Open Access
Open access
PeerJ Computer Science, volume 11, pages e2652

Novel transfer learning approach for hand drawn mathematical geometric shapes classification

Aneeza Alam 1
Ali Raza 2
Nisrean Thalji 3
Laith Abualigah 4, 5, 6, 7
Helena Garay 8, 9, 10
Josep Alemany Iturriaga 10, 11, 12
3
 
Faculty of Computer Studies, Arab Open University, Amman, Jordan
6
 
Applied Science Private University, Applied Science Research Center, Amman, Jordan
9
 
Cuito, Universidade Internacional do Cuanza, Bie, Angola
10
 
Isabel Torres, Universidad de La Romana, La Romana, Dominican Republic
11
 
Universidad Internacional Iberoamericana, Universidad Internacional Iberoamericana, Campeche, Mexico
12
 
Universidad Internacional Iberoamericana Arecibo, Universidad Internacional Iberoamericana Arecibo, Puerto Rico, United States
Publication typeJournal Article
Publication date2025-01-31
scimago Q1
SJR0.876
CiteScore6.1
Impact factor3.5
ISSN23765992
Abstract

Hand-drawn mathematical geometric shapes are geometric figures, such as circles, triangles, squares, and polygons, sketched manually using pen and paper or digital tools. These shapes are fundamental in mathematics education and geometric problem-solving, serving as intuitive visual aids for understanding complex concepts and theories. Recognizing hand-drawn shapes accurately enables more efficient digitization of handwritten notes, enhances educational tools, and improves user interaction with mathematical software. This research proposes an innovative machine learning algorithm for the automatic classification of mathematical geometric shapes to identify and interpret these shapes from handwritten input, facilitating seamless integration with digital systems. We utilized a benchmark dataset of mathematical shapes based on a total of 20,000 images with eight classes circle, kite, parallelogram, square, rectangle, rhombus, trapezoid, and triangle. We introduced a novel machine-learning algorithm CnN-RFc that uses convolution neural networks (CNN) for spatial feature extraction and the random forest classifier for probabilistic feature extraction from image data. Experimental results illustrate that using the CnN-RFc method, the Light Gradient Boosting Machine (LGBM) algorithm surpasses state-of-the-art approaches with high accuracy scores of 98% for hand-drawn shape classification. Applications of the proposed mathematical geometric shape classification algorithm span various domains, including education, where it enhances interactive learning platforms and provides instant feedback to students.

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