Improving Face Detection Accuracy: A Fusion of Independent Component Analysis and Convolutional Neural Networks

Authors

  • Raghvendra Singh School of sciences, U.P. Rajarshi Tandon Open University, Prayagraj (U.P) India-211021
  • Rajendra Singh Department of Commerce, DAV, PG, College, Kanpur, (U.P)India-208001
  • Varsha Parihar Department of Mathematics, BN University, Udaipur (Rajasthan)
  • Soniya Gupta Department of Mathematics, Ismail National Mahila (PG) College Meerut(Uttrapradesh)
  • A. K. Malik School of Sciences, UP Rajarshi Tandon Open University, Prayagraj (Uttrapradesh)

Keywords:

Face detection, ICA, CNN, Facial Images. Traditional Methods

Abstract

Face detection is a fundamental task in computer vision, with applications spanning from security and surveillance to human-computer interaction. This research paper introduces an innovative approach to enhance face detection accuracy by combining Independent Component Analysis (ICA) with Convolutional Neural Networks (CNNs). ICA is employed to extract statistically independent features from facial images, which are then used as inputs for a deep CNN architecture. Experimental results demonstrate the superior performance of this fusion approach compared to traditional methods. This paper discusses the implications of this methodology for real-world applications and its potential to transform the field of computer vision.

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Published

2024-09-28

How to Cite

Raghvendra Singh, Rajendra Singh, Varsha Parihar, Soniya Gupta, & A. K. Malik. (2024). Improving Face Detection Accuracy: A Fusion of Independent Component Analysis and Convolutional Neural Networks. Journal of Computational Analysis and Applications (JoCAAA), 33(07), 1360–1369. Retrieved from https://eudoxuspress.com/index.php/pub/article/view/1244

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