2022
DOI: 10.1007/s10489-022-03937-y
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ConvNet-based performers attention and supervised contrastive learning for activity recognition

Abstract: Human activity recognition based on generated sensor data plays a major role in a large number of applications such as healthcare monitoring and surveillance system. Yet, accurately recognizing human activities is still challenging and active research due to people’s tendency to perform daily activities in a different and multitasking way. Existing approaches based on the recurrent setting for human activity recognition have some issues, such as the inability to process data parallelly, the requirement for mor… Show more

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