2020
DOI: 10.1007/978-3-030-45778-5_6
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Language Model Co-occurrence Linking for Interleaved Activity Discovery

Abstract: As ubiquitous computer and sensor systems become abundant, the potential for automatic identification and tracking of human behaviours becomes all the more evident. Annotating complex human behaviour datasets to achieve ground truth for supervised training can however be extremely labour-intensive, and error prone. One possible solution to this problem is activity discovery: the identification of activities in an unlabelled dataset by means of an unsupervised algorithm. This paper presents a novel approach to … Show more

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“…Decision Tree (DT) classifier [ 36 ] has the preferable performance in recognizing daily activities. Deep neural language model is exploited for the discovery of interleaved and overlapping activities [ 37 ]. The model builds hierarchical activities and captures the inherent complexities in activity details.…”
Section: Related Workmentioning
confidence: 99%
“…Decision Tree (DT) classifier [ 36 ] has the preferable performance in recognizing daily activities. Deep neural language model is exploited for the discovery of interleaved and overlapping activities [ 37 ]. The model builds hierarchical activities and captures the inherent complexities in activity details.…”
Section: Related Workmentioning
confidence: 99%