GWO-Based Joint Optimization of Millimeter-Wave System and Multilayer Perceptron for Archaeological Application.

Sensors (Basel)

Universite Cote d'Azur, Laboratoire d'Electronique, Antennes et Telecommunications (LEAT), Campus SophiaTech, Bât. Forum, 930 Route des Colles- BP 145, 06903 Sophia Antipolis, France.

Published: April 2024

AI Article Synopsis

  • A new method using low THz radar has emerged for classifying pottery shards in archaeology, which helps understand agricultural origins in Europe.
  • The study focuses on designing an efficient radar system and neural network that minimizes sensor use while maximizing accuracy, particularly in reducing false recognition rates.
  • A newly developed optimization technique, called CBTGWO, significantly reduces the number of sensors needed for classification, achieving excellent false recognition rates and faster acquisition times compared to previous methods.

Article Abstract

Recently, low THz radar-based measurement and classification for archaeology emerged as a new imaging modality. In this paper, we investigate the classification of pottery shards, a key enabler to understand how the agriculture was introduced from the Fertile Crescent to Europe. Our purpose is to jointly design the measuring radar system and the classification neural network, seeking the maximal compactness and the minimal cost, both directly related to the number of sensors. We aim to select the least possible number of sensors and place them adequately, while minimizing the false recognition rate. For this, we propose a novel version of the Binary Grey Wolf Optimizer, designed to reduce the number of sensors, and a Ternary Grey Wolf Optimizer. Together with the Continuous Grey Wolf Optimizer, they yield the CBTGWO (Continuous Binary Ternary Grey Wolf Optimizer). Working with 7 frequencies and starting with 37 sensors, the CBTGWO selects a single sensor and yields a 0-valued false recognition rate. In a single-frequency scenario, starting with 217 sensors, the CBTGWO selects 2 sensors. The false recognition rate is 2%. The acquisition time is 3.2 s, outperforming the GWO and adaptive mixed GWO, which yield 86.4 and 396.6 s.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11086245PMC
http://dx.doi.org/10.3390/s24092749DOI Listing

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