Archaeological and experimental lithic microwear classification through 2D textural analysis and machine learning

Author:

Sferrazza Paolo

Abstract

Abstract

The paper focuses on introducing 2D texture analysis as a quantitative method for functional analysis in archaeology. Indeed, for the first time, different techniques of quantitative feature extraction and machine learning algorithms applied to the functional analysis of archaeological lithic tools are described and compared. The method presented relies on five techniques of quantitative feature extraction from photographic images and six classification techniques through machine learning algorithms. After creating a training dataset with experimental traces, machine learning models were used to classify 23 images (10 experimental and 13 archaeological). The best result achieved a classification accuracy of 87%, demonstrating the ability to interpret use-wear traces correctly on both experimental and archaeological artefacts regardless of the geological origin of the flint (Sicily in Italy and Sachsen-Anhalt in Germany). The paper proposes to use the method as a fundamental tool in functional analysis to remove subjectivity criteria from traditional analysis and to address issues related to the credibility of the discipline, calibration, standardisation, and reproducibility of methods and results.

Publisher

Research Square Platform LLC

Reference97 articles.

1. Adán, M., Barceló, J. A., Pijoan-López, J., Piqué, R., & Toselli, A. (2003). Spatial statistics in archaeological texture analysis. In: M., Doerr, & A., Sarris (Eds.), The Digital Heritage of Archaeology. Computer Applications and Quantitative Methods in Archaeology (Athens, pp.126–135).

2. Multi-Layer Perceptron Training Optimization Using Nature Inspired Computing;Al Bataineh A;Ieee Access : Practical Innovations, Open Solutions,2022

3. Effectiveness evaluation of different feature extraction methods for classification of covid-19 from computed tomography images: A high accuracy classification study;Al-Areqi F;Biomedical Signal Processing and Control,2022

4. Insights from a tribological analysis of the tribulum;Anderson PA;Journal of Archaeological Science,2006

5. Texture image analysis and the classification methods - a review;Armi1 L;International Online Journal of Image Processing and Pattern Recognition,2019

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