International audienceThis paper presents a systematic approach that is able to classify activities of daily living using a wrist-worn triaxial accelerometer. The strategy, which divides the multi-class problem into several binary classification sub-problems, is a mixture of both feature thresholding method and machine learning. The idea behind our design is to separate cyclic activities from transient ones, then to provide explicit recognition in these two categories separately. Experimental results have successfully proven the effectiveness of the proposed activity recognition process. © 2019 IEEE
Physical activity recognition has emerged as an active area of research which has drawn increasing i...
Activity recognition is required in various applications such as motion analysis and health care. Th...
There is an increasing need for personalised and context-aware services in our everyday lives and we...
International audienceThe world is getting older by the minute due to rising life expectancy, leadin...
PURPOSE: Large physical activity surveillance projects such as the UK Biobank and NHANES are using w...
In recent years, significant advancements have taken place in human activity recognition using vario...
Abstract — Automatic recognition of activities using time se-ries data collected from exercise can f...
With their integrated sensors, wrist-worn devices, such as smart watches, provide an ideal platform ...
In 2017, the European Commission estimated that 29% of European population will be aged 65 and over,...
Abstract—Recent development of wearable technology has opened up great opportunities for human perfo...
Inter-subject variability in accelerometer-based activity recognition may significantly affect class...
Human activity recognition via triaxial accelerometers can provide valuable information for evaluati...
Problem addressed Wrist-worn accelerometers are associated with greater compliance. However, validat...
This paper presents an approach to activity recognition using wearable accelerometers. The focus of ...
This paper proposes a system for recognizing hu- man complex activities by using unobtrusive sensors...
Physical activity recognition has emerged as an active area of research which has drawn increasing i...
Activity recognition is required in various applications such as motion analysis and health care. Th...
There is an increasing need for personalised and context-aware services in our everyday lives and we...
International audienceThe world is getting older by the minute due to rising life expectancy, leadin...
PURPOSE: Large physical activity surveillance projects such as the UK Biobank and NHANES are using w...
In recent years, significant advancements have taken place in human activity recognition using vario...
Abstract — Automatic recognition of activities using time se-ries data collected from exercise can f...
With their integrated sensors, wrist-worn devices, such as smart watches, provide an ideal platform ...
In 2017, the European Commission estimated that 29% of European population will be aged 65 and over,...
Abstract—Recent development of wearable technology has opened up great opportunities for human perfo...
Inter-subject variability in accelerometer-based activity recognition may significantly affect class...
Human activity recognition via triaxial accelerometers can provide valuable information for evaluati...
Problem addressed Wrist-worn accelerometers are associated with greater compliance. However, validat...
This paper presents an approach to activity recognition using wearable accelerometers. The focus of ...
This paper proposes a system for recognizing hu- man complex activities by using unobtrusive sensors...
Physical activity recognition has emerged as an active area of research which has drawn increasing i...
Activity recognition is required in various applications such as motion analysis and health care. Th...
There is an increasing need for personalised and context-aware services in our everyday lives and we...