Title :
A frontal view gait recognition based on 3D imaging using a time of flight camera
Author :
Afendi, Tengku ; Kurugollu, Fatih ; Crookes, D. ; Bouridane, Ahmed
Author_Institution :
ECIT Inst., Queen´s Univ. Belfast, Belfast, UK
Abstract :
Studies have been carried out to recognize individuals from a frontal view using their gait patterns. In previous work, gait sequences were captured using either single or stereo RGB camera systems or the Kinect 1.0 camera system. In this research, we used a new frontal view gait recognition method using a laser based Time of Flight (ToF) camera. In addition to the new gait data set, other contributions include enhancement of the silhouette segmentation, gait cycle estimation and gait image representations. We propose four new gait image representations namely Gait Depth Energy Image (GDE), Partial GDE (PGDE), Discrete Cosine Transform GDE (DGDE) and Partial DGDE (PDGDE). The experimental results show that all the proposed gait image representations produce better accuracy than the previous methods. In addition, we have also developed Fusion GDEs (FGDEs) which achieve better overall accuracy and outperform the previous methods.
Keywords :
discrete cosine transforms; gait analysis; image colour analysis; image enhancement; image representation; image segmentation; stereo image processing; 3D imaging; GDE; Gait Depth Energy Image; PDGDE; ToF camera; discrete cosine transform GDE; frontal view gait recognition method; gait cycle estimation; gait image enhancement; gait image representations; partial DGDE; partial GDE; silhouette segmentation; stereo RGB camera systems; time of flight camera; Accuracy; Cameras; Gait recognition; Image representation; Legged locomotion; Three-dimensional displays; Biometrics; Gait data set; Gait recognition; Time of Flight;
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2014 Proceedings of the 22nd European
Conference_Location :
Lisbon