Prediction of Star Polygon Types in Islamic Geometric Patterns with Deep Learning
Citation
AĞIRBAŞ, Aslı & Merve AYDIN. "Prediction of Star Polygon Types in Islamic Geometric Patterns with Deep Learning". Nexus Network Journal, 26.2 (2024): 1-20.Abstract
Historical buildings in the Eastern world of architecture host many Islamic geometric
patterns which are known as mathematically sophisticated patterns regarding their
period of creation. This study focuses on the preparation of a model that can be
helpful for the analysis and restoration/maintenance of these patterns. For this, a
deep learning model to detect and classify star types in Islamic geometric patterns
has been proposed, and the trials were evaluated. Accordingly, this study presents a
database containing 5-pointed, 6-pointed, 8-pointed and 12-pointed star types. The
database consists of 600 Islamic geometric patterns. A mask RCNN algorithm was
trained to detect and classify star types using the prepared database. The results of
the training indicate that the loss value is 0.90 and the validation loss value is 0.85.
The algorithm was tested using images that it had not seen before and the results
were evaluated. This paper presents a discussion on the pros and cons of the trained
algorithm.