Abstract

Presently, Person Re-IDentification (PRe-ID) acts as a vital part of real time video surveillance to ensure the rising need for public safety. Resolving the PRe-ID problem includes the process of matching observations of persons among distinct camera views. Earlier models consider PRe-ID as a unique object retrieval issue and determine the retrieval results mainly based on the unidirectional matching among the probe and gallery images. But the accurate matching might not be present in the top-k ranking results owing to the appearance modifications caused by the difference in illumination, pose, viewpoint, and occlusion. For addressing these issues, a new Hyper-parameter Optimized Deep Learning (DL) approach with Expanded Neighborhood Distance Reranking (HPO-DLDN) model is proposed for PRe-ID. The proposed HPO-DLDN involves different processes for PRe-ID, such as feature extraction, similarity measurement, and feature re-ranking. The HPO-DLDN model uses a Adam optimizer with Densely Connected Convolutional Networks (DenseNet169) model as a feature extractor. Additionally, Euclidean distance-based similarity measurement is employed to determine the resemblance between the probe and gallery images. Finally, the HPO-DLDN model incorporated ENDR model to re-rank the outcome of the person-reidentification along with Mahalanobis distance. An extensive experimental analysis is carried out on CUHK01 benchmark dataset and the obtained results verified the effective performance of the HPO-DLDN model in different aspects.

Highlights

  • Person Re-Identification (PRe-ID) aims to recognize a person to be explored in views that are generated by several non-overlapping cameras covering a wider region [1]

  • Initial ranking and re-ranking process is done by the ENDR model with Mahalanobis distance

  • The performance of the proposed HPO-DLDN model has been validated against CUHK01 dataset [17]

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Summary

Introduction

Person Re-Identification (PRe-ID) aims to recognize a person to be explored in views that are generated by several non-overlapping cameras covering a wider region [1]. A person’s existence could be acquired by matching the required person in various perceptions of the camera. When a pedestrian vanishes from the view of a camera and again appears in field of view of alternate camera, PRe-ID process must be applied to find the pedestrian. PRe-ID finds useful in common applications and is highly challenging because of the numerous deviations in pedestrians present in various images and video clippings.

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