Automatic Description of Music in Natural Estonian
Date
2021
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Tartu Ülikool
Abstract
Recording and creating music is easier than ever and thanks to the internet, much of
this music is publicly available. Due to the difficulty and time consumption of describing
songs manually, automatic systems are necessary that could do it for us. The field
of music information retrieval (MIR) can help us with this problem. MIR focuses on
extracting useful features from music. Most of these features are not usable directly by
humans. Natural language descriptors that are created based on these features could
provide users with easily understandable ways to receive information about music.
We provide an overview of several tasks in the field of MIR. Our research shows that
neural networks are state-of-the-art for almost all looked at tasks in music information
retrieval. As a result of this thesis a web application was created that performs tempo
estimation, chord recognition, key recognition, form discovery, genre classification and
instrument recognition. Based on the retrieved information a description in natural
Estonian is generated for the user. We found that the only feasible way to create
descriptions was by using templates. For fully automatic description generation, more
descriptive textual data about music is necessary.
Description
Keywords
Music information retrieval, Web application, Python, Music information retrieval modules