基于扩展卡尔曼滤波的有源摄像机三维形状重建

K. Nakao, K. Kondo, S. Kobashi, Y. Hata, T. Yagi
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引用次数: 8

摘要

本文提出了一种利用扩展卡尔曼滤波器对单个有源摄像机进行物体三维形状重建的新方法。在传统的方法中,通常使用激光扫描仪或立体摄像机作为传感器来重建三维形状。然而,它们的系统规模很大,也带来了一些问题。我们只使用一个活动摄像机进行形状重建。由于活动相机拍摄的是时间序列图像,因此可以观察到一些点,并通过扩展卡尔曼滤波估计出这些点的三维位置。此外,我们从每个点之间的连接考虑三维几何的重建,并规划良好的摄像机视点。在估计目标上两个选定点的三维位置并对其进行分析后,活动摄像机移动到下一个视点以获取隐藏信息。利用这些点的估计,从一些规划的视点,实现三维形状重建。我们将该方法应用于计算机生成的图像和真实世界的图像,并证明了它对物体形状重建的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D shape reconstruction using extended Kalman filter with an active camera
We propose a novel method for the 3D shape reconstruction of an object using an extended Kalman filter with a single active camera. In conventional methods, a laser scanner or stereo camera is often used as the sensor to reconstruct a 3D shape. However, they have large-scale systems and some problems are caused by them. We use only one active camera for shape reconstruction. Since an active camera takes time-series images, some points can be observed and the 3D position of the points estimated by extended Kalman filtering. Also, we consider the reconstruction of 3D geometry from the connection between each point, and plan good camera viewpoints. After estimating the 3D position of two selected points on the object and analyzing them, the active camera moves to the next viewpoint to obtain hidden information. By using these estimates of points from some planned viewpoints, 3D shape reconstruction is achieved. We apply the proposed approach to computer generated images and real world images, and we show that it is effective for shape reconstruction of an object.
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