HUMAN RE-IDENTIFICATION USING COLOUR AND TEXTURE FEATURES
Keywords:
Re-Identification, Colour Features, Histogram of Gradients, Texture Features, Local Binary Patte.Abstract
Human Re-Identification turns out to be the most fascinating and perplexing tasks in the domain of smart video
surveillance in recent time. Re-Identification is crucial in establishing reliable tagging of person across multiple cameras or
even within the same camera to re-establish detached or lost tracks. The challenge in Person Re-Identification lies due to the
visual and spatio-temporal uncertainty in the appearance of the person’s across multiple cameras. Here, a viewpoint invariant
human re-identification framework with colour and texture features is proposed. The descriptor encodes the visual features
of the human from the chromatic content described by colour statistical features, Local Binary histogram and Histogram of
Gradients derived from wavelet transformed input image. Similarity measure is found by the Euclidean distance measured
between the extracted feature descriptors from the non-overlapping cameras. From the experimental results it is observed
that the proposed system significantly out performs state-of-the-art algorithms on the VIPeR Human Re-identification
dataset.
Metrics
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2021 Pakistan Journal of Biotechnology
This work is licensed under a Creative Commons Attribution 4.0 International License.