AppliedMath (Dec 2023)

Max-<i>C</i> and Min-<i>D</i> Projection Auto-Associative Fuzzy Morphological Memories: Theory and an Application for Face Recognition

  • Alex Santana dos Santos,
  • Marcos Eduardo Valle

DOI
https://doi.org/10.3390/appliedmath3040050
Journal volume & issue
Vol. 3, no. 4
pp. 989 – 1018

Abstract

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Max-C and min-D projection auto-associative fuzzy morphological memories (max-C and min-D PAFMMs) are two-layer feedforward fuzzy morphological neural networks designed to store and retrieve finite fuzzy sets. This paper addresses the main features of these auto-associative memories: unlimited absolute storage capacity, fast retrieval of stored items, few spurious memories, and excellent tolerance to either dilative or erosive noise. Particular attention is given to the so-called Zadeh’ PAFMM, which exhibits the most significant noise tolerance among the max-C and min-D PAFMMs besides performing no floating-point arithmetic operations. Computational experiments reveal that Zadeh’s max-C PFAMM, combined with a noise masking strategy, yields a fast and robust classifier with a strong potential for face recognition tasks.

Keywords