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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Automatic video detection of body movement during sleep based on optical flow in pediatric patients with epilepsy.
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Automatic video detection of body movement during sleep based on optical flow in pediatric patients with epilepsy.

机译:基于光流的小儿癫痫患者在睡眠过程中身体运动的自动视频检测。

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The aim of our work is to investigate whether the optical flow algorithm applied to video recordings can be used to detect movement during sleep in pediatric patients with epilepsy. The optical flow algorithm allocates intensities to pixels proportional to their involvement in movement of an object. The average of a percentage of the highest movement vectors was plotted as a function of time (R(t)). The used dataset contains video data acquired at the University Hospital of Leuven consisting of normal sleep movement and seizure movement. We investigated R(t), to make a distinction between movement and non-movement. We used the acquisition parameters (320 x 240 at 12.5 fps), derived from a previous study (Cuppens et al., Proceedings of the 4th European congress of the international federation for medical and biological engineering (MBEC 2008), ECIFBME 2008, Antwerp, Belgium, IFMBE Proceedings, vol 22, pp 784-789, 2008). Two experiments were concluded, one with global thresholds of R(t) in all datasets and one with a variable threshold in each dataset. The latter is obtained by inspecting a non-movement epoch and calculating the mean and standard deviations of R(t) over time. The variable threshold on R(t) was then obtained for each dataset by adding to the mean a fixed multiple of the standard deviation. Optimal thresholds were derived based on a three-fold cross-validation. The best result was achieved when using a variable threshold, which resulted in a sensitivity of one in all the test sets and a PPV of 1, 0.821, and 1, respectively, for the three test sets.
机译:我们的工作目的是研究应用于视频记录的光流算法是否可用于检测小儿癫痫患者睡眠期间的运动。光流算法将强度分配给像素,这些强度与像素在对象运动中的参与程度成正比。绘制最高运动矢量百分比的平均值作为时间的函数(R(t))。使用的数据集包含在鲁汶大学医院获取的视频数据,包括正常睡眠运动和癫痫发作运动。我们研究了R(t),以区分运动与不运动。我们使用了以前的研究(Cuppens等人,国际医学与生物工程联合会第四届欧洲会议论文集(MBEC 2008),ECIFBME 2008,安特卫普,比利时,IFMBE会议录,第22卷,第784-789页,2008年)。得出了两个实验,一个实验在所有数据集中具有R(t)的全局阈值,另一个实验在每个数据集中具有可变的阈值。后者是通过检查非运动时期并计算R(t)随时间的平均值和标准偏差而获得的。然后,通过将标准偏差的固定倍数加到平均值上,为每个数据集获得R(t)的可变阈值。基于三重交叉验证得出最佳阈值。当使用可变阈值时,可获得最佳结果,这导致所有测试集中的灵敏度为1,三个测试组的PPV分别为1、0.821和1。

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