Data fusion and multiple classifier systems for human activity detection and health monitoring: Review and open research directions
Autor: | Ying Wah Teh, Ghulam Mujtaba, Henry Friday Nweke, Mohammed Ali Al-Garadi |
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Rok vydání: | 2019 |
Předmět: |
Computer science
business.industry Deep learning Wearable computer 020206 networking & telecommunications 02 engineering and technology Sensor fusion Machine learning computer.software_genre Activity recognition Hardware and Architecture Inertial measurement unit Signal Processing 0202 electrical engineering electronic engineering information engineering Feature (machine learning) Systems design 020201 artificial intelligence & image processing Artificial intelligence business computer Software Wearable technology Information Systems |
Zdroj: | Information Fusion. 46:147-170 |
ISSN: | 1566-2535 |
Popis: | Activity detection and classification using different sensor modalities have emerged as revolutionary technology for real-time and autonomous monitoring in behaviour analysis, ambient assisted living, activity of daily living (ADL), elderly care, rehabilitations, entertainments and surveillance in smart home environments. Wearable devices, smart-phones and ambient environments devices are equipped with variety of sensors such as accelerometers, gyroscopes, magnetometer, heart rate, pressure and wearable camera for activity detection and monitoring. These sensors are pre-processed and different feature sets such as time domain, frequency domain, wavelet transform are extracted and transform using machine learning algorithm for human activity classification and monitoring. Recently, deep learning algorithms for automatic feature representation have also been proposed to lessen the burden of reliance on handcrafted features and to increase performance accuracy. Initially, one set of sensor data, features or classifiers were used for activity recognition applications. However, there are new trends on the implementation of fusion strategies to combine sensors data, features and classifiers to provide diversity, offer higher generalization, and tackle challenging issues. For instances, combination of inertial sensors provide mechanism to differentiate activity of similar patterns and accurate posture identification while other multimodal sensor data are used for energy expenditure estimations, object localizations in smart homes and health status monitoring. Hence, the focus of this review is to provide in-depth and comprehensive analysis of data fusion and multiple classifier systems techniques for human activity recognition with emphasis on mobile and wearable devices. First, data fusion methods and modalities were presented and also feature fusion, including deep learning fusion for human activity recognition were critically analysed, and their applications, strengths and issues were identified. Furthermore, the review presents different multiple classifier system design and fusion methods that were recently proposed in literature. Finally, open research problems that require further research and improvements are identified and discussed. |
Databáze: | OpenAIRE |
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