In this paper, we propose a novel approach for music similarity estimation. It combines temporal segmentation of music signals with source separation into so-called tone objects. We solely use the timbre-related audio features Mel- Frequency Cepstral Coefficients (MFCC) and Octave-based Spectral Contrast (OSC) to describe the extracted tone objects. First, we compare our approach to a baseline system that employs frame-wise feature extraction and bagof- frames classification. Second, we set up a system that extracts features on perfectly isolated single track recordings, achieving near perfect classification. Finally, we compare our novel approach against the basis experiments. We find that it clearly outperforms the baseline system in a fi...
A study of melodic similarity of pitch contours automatically obtained from audio files in the conte...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
In this paper, we present a novel approach to extract song-level descriptors built from frame-level ...
Large-scale systems for automatic content-based music recommendation require efficient computation o...
The changing music landscape demands new ways of searching, organizing and recommending music to con...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
We propose a mid-level melody-based representation that incorporates melodic, rhythmic and structura...
Music classification is essential for faster Music record recovery. Separating the ideal arrangement...
We address the problem of estimating automatically from audio signals the similarity between two pie...
Lots of work has been done on speech and speaker recognition. Many technologies were developed for t...
cote interne IRCAM: Meudic03bNone / NoneNational audienceIn the context of pattern extraction from p...
<p>In this paper we argue that the notion of music similarity should be expanded into sub-similariti...
<p>This report describes the digital humanities project on music similarity. The project is a collab...
Given an audio query, such as polyphonic musical piece, this thesis address the problem of retrievin...
UnrestrictedThis dissertation is in the area of music information retrieval, which is an interdiscip...
A study of melodic similarity of pitch contours automatically obtained from audio files in the conte...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
In this paper, we present a novel approach to extract song-level descriptors built from frame-level ...
Large-scale systems for automatic content-based music recommendation require efficient computation o...
The changing music landscape demands new ways of searching, organizing and recommending music to con...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
We propose a mid-level melody-based representation that incorporates melodic, rhythmic and structura...
Music classification is essential for faster Music record recovery. Separating the ideal arrangement...
We address the problem of estimating automatically from audio signals the similarity between two pie...
Lots of work has been done on speech and speaker recognition. Many technologies were developed for t...
cote interne IRCAM: Meudic03bNone / NoneNational audienceIn the context of pattern extraction from p...
<p>In this paper we argue that the notion of music similarity should be expanded into sub-similariti...
<p>This report describes the digital humanities project on music similarity. The project is a collab...
Given an audio query, such as polyphonic musical piece, this thesis address the problem of retrievin...
UnrestrictedThis dissertation is in the area of music information retrieval, which is an interdiscip...
A study of melodic similarity of pitch contours automatically obtained from audio files in the conte...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
In this paper, we present a novel approach to extract song-level descriptors built from frame-level ...