Abstract

Video Analytics applications like security and surveillance face a critical problem of person re-identification abbreviated as re-ID. The last decade witnessed the emergence of large-scale datasets and deep learning methods to use these huge data volumes. Most current re-ID methods are classified into either image-based or video-based re-ID. Matching persons across multiple camera views have attracted lots of recent research attention. Feature representation and metric learning are major issues for person re-identification. The focus of re-ID work is now shifting towards developing end-to-end re-Id and tracking systems for practical use with dynamic datasets. Most previous works contributed to the significant progress of person re-identification on still images using image retrieval models. This survey considers the more informative and challenging video-based person re-ID problem, pedestrian re-ID in particular. Publicly available datasets and codes are listed as a part of this work. Current trends which include open re-identification systems, use of discriminative features and deep learning is marching towards new applications in security and surveillance, typically for tracking.

Highlights

  • Video Analytics applications like security and surveillance face a critical problem of person re-identification abbreviated as re-ID

  • The main objective of re-identification system is to find a person who appeared at instances and locations in the nonoverlapping camera network

  • The basics of person re-identification abbreviated as reID are to compare a sought person or group(s) as seen in query image to a dataset or gallery of persons or group(s)

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Summary

Introduction

Video Analytics applications like security and surveillance face a critical problem of person re-identification abbreviated as re-ID. Most previous works contributed to the significant progress of person re-identification on still images using image retrieval models This survey considers the more informative and challenging video-based person re-ID problem, pedestrian re-ID in particular. Current trends which include open re-identification systems, use of discriminative features and deep learning is marching towards new applications in security and surveillance, typically for tracking. Image-based person re-ids are generally categorized in feature representation and distance learning-based methods. Person re-id methods working on distance metrics learning are found effectiveness These methods are basically evolved for image-based. Apart from the volume, there exist large variation between different videos of pedestrian, even it is observed within each video, too. Variations in different frames of the same video are referred to as intra-video variations

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