The field of Music-Information Retrieval (Music-IR) involves the development of algorithms that can analyze musical audio and extract various high-level musical features. Many such algorithms have been developed, and systems now exist that can reliably identify features such as beat locations, tempo, and rhythm from musical sources. These features in turn are used to assist in a variety of music-related tasks ranging from automatically creating playlists that match specified criteria to synchronizing various elements, such as computer graphics, with a performance. These Music-IR systems thus help humans to enjoy and interact with music. While current systems for identifying beats in music are have found widespread utility, most of them have...
Surveys the work of the Laboratory for Recognition and Organization of Speech and Audio, Department ...
PhDIn this thesis we address the subject of automatic extraction of harmony information from audio ...
Machine learning is the capacity of a computational system to learn structures from datasets in orde...
PhDThis thesis explores the automatic extraction of musical information from live performances – wi...
In the field of Music-Information Retrieval (Music-IR), algo-rithms are used to analyze musical sign...
Abstract — Humans can often learn high-level features of a piece of music, such as beats, from only ...
PhDThis thesis investigates computational musical tonality estimation from an audio signal. We pres...
This dissertation presents work on the development of tools for the automated analysis of music sign...
Abstract — In pursuit of our long-term goal of developing an interactive humanoid musician, we are d...
The task of finding the beat in music is simple for most people, but surprisingly difficult to repli...
The goal of music information retrieval (MIR) is to develop novel strategies and techniques for orga...
AbstractSongs play a vital role in our day to day life. A song contains basically two things, vocal ...
This thesis proposes digital signal processing algorithms for noise reduction and enhancement of aud...
This thesis is concerned with the communication of information using auditory techniques. In particu...
Humanoids have become increasingly capable in recent years. Enabling these robots to mimic human mus...
Surveys the work of the Laboratory for Recognition and Organization of Speech and Audio, Department ...
PhDIn this thesis we address the subject of automatic extraction of harmony information from audio ...
Machine learning is the capacity of a computational system to learn structures from datasets in orde...
PhDThis thesis explores the automatic extraction of musical information from live performances – wi...
In the field of Music-Information Retrieval (Music-IR), algo-rithms are used to analyze musical sign...
Abstract — Humans can often learn high-level features of a piece of music, such as beats, from only ...
PhDThis thesis investigates computational musical tonality estimation from an audio signal. We pres...
This dissertation presents work on the development of tools for the automated analysis of music sign...
Abstract — In pursuit of our long-term goal of developing an interactive humanoid musician, we are d...
The task of finding the beat in music is simple for most people, but surprisingly difficult to repli...
The goal of music information retrieval (MIR) is to develop novel strategies and techniques for orga...
AbstractSongs play a vital role in our day to day life. A song contains basically two things, vocal ...
This thesis proposes digital signal processing algorithms for noise reduction and enhancement of aud...
This thesis is concerned with the communication of information using auditory techniques. In particu...
Humanoids have become increasingly capable in recent years. Enabling these robots to mimic human mus...
Surveys the work of the Laboratory for Recognition and Organization of Speech and Audio, Department ...
PhDIn this thesis we address the subject of automatic extraction of harmony information from audio ...
Machine learning is the capacity of a computational system to learn structures from datasets in orde...