化、运动捕捉等领域。然而,为了实现更精确的测量,改进相机模型标定是必不可少的。在这项研究中,我们提出了一种实用的三维传感模糊建模方法,利用立体视觉的配置。考虑光学投影特性,利用传感目标与摄像机之间的距离构建摄像机模糊模型。该方法采用加权最小均方误差法,考虑了模糊划分,成功地建立了模糊模型。然后对相机模糊模型的逆问题进行迭代求解,得到测量坐标。通过基于该方法的立体视觉测量传感实验表明,与传统建模方法相比,该模型的性能得到了显著提高。
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Practicable camera modeling technique applying fuzzy modeling for 3D sensing based on stereo vision
Recently, the 3D sensing technique using multiple cameras has been applied to various areas such as visualization, motion capturing, and so on. However, improvement of the camera model calibration is indispensible for more precise measurement. In this study, we propose a practicable fuzzy modeling approach for 3D sensing utilizing the configuration of the stereo vision. A distance between a sensing target and the camera is used for structuring the fuzzy model for cameras considering optical projection characteristics. In our approach, the weighted least mean square error method is successfully applied considering fuzzy partition to formulate the fuzzy model. Then iterative calculations for solving the inverse problem of the camera fuzzy model are performed to attain measured coordinates. Through sensing experiments of stereo vision measurement based on the proposed approach, we showed the performance of the model was drastically improved compared with the conventional modeling approach.
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