Indonesian Journal of Electrical Engineering and Computer Science
Vol 36, No 2: November 2024

Enhanced Bengali audio categorization using audio segmentation and deep learning

Khan, Niaz Ashraf (Unknown)
Bin Hafiz, Md. Ferdous (Unknown)



Article Info

Publish Date
01 Nov 2024

Abstract

This paper presents an enhanced approach for classifying Bengali songs into different genres by leveraging feature importance analysis and deep learning techniques. The research addresses the challenge of limited data points in the Bengali Song Dataset by employing strategies, including audio segmentation and feature importance analysis, to enhance model performance. Multiple machine learning and deep learning architectures are evaluated to identify the most effective models for Bengali song classification. Additionally, this research conducts feature importance analysis to identify significant audio features contributing to classification accuracy. The best-performing deep learning model achieves an impressive validation accuracy of 94.17%, showcasing the project efficacy of the proposed methodology. Our findings highlight the effectiveness of our proposed methodology, demonstrating significant improvements in classification accuracy and contributing to advancements in Bengali music classification research.

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