Depthcamerasenablepersonre-identificationexploiting3Dinformationthatcapturesbiometriccuessuchasfaceandcharacteristic lengths of the body. In the typical approach, person re-identification is performed using appearance, thus invalidating any application in which a person may change dress across subsequent acquisitions. For example, this is a relevant scenario for home patient monitoring. Unfortunately, face and skeleton quality is not always enough to grant a correct recognition from depth data. Both features are affected by the pose of the subject and the distance from the camera. In this paper, we propose a model to incorporate a robust skeleton representation with a highly discriminative face feature, weighting samples by their quality. Our method combining face and skeleton data improves rank-1 accuracy compared to individual cues especially on short realistic sequences.
Person Re-Identification from Depth Cameras using Skeleton and 3D Face Data / P. Pala, L. Seidenari, S. Berretti, A. Del Bimbo. - STAMPA. - (2018), pp. 1-7. (Intervento presentato al convegno 11th Eurographics Workshop on 3D Object Retrieval} (3DOR 2018) tenutosi a Delft, Olanda nel 15-16 Maggio, 2018).
Person Re-Identification from Depth Cameras using Skeleton and 3D Face Data
P. Pala;L. Seidenari;S. Berretti
;A. Del Bimbo
2018
Abstract
Depthcamerasenablepersonre-identificationexploiting3Dinformationthatcapturesbiometriccuessuchasfaceandcharacteristic lengths of the body. In the typical approach, person re-identification is performed using appearance, thus invalidating any application in which a person may change dress across subsequent acquisitions. For example, this is a relevant scenario for home patient monitoring. Unfortunately, face and skeleton quality is not always enough to grant a correct recognition from depth data. Both features are affected by the pose of the subject and the distance from the camera. In this paper, we propose a model to incorporate a robust skeleton representation with a highly discriminative face feature, weighting samples by their quality. Our method combining face and skeleton data improves rank-1 accuracy compared to individual cues especially on short realistic sequences.I documenti in FLORE sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.