dc.description.abstract |
This study presents a general investigation into the identification of two prominent
indigenous groups in Bangladesh, namely the “Chakma (চাকমা)” and “Marma (মারমা)”,
by the application of convolutional neural networks (CNNs). This work used some
Python-based CNN algorithm and an accompanying web application capable of nearly
accurately recognizing indigenous individuals. The research dataset comprised 664 facial
images, with 328 belonging to the Chakma group and 336 to the Marma group. The
primary objective was to evaluate and identify through comparing the performance of
various CNN models, including ResNet50, VGG16, InceptionV3, and DenseNet121, in
processing these image datasets. Among the tested models, ResNet50 emerged as the
most proficient, achieving a Training Accuracy of 95.85% and a Test Accuracy of
95.52%. These results underscore the exceptional efficiency and adaptability of ResNet50
for the task of indigenous group identification. On the other hand, DenseNet121 got the
highest accuracy in training is 97.92%. But test accuracy is lower than ResNet50, that is
86.57%. Beyond the technical aspects, the project also explores the potential applications
of indigenous group identification, including preservation of cultural heritage,
anthropological research, social justice and human rights advocacy, healthcare and public
services customization, educational representation, forensic identification and customized
services and products development. By shedding light on the utilization of deep learning
techniques for indigenous group identification, this research contributes to both the
academic understanding of computer vision applications and the practical implications
for various societal sectors. Moreover, the developed web application provides a tangible
tool for the recognition and acknowledgment of Bangladesh's diverse indigenous
communities. |
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