Please use this identifier to cite or link to this item: http://hdl.handle.net/10174/36939

Title: Abandoned Object Detection Using Persistent Homology
Authors: Lamar-Leon, Javier
Alonso Baryolo, Raul
Salgueiro, Pedro
Garcia Reyes, Edel
Gonzalez Diaz, Rocio
Editors: Vasconcelos, Verónica
Domingues, Inês
Paredes, Simão
Keywords: abandoned objects detection
persistent homology
Issue Date: 27-Nov-2023
Publisher: Springer Nature
Citation: Lamar Leon J, Alonso Baryolo R, Garcia Reyes E, Gonzalez Diaz R, Salgueiro P. Abandoned Object Detection Using Persistent Homology. InIberoamerican Congress on Pattern Recognition 2023 Nov 27 (pp. 178-188). Cham: Springer Nature Switzerland.
Abstract: The automatic detection of suspicious abandoned objects has become a priority in video surveillance in the last years. Terror- ist attacks, improperly parked vehicles, abandoned drug packages and many other events, endorse the interest in automating this task. It is challenge to detect such objects due to many issues present in public spaces for video-sequence process, like occlusions, illumination changes, crowded environments, etc. On the other hand, using deep learning can be difficult due to the fact that it is more successful in perceptual tasks and generally what are called system 1 tasks. In this work we propose to use topological features to describe the scenery objects. These features have been used in objects with dynamic shape and maintain the stability under perturbations. The objects (foreground) are the result of to apply a background subtraction algorithm. We propose the concept the surveil- lance points: set of points uniformly distributed on scene. Then we keep track of the changes in a cubic region centered at each surveillance points. For that, we construct a simplicial complex (topological space) from the k foreground frames. We obtain the topological features (using per- sistent homology) in the sub-complexes for each cubical-regions, which represents the activity around the surveillance points. Finally for each surveillance points we keep track of the changes of its associated topo- logical signature in time, in order to detect the abandoned objects. The accuracy of our method is tested on PETS2006 database with promising results
URI: https://doi.org/10.1007/978-3-031-49018-7_13
http://hdl.handle.net/10174/36939
Type: article
Appears in Collections:INF - Artigos em Livros de Actas/Proceedings

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