Title
Towards View-Point Invariant Person Re-Identification Via Fusion Of Anthropometric And Gait Features From Kinect Measurements
Abstract
In this work, we present view-point invariant person re-identification (Re-ID) by multi-modal feature fusion of 3D soft biometric cues. We exploit the MS Kinect (TM) sensor v.2, to collect the skeleton points from the walking subjects and leverage both the anthropometric features and the gait features associated with the person. The key proposals of the paper are two fold: First, we conduct an extensive study of the influence of various features both individually and jointly (by fusion technique), on the person Re-ID. Second, we present an actual demonstration of the view-point invariant Re-ID paradigm, by analysing the subject data collected in different walking directions. Focusing the latter, we further analyse three different categories which we term as pseudo, quasi and full view-point invariant scenarios, and evaluate our system performance under these various scenarios. Initial pilot studies were conducted on a new set of 20 people, collected at the host laboratory. We illustrate, for the first time, gait-based person re-identification with truly view-point invariant behaviour, i.e. the walking direction of the probe sample being not represented in the gallery samples.
Year
DOI
Venue
2017
10.5220/0006165301080119
PROCEEDINGS OF THE 12TH INTERNATIONAL JOINT CONFERENCE ON COMPUTER VISION, IMAGING AND COMPUTER GRAPHICS THEORY AND APPLICATIONS (VISIGRAPP 2017), VOL 5
Keywords
Field
DocType
Person Re-identification, Biometrics, Anthropometrics, Gait, Kinect, Data Fusion
Computer vision,Gait,Pattern recognition,Computer science,Fusion,Invariant (mathematics),Artificial intelligence
Conference
Citations 
PageRank 
References 
0
0.34
0
Authors
4
Name
Order
Citations
PageRank
Athira. M. Nambiar1244.56
Alexandre Bernardino271078.77
Jacinto C. Nascimento339640.94
Ana L. N. Fred41317195.30