A technique for detecting diagnostic events in video channel of synchronous video and electroencephalographic monitoring data

D. Murashov, Y. Obukhov, I. Kershner, M. Sinkin
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引用次数: 5

Abstract

In this paper, a technique for automated detecting diagnostic events in the video channel of video and electroencephalographic monitoring data is presented. The technique is based on the analysis of the quantitative features of facial expressions in images of video data. The analysis of video sequences is aimed at detecting a group of frames characterized by high activity of frame regions. For detecting the frames, a criterion computed from the optical flow is proposed. The preliminary results of the analysis of real clinical data are presented. The intervals of synchronous muscle and brain activity, which may correspond to an epileptic seizure, are detected. These intervals can be used for diagnosing epileptic seizures and distinguishing them from non-epileptic events. Requirements for video shooting conditions are formulated.
一种同步视频和脑电图监测数据视频通道诊断事件检测技术
本文提出了一种自动检测视频和脑电图监测数据视频通道诊断事件的技术。该技术是基于对视频数据图像中面部表情定量特征的分析。视频序列分析的目的是检测出一组帧区域活跃度高的帧。为了检测帧,提出了一种由光流计算的判据。本文给出了对实际临床资料分析的初步结果。同步肌肉和大脑活动的间隔,可能与癫痫发作相对应,被检测到。这些间隔可用于诊断癫痫发作并将其与非癫痫事件区分开来。制定了视频拍摄条件要求。
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