Activity recognition is a key task for the
development of advanced and effective ubiquitous applications in fields like ambient
assisted living. A major problem in designing effective recognition algorithms
is the difficulty of incorporating long-range dependencies between distant time
instants without incurring substantial increase in computational complexity of
inference. In this paper we present a novel approach for introducing long-range
interactions based on sequential pattern mining. The algorithm searches for
patterns characterizing time segments during which the same activity is
performed. A probabilistic model is learned to represent the distribution of
pattern matches along sequences, trying to maximize the coverage of an activity
segment by a pattern match. The model is integrated in a segmental labeling
algorithm and applied to novel sequences, tagged according to matches of the
extracted patterns. The rationale of the approach is that restricting
dependencies to span the same activity segment (i.e., sharing the same label),
allows keeping inference tractable. An experimental evaluation shows that
enriching sensor-based representations with the mined patterns allows improving
results over sequential and segmental labeling algorithms in most of the cases.
An analysis of the discovered patterns highlights non-trivial interactions
spanning over a significant time horizon.
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