Continuous Adaptation of Multi-Camera Person Identification Models through Sparse Non-redundant Representative Selection
Abir Das, Rameswar Panda, Amit K. Roy-Chowdhury

TL;DR
This paper introduces an online, sparse sampling method for multi-camera person identification that reduces manual labeling and training effort while maintaining high accuracy in large-scale, multi-sensor environments.
Contribution
It proposes a convex optimization framework for selecting informative samples and a structure-preserving classifier for efficient online model updates in person re-identification.
Findings
Achieves superior re-identification accuracy with less manual labeling.
Reduces training burden through sparse reconstruction-based classifiers.
Demonstrates effectiveness on three benchmark datasets.
Abstract
The problem of image-base person identification/recognition is to provide an identity to the image of an individual based on learned models that describe his/her appearance. Most traditional person identification systems rely on learning a static model on tediously labeled training data. Though labeling manually is an indispensable part of a supervised framework, for a large scale identification system labeling huge amount of data is a significant overhead. For large multi-sensor data as typically encountered in camera networks, labeling a lot of samples does not always mean more information, as redundant images are labeled several times. In this work, we propose a convex optimization based iterative framework that progressively and judiciously chooses a sparse but informative set of samples for labeling, with minimal overlap with previously labeled images. We also use a structure…
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