Carman A B, Milburn P D
Department of Biomedical Science, University of Wollongong, NSW, Australia.
J Biomech. 1997 Jul;30(7):733-6. doi: 10.1016/s0021-9290(97)00017-1.
The three-dimensional video analysis of human motion commonly utilises automated image processing and digitisation processes to produce real-time unidentified two-dimensional coordinate data of segmental markers. In what can be a time-consuming process the two-dimensional data are then identified and tracked to produce three-dimensional coordinates. This paper presents an approach to the automated reproduction of three-dimensional coordinates from two-dimensional coordinates data. Conjugate imaging techniques were utilised in the development of four criterion measures for determining the validity of conjugate (corresponding) image points. An algorithm based on the criterion measures was then developed for the automated reproduction of three dimensional coordinates from camera image coordinate data. The algorithm was tested with a 55 point marker system viewed in four video cameras (digitisation error approx. 0.2%, lab point separation > or = 6 cm). The success of the algorithm was dependent on the closeness of markers, the accuracy of the photogrammetric system, and the number of markers visible in two camera images. The present research has developed techniques based on conjugate imagery for the automated reproduction of three-dimensional coordinates from two-dimensional data, and provided a bases for further development of automated three-dimensional tracking.
人体运动的三维视频分析通常利用自动图像处理和数字化过程来生成节段标记的实时未识别二维坐标数据。在这一可能耗时的过程中,二维数据随后被识别和跟踪以生成三维坐标。本文提出了一种从二维坐标数据自动再现三维坐标的方法。共轭成像技术被用于开发四种用于确定共轭(对应)图像点有效性的标准测量方法。然后基于这些标准测量方法开发了一种算法,用于从相机图像坐标数据自动再现三维坐标。该算法在由四个摄像机观察的55点标记系统上进行了测试(数字化误差约为0.2%,实验室点间距≥6厘米)。算法的成功取决于标记的接近程度、摄影测量系统的精度以及在两个摄像机图像中可见的标记数量。本研究开发了基于共轭图像的技术,用于从二维数据自动再现三维坐标,并为自动三维跟踪的进一步发展提供了基础。