Dogra Debi Prosad, Badri Vishal, Majumdar Arun Kumar, Sural Shamik, Mukherjee Jayanta, Mukherjee Suchandra, Singh Arun
School of Electrical Sciences, IIT Bhubaneswar, Bhubaneswar, 751013, India,
Med Biol Eng Comput. 2014 Sep;52(9):759-72. doi: 10.1007/s11517-014-1178-2. Epub 2014 Aug 6.
Video object tracking plays an important role in many computer vision-aided applications. This paper presents a novel multi-path analysis-based video object tracking algorithm. Trajectory of the moving object is refined using a Kalman filter-based prediction method. The proposed algorithm has been used successfully to analyze one of the complex infant neurological examinations often referred to as Hammersmith lateral tilting test. This is an important test of the infant neurological assessment process, and this test is difficult to grade by visual observation. It has been shown in this paper that the proposed video object tracking algorithm can be used to analyze the videos of fast moving objects by incorporating application-specific information. For example, the proposed tracking algorithm can be used to assess lateral tilting test of the Hammersmith infant neurological examinations. The algorithm has been tested with several video recordings of this test which were captured at the neurodevelopment clinic of the SSKM Hospital, Kolkata, India during the period of the study. It is found that the proposed algorithm is capable of estimating the score for the test with high values of sensitivity and specificity.
视频目标跟踪在许多计算机视觉辅助应用中发挥着重要作用。本文提出了一种基于多路径分析的新型视频目标跟踪算法。使用基于卡尔曼滤波器的预测方法对移动物体的轨迹进行优化。所提出的算法已成功用于分析一种复杂的婴儿神经学检查,通常称为哈默史密斯侧倾试验。这是婴儿神经学评估过程中的一项重要检查,并且这项检查很难通过视觉观察进行评分。本文表明,所提出的视频目标跟踪算法通过纳入特定应用信息可用于分析快速移动物体的视频。例如,所提出的跟踪算法可用于评估哈默史密斯婴儿神经学检查的侧倾试验。该算法已用该检查的几段视频记录进行了测试,这些视频记录是在研究期间于印度加尔各答的SSKM医院神经发育诊所拍摄的。结果发现,所提出的算法能够以高灵敏度和特异性估计该检查的分数。