Jiang Guang, Quan Long, Tsui Hung-Tat
Department of Electronic Engineering, The Chinese University of Hong Kong, Shatin, New Territories, Hong Kong.
IEEE Trans Pattern Anal Mach Intell. 2004 Jun;26(6):721-31. doi: 10.1109/TPAMI.2004.4.
Circular motion or single axis motion is widely used in computer vision and graphics for 3D model acquisition. This paper describes a new and simple method for recovering the geometry of uncalibrated circular motion from a minimal set of only two points in four images. This problem has been previously solved using nonminimal data either by computing the fundamental matrix and trifocal tensor in three images or by fitting conics to tracked points in five or more images. It is first established that two sets of tracked points in different images under circular motion for two distinct space points are related by a homography. Then, we compute a plane homography from a minimal two points in four images. After that, we show that the unique pair of complex conjugate eigenvectors of this homography are the image of the circular points of the parallel planes of the circular motion. Subsequently, all other motion and structure parameters are computed from this homography in a straighforward manner. The experiments on real image sequences demonstrate the simplicity, accuracy, and robustness of the new method.
圆周运动或单轴运动在计算机视觉和图形学中被广泛用于三维模型获取。本文描述了一种新的简单方法,可从仅四张图像中的最少两个点恢复未校准圆周运动的几何形状。该问题此前已通过使用非最小数据来解决,要么通过计算三张图像中的基本矩阵和三焦点张量,要么通过将圆锥曲线拟合到五张或更多图像中的跟踪点。首先确定,对于两个不同的空间点,在圆周运动下不同图像中的两组跟踪点通过单应性相关。然后,我们从四张图像中的最少两个点计算平面单应性。之后,我们表明该单应性的唯一一对复共轭特征向量是圆周运动平行平面的圆周点的图像。随后,所有其他运动和结构参数都以直接的方式从该单应性计算得出。对真实图像序列的实验证明了新方法的简单性、准确性和鲁棒性。