dc.description.abstract |
The rapid growth of digital music libraries and the volume of Bangla music has increased
the need for efficient and automatic methods to categorize Bangla musical genres. This
study provides a thorough examination of the development and implementation of a new
Bangla Music Genre Classification model. The proposed model uses advanced machine
learning techniques to analyze key elements of Bangla music compositions, allowing for
accurate and efficient genre identification. The approach in this study extracts essential
audio features including tempo, spectral centroid, chroma frequency, spectral rolloff,
RMSE, spectral bandwidth and MFCC, from a complex dataset covering various Bangla
music genres. A modern deep learning algorithm, specifically a convolutional neural
network, is trained on carefully annotated data and uses these features as input. The
research highlights the importance of tailoring feature extraction methods and model
designs to the unique qualities of Bangla music. The model aims to improve the accuracy
and cultural relevance of automated genre identification by addressing the challenges
associated with the diversity within Bangla music. The model is thoroughly tested using
benchmark datasets and its performance is compared with existing genre classification
methods. The outcomes show how adaptable and effective the suggested method is,
especially for Bangla music. This research provides a comprehensive overview of creating
and applying a model for classifying Bangla music genres, offering a reliable and culturally
aware solution for accurate genre classification in Bangla music. It not only addresses the
technical challenges of automated genre identification but also recognizes the unique
cultural aspects inherent in Bangla music. |
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