1669277815685

Authors: false; 345 E 47TH ST, NEW YORK, NY 10017 USA IEEE INT CONF ROBOT

Journal: Goal 11: Sustainable cities and communities###25130

Conference: cp

Publisher: In this work, we describe a novel method for creating 3D models of persons freely moving in front of a consumer depth sensor and we show how they can be used for long-term person re-identification. For overcoming the problem of the different poses a person can assume, we exploit the information provided by skeletal tracking algorithms for warping every point cloud frame to a standard pose in real time. Then, the warped point clouds are merged together to compose the model. Re-identification is performed by matching body shapes in terms of whole point clouds warped to a standard pose with the described method. We compare this technique with a classification method based on a descriptor of skeleton features and with a mixed approach which exploits both skeleton and shape features. We report experiments on two datasets we acquired for RGB-D re-identification which use different skeletal tracking algorithms and which are made publicly available to foster research in this new research branch.

Published: 2022/11/24 09:16:55

DOI: 60000481||60000481||60025858||60025858||60000481

Volume: Munaro||Basso||Fossati||Van Gool||Menegatti, Issue: GDR-2343-2022||DUY-8155-2022||AAN-3814-2020||GLP-7464-2022||GEW-8545-2022, Pages: Matteo||Alberto||Andrea||Luc||Emanuele-Intelligent Autonomous Syst Lab IAS Lab||Intelligent Autonomous Syst Lab IAS Lab||Comp Vis Lab||Comp Vis Lab||Intelligent Autonomous Syst Lab IAS Lab

Keywords: 9781479936854