학술논문

Multidimensional Sparse Representation for Multishot Person Reidentification
Document Type
Periodical
Source
IEEE Sensors Letters IEEE Sens. Lett. Sensors Letters, IEEE. 3(12):1-4 Dec, 2019
Subject
Components, Circuits, Devices and Systems
Robotics and Control Systems
Communication, Networking and Broadcast Technologies
Signal Processing and Analysis
Dictionaries
Probes
Cameras
Matrix decomposition
Sensors
Machine learning
Sensor signal processing
dictionary learning
multidimensional sparse representation
multishot person reidentification papers
tensor space
Language
ISSN
2475-1472
Abstract
Person reidentification is known as recognizing a subject in diverse scenes obtained from nonoverlapping cameras. To the best of our knowledge, the existing sparse representation approaches for person reidentification need an additional stage for combining a different level of features. In this letter, we propose a new sparse representation approach based on tensor along with the dictionary learning that is able to tackle both the sparse representation of features and the combination of different level of features, simultaneously. First, we construct the feature tensors using images of people. Subsequently, we learn a single cross-view invariant dictionary for representing images from different viewpoints in each tensor mode. The tensor representations of images alleviate the computational complexity of the conventional feature combination approaches, and enhance the reidentification of high dimensional data. Experimental results on iLIDS-VID dataset show the superiority of our method compared to some recent methods.