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Optimizing Image Feature Extraction and Selection: A Comprehensive Review with Spark Case Studies
  • J. Guzmán Figueira-Domínguez,
  • Beatriz Remeseiro,
  • Verónica Bolón-Canedo
J. Guzmán Figueira-Domínguez
Universidad de Oviedo - Campus de Gijon

Corresponding Author:jguzmanfd@gmail.com

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Beatriz Remeseiro
Universidad de Oviedo - Campus de Gijon
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Verónica Bolón-Canedo
Universidade da Coruna
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Abstract

As benchmark image datasets expand in sample size and feature complexity, the challenge of managing increased dimensionality becomes apparent. Contrary to the expectation that more features equate to enhanced information and improved outcomes, the curse of dimensionality often hampers performance. This paper reviews existing literature on filter feature selection techniques applied to image features, highlighting when they are applied to both classical and deep-learning-based feature extraction methods. Additionally, this study explores how different feature selection methods behave when applied to image features through big data technologies. Different experiments were performed to compare the results when using feature selection techniques with various reduction percentages. Experimental results demonstrated that an important reduction of the extracted features provides classification results similar to those obtained with the full set of features. Furthermore, applying dimensionality reduction techniques outperforms, in some cases, the results achieved using broad feature vectors.
23 Sep 2024Submitted to Expert Systems
03 Oct 2024Submission Checks Completed
03 Oct 2024Assigned to Editor
05 Oct 2024Reviewer(s) Assigned
09 Nov 2024Review(s) Completed, Editorial Evaluation Pending
11 Nov 2024Editorial Decision: Revise Major