Muijtjens A M, Roos J M, Arts T, Hasman A, Reneman R S
Department of Medical Informatics, Cardiovascular Research Institute, Maastricht, University of Limburg, The Netherlands.
J Biomech. 1997 Jan;30(1):95-8. doi: 10.1016/s0021-9290(96)00104-2.
Motion and deformation of an object may be quantified by following attached markers in video or cine frame sequences. When recording cardiac motion by video (256 x 256 pixels, 50 Hz), generally no more than approximately 20 markers can be followed due to difficulties in proper identification of marker images. In the present study we developed the lower rank (LR) tracking method which can automatically follow considerably more than 20 markers. The performance of the method was evaluated in computer simulations of naturally moving myocardial markers observed in a sequence of 60 video frames. White noise was added to the marker coordinates. Realistic loss of data due to detection failure was simulated by deleting a generated marker image when the distance to another marker image was below a given minimum value. In a test, realistic values were substituted for the noise level sigma (0.5 pixel) and the minimum marker distance dm (4 pixels). For numbers of markers ranging from 50 to 100, 95-90% of the detected marker images was correctly tracked. Less than 0.7% was part of a false track, i.e. a track containing images of different markers. Under less favourable conditions (sigma = 1 pixel; dm = 8 pixels) the method was robust: for 75 markers with 40% of the marker images missing, still 70% of the detected images was correctly tracked, while the fraction in false tracks did not increase. The LR tracking method appears reliable for automatic tracking of large amounts of moving markers in a sequence of video or cine frames.
物体的运动和变形可以通过跟踪视频或电影帧序列中的附着标记来进行量化。当通过视频(256×256像素,50Hz)记录心脏运动时,由于难以正确识别标记图像,通常跟踪的标记不超过约20个。在本研究中,我们开发了低秩(LR)跟踪方法,该方法能够自动跟踪远超20个的标记。在对60个视频帧序列中观察到的自然移动的心肌标记进行计算机模拟中,评估了该方法的性能。向标记坐标添加了白噪声。当与另一个标记图像的距离低于给定的最小值时,通过删除生成的标记图像来模拟由于检测失败导致的实际数据丢失。在一次测试中,用实际值替代噪声水平σ(0.5像素)和最小标记距离dm(4像素)。对于50至100个标记的数量,95% - 90%的检测到的标记图像被正确跟踪。少于0.7%的是错误轨迹的一部分,即包含不同标记图像的轨迹。在不太有利的条件下(σ = 1像素;dm = 8像素),该方法很稳健:对于75个标记且40%的标记图像缺失的情况,仍有70%的检测图像被正确跟踪,而错误轨迹中的比例并未增加。LR跟踪方法对于在视频或电影帧序列中自动跟踪大量移动标记似乎是可靠的。