Spatio-temporal representation for long-term anticipation of human presence in service robotics
Affiliation auteurs | !!!! Error affiliation !!!! |
Titre | Spatio-temporal representation for long-term anticipation of human presence in service robotics |
Type de publication | Conference Paper |
Year of Publication | 2019 |
Auteurs | Vintr T, Yan Z, Duckett T, Krajnik T |
Editor | Howard A, Althoefer K, Arai F, Arrichiello F, Caputo B, Castellanos J, Hauser K, Isler V, Kim J, Liu H, Oh P, Santos V, Scaramuzza D, Ude A, Voyles R, Yamane K, Okamura A |
Conference Name | 2019 INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA) |
Publisher | Bosch; DJI; Kinova; Mercedes Benz; Samsung; Argo AI; Clearpath Robot; Element AI; Fetch Robot; Huawei; iRobot; KUKA; Quanser; SICK; Toyota Res Inst; Uber; Waymo; Zhejiang Lab; Amazon; Applanix; Cloudminds; Honda Res Inst; MathWorks; Ouster |
Conference Location | 345 E 47TH ST, NEW YORK, NY 10017 USA |
ISBN Number | 978-1-5386-6026-3 |
Résumé | We propose an efficient spatio-temporal model for mobile autonomous robots operating in human populated environments. Our method aims to model periodic temporal patterns of people presence, which are based on peoples' routines and habits. The core idea is to project the time onto a set of wrapped dimensions that represent the periodicities of people presence. Extending a 2D spatial model with this multidimensional representation of time results in a memory efficient spatio-temporal model. This model is capable of long-term predictions of human presence, allowing mobile robots to schedule their services better and to plan their paths. The experimental evaluation, performed over datasets gathered by a robot over a period of several weeks, indicates that the proposed method achieves more accurate predictions than the previous state of the art used in robotics. |