Following recent works on HRI for UAVs, we present a gesture recognition system which operates on the video stream recorded from a passive monocular camera installed on a quadcopter. While many challenges must be addressed for building a real-time vision-based gestural interface, in this paper we specifically focus on the problem of user personalization. Different users tend to perform the same gesture with different styles and speed. Thus, a system trained on visual sequences depicting some users may work poorly when data from other people are available. On the other hand, collecting and annotating many user-specific data is time consuming. To avoid these issues, in this paper we propose a personalized gestural interface. We introduce a novel transfer learning algorithm which, exploiting both data downloaded from the web and gestures collected from other users, permits to learn a set of person-specific classifiers. We integrate the proposed gesture recognition module into a HRI system...
Personalizing vision-based gestural interfaces for HRI with UAVs: A transfer learning approach / Costante, Gabriele; Bellocchio, Enrico; Valigi, Paolo; Ricci, Elisa. - (2014), pp. 3319-3326. ( 2014 IEEE/RSJ International Conference on Intelligent Robots and Systems, IROS 2014 Chicago, IL 14-18 September, 2014) [10.1109/IROS.2014.6943024].
Personalizing vision-based gestural interfaces for HRI with UAVs: A transfer learning approach
Ricci, Elisa
2014-01-01
Abstract
Following recent works on HRI for UAVs, we present a gesture recognition system which operates on the video stream recorded from a passive monocular camera installed on a quadcopter. While many challenges must be addressed for building a real-time vision-based gestural interface, in this paper we specifically focus on the problem of user personalization. Different users tend to perform the same gesture with different styles and speed. Thus, a system trained on visual sequences depicting some users may work poorly when data from other people are available. On the other hand, collecting and annotating many user-specific data is time consuming. To avoid these issues, in this paper we propose a personalized gestural interface. We introduce a novel transfer learning algorithm which, exploiting both data downloaded from the web and gestures collected from other users, permits to learn a set of person-specific classifiers. We integrate the proposed gesture recognition module into a HRI system...I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione



