Scopus Indexed Publications

Paper Details


Title
Traditional Art and Craft Item Recognition Using Deep Learning

Author
Tawhid Ahmed Komol, Pulak Deb Nath, Rinvi Jaman Riti, Shayla Sharmin, Sheak Rashed Haider Noori, Shrabon Datta,

Email

Abstract

Recognizing and preserving traditional art and craft is essential to save cultural heritage and gain global acceptance. To promote our culture and tradition worldwide, this research uses deep learning methods to classify traditional art and craft products from Bengal. We scraped 1,872 photos from online and divided into nine categories to create the dataset. Our methodology includes 80:20 train-test, data labelling, and image augmentation. Apart from that we trained InceptionResNetV2, Xception and VGG16. The Inception-ResNetV2 outperformed all other models with an accuracy of 95.73%. Model performance was measureable via metrics like confusion matrices, classification report and train & validation accuracy loss curve. The results demonstrate the impressive adaptive capabilities of transfer learning models spotting the items of traditional art and craft using InceptionResNetV2.


Keywords

Journal or Conference Name
2025 International Conference on Electrical, Computer and Communication Engineering, ECCE 2025

Publication Year
2025

Indexing
scopus