Abstract

With the widespread use of surveillance image cameras and enhanced awareness of public security, objects, and persons Re-Identification (ReID), the task of recognizing objects in non-overlapping camera networks has attracted particular attention in computer vision and pattern recognition communities. Given an image or video of an object-of-interest (query), object identification aims to identify the object from images or video feed taken from different cameras. After many years of great effort, object ReID remains a notably challenging task. The main reason is that an object’s appearance may dramatically change across camera views due to significant variations in illumination, poses or viewpoints, or even cluttered backgrounds. With the advent of Deep Neural Networks (DNN), there have been many proposals for different network architectures achieving high-performance levels. With the aim of identifying the most promising methods for ReID for future robust implementations, a review study is presented, mainly focusing on the person and multi-object ReID and auxiliary methods for image enhancement. Such methods are crucial for robust object ReID, while highlighting limitations of the identified methods. This is a very active field, evidenced by the dates of the publications found. However, most works use data from very different datasets and genres, which presents an obstacle to wide generalized DNN model training and usage. Although the model’s performance has achieved satisfactory results on particular datasets, a particular trend was observed in the use of 3D Convolutional Neural Networks (CNN), attention mechanisms to capture object-relevant features, and generative adversarial training to overcome data limitations. However, there is still room for improvement, namely in using images from urban scenarios among anonymized images to comply with public privacy legislation. The main challenges that remain in the ReID field, and prospects for future research directions towards ReID in dense urban scenarios, are also discussed.

Highlights

  • The task of object ReID on image cameras has been studied for several years by the computer vision and pattern recognition communities [1], with the primary goal to ReID a query object among different cameras.Multi-object ReID, based on a wide range of surveillance cameras, is nowadays a vital aspect in modern cities, to better understand city movement patterns among the different infrastructures [2], with the primary intention of rapidly mitigate abnormal situations, such as tracking car thieves, wanted persons, or even lost children.This is still a challenging task, since an object’s appearance may dramatically change across camera views due to the significant variations in illumination, poses or viewpoints, or even cluttered backgrounds [2] (Figure 1)

  • Curve is built by averaging the shifted step functions over all the queries. Another commonly used metric is the mean Average Precision, which is very often employed on each image query, and defined as: Q

  • Extensive experiments were conducted in the Market-1501, DukeMTMC-reID, CUHK03 and MSMT17 person ReID benchmarks datasets, with the proposed model achieving a mean Average Precision (mAP) of 94.2% in Market-1501

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Summary

Introduction

Multi-object ReID, based on a wide range of surveillance cameras, is nowadays a vital aspect in modern cities, to better understand city movement patterns among the different infrastructures [2], with the primary intention of rapidly mitigate abnormal situations, such as tracking car thieves, wanted persons, or even lost children. This is still a challenging task, since an object’s appearance may dramatically change across camera views due to the significant variations in illumination, poses or viewpoints, or even cluttered backgrounds [2] (Figure 1). Distinguishable local features are used to capture subtle invariant features that are often combined in a fusion scheme

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