Abstract

Over the past few years, the Internet of Things (IoT) has been greatly developed with one instance being smart home devices gradually entering into people’s lives. To maximize the impact of such deployments, home-based activity recognition is required to initially recognize behaviors within smart home environments and to use this information to provide better health and social care services. Activity recognition has the ability to recognize people’s activities from the information about their interaction with the environment collected by sensors embedded within the home. In this paper, binary data collected by anonymous binary sensors such as pressure sensors, contact sensors, passive infrared sensors etc. are used to recognize activities. A radial basis function neural network (RBFNN) with localized stochastic-sensitive autoencoder (LiSSA) method is proposed for the purposes of home-based activity recognition. An autoencoder (AE) is introduced to extract useful features from the binary sensor data by converting binary inputs into continuous inputs to extract increased levels of hidden information. The generalization capability of the proposed method is enhanced by minimizing both the training error and the stochastic sensitivity measure in an attempt to improve the ability of the classifier to tolerate uncertainties in the sensor data. Four binary home-based activity recognition datasets including OrdonezA, OrdonezB, Ulster, and activities of daily living data from van Kasteren (vanKasterenADL) are used to evaluate the effectiveness of the proposed method. Compared with well-known benchmarking approaches including support vector machine (SVM), multilayer perceptron neural network (MLPNN), random forest and an RBFNN-based method, the proposed method yielded the best performance with 98.35%, 86.26%, 96.31%, 92.31% accuracy on four datasets, respectively.

Highlights

  • Over the past few years, with the development of 5G and the advancement of Internet ProtocolVersion 6 (IPv6), the Internet of Things (IoT) paradigm has been greatly developed [1]

  • We focus on home-based activity recognition, which is mainly used in elderly care service or smart home service provision

  • We proposed a novel hybrid artificial neural network (ANN) model localized stochastic-sensitive autoencoder (LiSSA)-Radial Basis Function (RBF) for the home-based activity recognition problem

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Summary

Introduction

Over the past few years, with the development of 5G and the advancement of Internet Protocol. Collecting information through various sensors can identify an inhabitant’s activities and subsequently, following analysis, provide better services for them To offer such a service requires a fundamental computational process of activity recognition where the data from the sensors embedded within the environment is processed. Home-based activity recognition approaches use sensors to capture various interactive information generated by inhabitants within their home environment, and subsequently extract key information to identify user activities [14]. These methods recognize the activities of daily living, like watching. By contrast with the continuous data collected from cameras or the triaxial acceleration sensor in smart wearable devices, home-based sensors data are mostly binary, which carry less information.

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