Abstract:
Teak timber, scientifically referred to as Tectona grandis, is a timber species of
exceptional value celebrated for its outstanding characteristics and wide-ranging
uses. Teak wood cupboards hold significant value in the furniture industry,
particularly in Sri Lanka, due to their durability, aesthetic appeal, and cultural
significance. However, distinguishing authentic teak wood cupboards from imitations
can be a challenging task, for both consumers and experts. This research presents a
novel approach to address this issue by leveraging machine learning techniques for
the automatic identification of teak wood cupboards. This study is confined to
categorizing a collected dataset of 1060 cupboard images from furniture shops in Sri
Lanka through image preprocessing. In this study, a machine learning model,
specifically a Convolutional Neural Network (CNN), was developed and trained on
a dataset of images of teak wood cupboards and other imitations of wood. The CNN
model can recognize distinct features and patterns that differentiate genuine teak
wood from other types of wood. The model's performance is evaluated, and the results
indicate an accuracy of 89.5%, demonstrating its effectiveness in teak wood cupboard
identification. To mitigate the limitations posed by a relatively small dataset, data
augmentation technique was employed to prevent overfitting. Model performance
was assessed using metrics like precision, recall, and the F-1 score. Additionally, it
can contribute to the preservation of teak wood resources by discouraging the use of
counterfeit materials on the market. The proposed model offers a promising solution
to the problem of identifying teak wood cupboards in Sri Lanka, addressing both
economic and environmental concerns.