Author:
Gómez-Silva María José,de la Escalera sArturo,Armingol José María
Abstract
The automatization of the Re-Identification of an individual across different video-surveillance cameras poses a significant challenge due to the presence of a vast number of potential candidates with a similar appearance. This task requires the learning of discriminative features from person images and a distance metric to properly compare them and decide whether they belong to the same person or not. Nevertheless, the fact of acquiring images of the same person from different, distant and non-overlapping views produces changes in illumination, perspective, background, resolution and scale between the person’s representations, resulting in appearance variations that hamper his/her re-identification. This article focuses the feature learning on automatically finding discriminative descriptors able to reflect the dissimilarities mainly due to the changes in actual people appearance, independently from the variations introduced by the acquisition point. With that purpose, such variations have been implicitly embedded by the Mahalanobis distance. This article presents a learning algorithm to jointly model features and the Mahalanobis distance through a Deep Neural Re-Identification model. The Mahalanobis distance learning has been implemented as a novel neural layer, forming part of a Triplet Learning model that has been evaluated over PRID2011 dataset, providing satisfactory results.
Subject
Artificial Intelligence,Computational Theory and Mathematics,Computer Science Applications,Theoretical Computer Science,Software
Reference99 articles.
1. Automated EEG-based screening of depression using deep convolutional neural network;Acharya;Computer Methods and Programs in Biomedicine,2018
2. Enhanced probabilistic neural network with local decision circles: A robust classifier;Ahmadlou;Integrated Computer-Aided Engineering,2010
3. Ahmed E, Jones M, Marks TK. An improved deep learning architecture for person re-identification. In Proceedings of the IEEE conference on computer vision and pattern recognition. 2015, pp. 3908-3916.
4. A deep-learning-based computer vision solution for construction vehicle detection;Arabi;Computer-Aided Civil and Infrastructure Engineering,2020
5. Avraham T, Gurvich I, Lindenbaum M, Markovitch S. Learning implicit transfer for person re-identification. In European Conference on Computer Vision. Springer. 2012, pp. 381-390.
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