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Hierarchical Convolutional Neural Networks Information Fusion for Activity Source Detection in Smart Buildings

机译:分层卷积神经网络信息融合在智能建筑中的活动源检测

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Detecting the source of activities in buildings is of interest to enable the potentials for Smart Buildings in industrial facilities, public infrastructure, hospitals, and commercial or residential buildings. This problem has been addressed using intrusive techniques, including vision-based methods. Recent studies have instead demonstrated that unobtrusive approaches could provide comparable results to the intrusive methods. These methods have the capability to identify and classify atypical floor vibration signals to specific sources, e.g., human fall detection or rotary machines fault detection. Most successful applications of vibration-based monitoring use traditional feature learning methods. These methods extract the temporal and spectral features from the vibration signals, and human experts are involved in selecting the features for classification. However, they typically require a labor-intensive process, which may add uncertainty and bias to the results. Several promising alternatives to these approaches have recently been proposed which take advantage of the time-dependent frequency spectrum of the vibration signals (i.e., spectogram). These representations are then fed into a deep convolutional neural network (CNN) architecture for image-like classification, training an accurate model. However, activty source detection in buildings requires the identification of numerous possible sources (classes), which may lead to low accuracy and confidence in the results. Thus, in this study, we incorporate prior knowledge of a target application, called a hierarchical structure of activity sources (classes). We develop a hierarchical CNN-based technique, which has a relatively easy setup, is modifiable, and has an extendable structure, to use floor vibration signatures to detect the source of activities in a building. We validate the method on a recently released benchmark dataset for human activity identification by implementing a fiat numerous-class CNN-based approach, and the proposed hierarchical CNN-based approach. The results indicate that the hierarchical CNN-based approach outperforms other methods.
机译:检测建筑物中活动的来源对于使工业建筑物,公共基础设施,医院以及商业或住宅建筑物中的智能建筑物具有潜力具有重要意义。已经使用侵入性技术(包括基于视觉的方法)解决了这个问题。相反,最近的研究表明,非侵入性方法可以提供与侵入性方法可比的结果。这些方法具有识别非典型地板振动信号并将其分类到特定来源的能力,例如人跌倒检测或旋转机械故障检测。基于振动的监视的大多数成功应用都使用传统的特征学习方法。这些方法从振动信号中提取时间和频谱特征,并且由人类专家参与选择特征进行分类。但是,它们通常需要劳动密集型过程,这可能会增加不确定性和结果偏差。最近已经提出了这些方法的几种有前途的替代方法,它们利用了振动信号随时间变化的频谱(即频谱图)。然后将这些表示形式输入到深度卷积神经网络(CNN)架构中,以进行类似图像的分类,从而训练出准确的模型。但是,建筑物中的活动源检测需要识别许多可能的源(类别),这可能导致准确性低和结果可信度低。因此,在这项研究中,我们结合了目标应用程序的先验知识,即活动源(类)的层次结构。我们开发了一种基于CNN的分层技术,该技术具有相对容易的设置,可修改的结构和可扩展的结构,可使用地板振动信号来检测建筑物中的活动源。我们通过实施基于命令的基于无数CNN的法定方法和基于CNN的分层方法,在最近发布的用于人类活动识别的基准数据集上验证了该方法。结果表明,基于CNN的分层方法优于其他方法。

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