Stop@: A framework for scalable and noise-resistant stop-move segmentation of large datasets of trajectories in outdoor and indoor spaces
Articolo
Data di Pubblicazione:
2024
Citazione:
Stop@: A framework for scalable and noise-resistant stop-move segmentation of large datasets of trajectories in outdoor and indoor spaces / F. Hachem, M.L. Damiani. - In: SOFTWAREX. - ISSN 2352-7110. - 27:(2024 Sep), pp. 101815.1-101815.7. [10.1016/j.softx.2024.101815]
Abstract:
Capturing the mobility behavior of moving entities from their traces is a prominent theme in mobility data
science. Stop@ supports behavior analysis by providing a generic framework for the mining of stop-move
patterns in spatial trajectories across animal and human mobility scenarios. The framework is built around
a stop detection method, successfully used in diverse applications in animal ecology. The method has been
recently validated against accurate ground truth stops collected in a museum, proving to be effective and
robust, also for the study of human mobility. Stop@ provides a rich set of functionalities to facilitate the
stop-move analysis, including the parallel processing of large datasets of trajectories collected outdoor and
indoor.
Tipologia IRIS:
01 - Articolo su periodico
Keywords:
human and animal mobility; trajectories; stop-move detection; mobility data analytics
Elenco autori:
F. Hachem, M.L. Damiani
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