Please use this identifier to cite or link to this item: http://dspace.iitrpr.ac.in:8080/xmlui/handle/123456789/403
Title: Multi-label learning for activity recognition
Authors: Kumar, R.
Qamar, I.
Virdi, J.S.
Krishnan, N.C.
Keywords: Human activity recognition (HAR)
Multi-label learning
Issue Date: 18-Nov-2016
Abstract: Advances in pervasive and ubiquitous computing have resulted in the development of sensors that can be easily deployed in the natural habitat of a human to acquire activity related data. However, inferring meaningful activity information from sensor data is still a challenging problem. This paper addresses the problem of inferring activities that are simultaneously performed by multiple residents in a smart home or single resident performing multiple activities concurrently. The paper formulates this problem as learning multiple activity labels from a sequence of sensor data. It investigates the suitability of multi-label learning algorithms inspired by decision trees as a proposed solution to the problem. The results obtained from the experiments on four benchmarking multi-resident activity datasets clearly indicate the superiority of decision tree ensemble (random forests) based approaches for multi-label learning
URI: http://localhost:8080/xmlui/handle/123456789/403
Appears in Collections:Year-2015

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