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Behavioral feature recognition of multi-task compressed sensing with fusion relevance in the Internet of Things environment

机译:在物联网环境中与融合相关性的多任务压缩检测的行为特征识别

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摘要

With the development of electronic and communication technologies, wireless sensors have been widely used. Human behavior recognition based on micro-inertial sensor is an important application of the Internet of Things, and it has received increasing attention. This paper first introduces the theory of compressed sensing and sparse representation to solve the problem of sensor behavior classification. Aiming at the problem of mull-sensor behavior recognition, an effective result fusion method is proposed. By analyzing the multitask behavior recognition process, the residual model is introduced to effectively integrate the multi-task results and fully exploit the data information. Secondly, in view of the fact that the characteristics of sensor behavior recognition mostly use the time-frequency domain characteristics of digital signal processing, this paper proposes an association feature. In a mull-sensor system, there is a correlation between sensor data at different locations according to human behavior characteristics. The combination of different position sensor information better reflects the human motion characteristics. This feature can effectively mine the potential information in the existing data and improve the behavior recognition rate. Finally, in order to enhance the robustness of the wearable sensing behavior recognition system, the system structure is optimized and analyzed, and the fusion problem of mull-sensor nodes is further studied. In the established decision fusion framework, the adaptive logarithmic optimization pool is used to make decision fusion for the classification posterior probability output of each node, and finally the class of behavior is discriminated. The experimental results show that the proposed method can effectively improve the performance of behavior recognition.
机译:随着电子和通信技术的发展,无线传感器已被广泛使用。基于微惯性传感器的人类行为识别是物联网的重要应用,它受到了不断的关注。本文首先介绍了压缩传感和稀疏表示的理论,以解决传感器行为分类问题。针对MULL传感器行为识别的问题,提出了一种有效的结果融合方法。通过分析多任务行为识别过程,引入了残差模型以有效地集成了多任务结果并充分利用数据信息。其次,鉴于传感器行为识别的特性主要使用数字信号处理的时频域特性,提出了一个关联特征。在MULL传感器系统中,根据人行为特征,在不同位置处的传感器数据之间存在相关性。不同位置传感器信息的组合更好地反映了人的运动特性。此功能可以有效地挖掘现有数据中的潜在信息并提高行为识别率。最后,为了增强可穿戴感测行为识别系统的鲁棒性,优化和分析系统结构,并进一步研究了Mull-Sensor节点的融合问题。在既定的决策融合框架中,自适应对数优化池用于对每个节点的分类后验概率输出进行决策融合,最后区分行为类。实验结果表明,该方法可以有效提高行为识别的性能。

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