Music Expression Understanding Based on a Joint Semantic Space
نویسندگان
چکیده
A paradigm for music expression understanding based on a joint semantic space, described by both affective and sensorial adjectives, is presented. Machine learning techniques were employed to select and validate relevant low level features, and an interpretation of the clustered organization based on action and physical analogy is proposed.
منابع مشابه
Audio-based Distributional Semantic Models for Music Auto-tagging and Similarity Measurement
The recent development of Audio-based Distributional Semantic Models (ADSMs) enables the computation of audio and lexical vector representations in a joint acoustic-semantic space. In this work, these joint representations are applied to the problem of automatic tag generation. The predicted tags together with their corresponding acoustic representation are exploited for the construction of aco...
متن کاملAnalysis of the Liquid Architecture Ideology Based on Marcos Novak’s Theories
Marcos Novak mainly considers a type of architecture cuts loose from the expectations of logic, perspective, and laws of gravity, and has invented a set of conceptual tools for thinking about and constructing territories in cyberspace. Novak introduces the concept of "liquid architecture”, a fluid, imaginary landscape that exists only in the Digital domain. He views trans-architecture as an exp...
متن کاملSuper-convenience for Non-musicians: Querying MP3 and the Semantic Web Super-convenience for Non-musicians: Querying MP3 and the Semantic Web
Electronic music distribution, the internet success of MP3 and the actual activities concerning the semantic web of music require for convenient music information retrieval, resp. question-answering systems. In this paper we will give an overview about the concepts behind our “super-convenience” approach for MIR. By using natural language as input for human-oriented queries to large-scale music...
متن کاملMulti-Tasking with Joint Semantic Spaces for Large-Scale Music Annotation and Retrieval
Music prediction tasks range from predicting tags given a song or clip of audio, predicting the name of the artist, or predicting related songs given a song, clip, artist name or tag. That is, we are interested in every semantic relationship between the different musical concepts in our database. In realistically sized databases, the number of songs is measured in the hundreds of thousands or m...
متن کاملMusic Listening in the Future: Augmented Music-Understanding Interfaces and Crowd Music Listening
In the future, music listening can be more active, more immersive, richer, and deeper by using automatic music-understanding technologies (semantic audio analysis). In the first half of this invited talk, four Augmented Music-Understanding Interfaces that facilitate deeper understanding of music are introduced. In our interfaces, visualization of music content and music touch-up (customization)...
متن کامل