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Frequency divergence image: A novel method for action recognition

机译:频散图像:一种新的动作识别方法

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Action recognition systems have the potential to support clinicians, coaches and physical therapists in identifying important adopted movement patterns which could aid injury detection potential or inform rehabilitation strategies. Currently, motion capture systems, structured light pattern and time-of-flight sensors have utilization limitations that place constraints on their use outside of the laboratory setting. For this reason, we propose a system for human action recognition from video. The method presented in this work has utility with patient populations, such as Parkinson's disease, Alzheimer's disease, multiple sclerosis and dementia, outside of laboratory setting to detect the degree of which, and progression of, gait pathology. We developed a novel vision algorithm for template matching-the characterization of the motion in a video sequence. The method, titled Frequency Divergence Image, is a paradigm shift in template matching methods. Template matching methods measure macro-motion, whereas the proposed method detects micro-motion that differs from the flow of the action. We show that micro-cues improve prediction performance of human action on a real-world data set. We demonstrate a 9.15% improvement in classification accuracy over the original Motion History Image formulation when used with a convolutional neural network. Future work will focus on the deployment of the system to identify gait pathology from various patient populations.
机译:动作识别系统有可能支持临床医生,教练和物理治疗师确定重要的采用的运动方式,这可能有助于潜在的伤害检测或为康复策略提供依据。当前,运动捕捉系统,结构化的光图案和飞行时间传感器具有利用率限制,这限制了它们在实验室环境之外的使用。因此,我们提出了一种用于从视频中识别人类动作的系统。这项工作中介绍的方法可用于实验室人群以外的患者人群,如帕金森氏病,阿尔茨海默氏病,多发性硬化症和痴呆症,以检测步态病理的程度和进展。我们开发了一种用于模板匹配的新颖视觉算法-视频序列中运动的表征。名为“频散图像”的方法是模板匹配方法中的范式转换。模板匹配方法可测量宏观运动,而所提出的方法可检测与动作流程不同的微观运动。我们表明,微线索可以改善现实世界数据集上人类行为的预测性能。当与卷积神经网络一起使用时,我们证明了分类精度比原始运动历史图像公式提高了9.15%。未来的工作将集中在系统的部署上,以从各种患者人群中识别步态病理。

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