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Impact of Kernel-PCA on Different Features for Person Re-Identification
Author(s) -
Md Kamal Uddin,
Amran Bhuiyan,
Mahmudul Hasan
Publication year - 2021
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.k9457.09101121
Subject(s) - artificial intelligence , kernel (algebra) , computer science , identification (biology) , kernel principal component analysis , feature (linguistics) , pattern recognition (psychology) , principal component analysis , feature vector , dimension (graph theory) , dimensionality reduction , kernel method , machine learning , support vector machine , mathematics , linguistics , botany , philosophy , combinatorics , pure mathematics , biology
In the driving field of computer vision, re-identification of an individual in a camera network is very challenging task. Existing methods mainly focus on strategies based on feature learning, which provide feature space and force the same person to be closer than separate individuals. These methods rely to a large extent on high-dimensional feature vectors to achieve high re-identification accuracy. Due to computational cost and efficiency, they are difficult to achieve in practical applications. We comprehensively analyzed the effect of kernel-based principal component analysis (PCA) on some existing high-dimensional person re-identification feature extractors to solve these problems. We initially formulate a kernel function on the extracted features and then apply PCA, significantly reducing the feature dimension. After that, we have proved that the kernel is very effective on different state-of-the-art high-dimensional feature descriptors. Finally, a thorough experimental evaluation of the reference person re-identification data set determined that the prediction method was significantly superior to more advanced techniques and computationally feasible.

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