Automatically identifying sections of solo voices or instruments within a large corpus of music recordings would be useful, for example, to construct a library of isolated instruments to train signal models. We consider several ways to identify these sections, including a baseline classifier trained on conventional speech features. Our best results, achieving frame level precision and recall of around 70%, come from an approach that attempts to track the local periodicity of an assumed solo musical voice, then classifies the segment as a genuine solo or not on the basis of what proportion of the energy can be canceled by a comb filter constructed to remove just that periodicity
This paper presents a novel framework that improves both vocal fun-damental frequency (F0) estimatio...
Melody extraction algorithms for single-channel polyphonic music typically rely on the salience of t...
Recently, single channel vocal separation algorithms have been proposed which exploit the fact that ...
In this paper we present an algorithm for segmenting musical audio data. Our aim is to identify solo...
This paper presents a novel method for identifying regions of speech in the kinds of energetic and h...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
This paper deals with the problem of the extraction of vocals from single channel audio signals cont...
[[abstract]]Monaural singing voice separation is an extremely challenging problem. While efforts in ...
This paper demonstrates the superiority of energy-based features derived from the knowledge of predo...
A sung vocal line is the prominent feature of much popular music. It would be useful to locate the p...
Our goal is to obtain improved perceptual quality for sepa-rated solo instruments and accompaniment ...
This thesis is concerned with the separation of audio sources from single-channel polyphonic musical...
A well-known signal processing issue is that of the “cocktail party problem,” which A well-known sig...
Our goal is to obtain improved perceptual quality for separated solo instruments and accompaniment i...
International audienceClassical timbre studies have modeled timbre as the integration of a limited n...
This paper presents a novel framework that improves both vocal fun-damental frequency (F0) estimatio...
Melody extraction algorithms for single-channel polyphonic music typically rely on the salience of t...
Recently, single channel vocal separation algorithms have been proposed which exploit the fact that ...
In this paper we present an algorithm for segmenting musical audio data. Our aim is to identify solo...
This paper presents a novel method for identifying regions of speech in the kinds of energetic and h...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
This paper deals with the problem of the extraction of vocals from single channel audio signals cont...
[[abstract]]Monaural singing voice separation is an extremely challenging problem. While efforts in ...
This paper demonstrates the superiority of energy-based features derived from the knowledge of predo...
A sung vocal line is the prominent feature of much popular music. It would be useful to locate the p...
Our goal is to obtain improved perceptual quality for sepa-rated solo instruments and accompaniment ...
This thesis is concerned with the separation of audio sources from single-channel polyphonic musical...
A well-known signal processing issue is that of the “cocktail party problem,” which A well-known sig...
Our goal is to obtain improved perceptual quality for separated solo instruments and accompaniment i...
International audienceClassical timbre studies have modeled timbre as the integration of a limited n...
This paper presents a novel framework that improves both vocal fun-damental frequency (F0) estimatio...
Melody extraction algorithms for single-channel polyphonic music typically rely on the salience of t...
Recently, single channel vocal separation algorithms have been proposed which exploit the fact that ...