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Action Detection and Recognition in Continuous Action Streams by Deep Learning-Based Sensing Fusion

机译:基于深度学习的感知融合在连续动作流中的动作检测与识别

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This paper presents a deep learning-based sensing fusion system to detect and recognize actions of interest from continuous action streams, which contain actions of interest occurring continuously and randomly among arbitrary actions of non-interest. The sensors used in the fusion system consist of a depth camera and a wearable inertial sensor. A convolutional neural network is utilized for depth images obtained from the depth sensor, and a combination of convolutional neural network and long short-term memory network is utilized for inertial signals obtained from the inertial sensor. Each sensing modality first performs segmentation of all actions and then detection of actions of interest for a particular application. A decision-level fusion of the two sensing modalities is carried out to achieve the recognition of the detected actions of interest. The developed fusion system is examined for two applications: one involving transition movements for home healthcare monitoring and the other involving smart TV hand gestures. The results obtained show the effectiveness of the developed fusion system in dealing with realistic continuous action streams.
机译:本文提出了一种基于深度学习的感知融合系统,用于从连续动作流中检测和识别感兴趣的动作,该连续动作流包含在任意非感兴趣动作中连续且随机发生的感兴趣动作。融合系统中使用的传感器由深度相机和可穿戴惯性传感器组成。卷积神经网络用于从深度传感器获得的深度图像,而卷积神经网络和长短期记忆网络的组合用于从惯性传感器获得的惯性信号。每个感测模态首先执行所有动作的分段,然后检测特定应用感兴趣的动作。对两种传感方式进行决策级融合,以实现对检测到的感兴趣动作的识别。对开发的融合系统进行了两种应用检查:一种涉及用于家庭医疗保健监控的过渡动作,另一种涉及智能电视手势。获得的结果表明,开发的融合系统在处理现实连续动作流方面的有效性。

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