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Identification of Cardio-Pulmonary Resuscitation (CPR) Scenes in Medical Simulation Videos Using Spatio-temporal Gradient Orientations

机译:使用时空梯度方向识别医学仿真视频中的心动肺复苏(CPR)场景

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In this work, we present the application of spatiotemporal three dimensional gradients to detect and classify scenes that involve localized actions like CPR in medical simulation videos. Medical simulations provide a more feasible and comprehensive training to avoid human errors during uncommon clinical situations. Life-like mannequins that can simulate emergency patient conditions are used for this purpose. The physician responsible for these simulations, records each session after which, he manually reviews and annotates the recordings, and then debriefs the trainees. With the increasing number of video recordings, automatic retrieval of specific video segments became necessary. Here we propose an automatic scene retrieval system which can detect and classify scenes into CPR and non-CPR scenes. We use a simple linear SVM classifier for the classification. It provides answers to queries that are of interest to the physician supervising the training sessions such as: "show me all the scenes that have a CPR action from a given video simulation training", or "retrieve time specific data about such critical events as elapsed time between failure of circulation and the initiation of CPR, a measure clearly associated with patient outcome". Our system has the following two main advantages over other existing systems: (1) It does not require video shot segmentation (2) It uses one algorithm and need not be coupled with any other algorithms like image segmentation, skin detection etc. The proposed approach was evaluated and validated using ~30 min video simulation sessions. We show that the proposed approach out performs the state of the art by being able to correctly classify the CPR scenes with an error rate of only 10%.
机译:在这项工作中,我们介绍了时空三维梯度的应用来检测和分类涉及CPR在医学模拟视频中的本地化动作的场景。医疗模拟提供了更加可行和全面的培训,以避免在罕见的临床情况下的人类错误。可以模拟急诊患者条件的生活形式模特用于此目的。负责这些模拟的医生记录每个会议,之后,他手动审查和注释录音,然后汇报受训人员。随着越来越多的视频录制,特定视频段的自动检索成为必要。在这里,我们提出了一个自动场景检索系统,可以检测和对CPR和非CPR场景分类的场景。我们使用简单的线性SVM分类器进行分类。它提供了对监督培训会话感兴趣的查询的答案,例如:“向我展示来自给定视频仿真训练的CPR动作的所有场景,或者”如经过的那样检索关于这些关键事件的时间特定数据循环失败与心肺复苏术失败的时间,一种与患者结果明显相关的措施“。我们的系统具有以下两个主要优点,其他现有系统:(1)它不需要视频拍摄分段(2)它使用一种算法,不需要与任何其他算法相耦合,如图像分割,皮肤检测等。所提出的方法使用〜30分钟的视频仿真会话进行评估和验证。我们表明,通过能够正确对CPR场景正确分类的错误率仅为10%,所提出的方法阐述了最先进的方法。

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