Development of a deep learning system for hummed melody identification for BertsoBot
View/ Open
Date
2020-10-09Author
Alkorta Zabaleta, Asier
Metadata
Show full item recordAbstract
The system introduced in this work tries to solve the problem of melody
classification. The proposed approach is based on extracting the spectrogram of the
audio of each melody and then using deep supervised learning approaches to classify
them into categories.
As found out experimentally, the Transfer Learning technique is required
alongside Data Augmentation in order to improve the accuracy of the system.
The results shown in this thesis, focus further work on this field by providing
insight on the performance of different tested Learning Models.
Overall, DenseNets have proved themselves the best architectures o use in
this context reaching a significant prediction accuracy.