In this paper we present a new method for musical audio source separation, using the information from the musical score to supervise the decomposition process. An original framework using nonnegative matrix factorization (NMF) is presented, where the components are initially learnt on synthetic signals with temporal and harmonic constraints. A new dataset of multitrack recordings with manually aligned MIDI scores is created (TRIOS), and we compare our separation results with other methods from the literature using the BSS EVAL and PEASS evaluation toolboxes. The results show a general improvement of the BSS EVAL metrics for the various instrumental configurations used
This is Konstatninos Dimitriou's B.Sc. thesis on NMF-based blind audio source separation of monophon...
The separation of different sound sources from polyphonic music recordings constitutes a complex tas...
International audienceSpectral decomposition by nonnegative matrix factorisation (NMF) has become st...
In this paper we present a new method for musical audio source separation, using the information fr...
In recent years, the processing of audio recordings by exploiting additional musical knowledge has t...
AES 2011: The 45th International Conference on Applications of Time-Frequency Processing in Audio, 1...
International audienceIn this paper, we propose a new unconstrained nonnegative matrix factorization...
Close-microphone techniques are extensively employed in many live music recordings, allowing for int...
This Master’s thesis focuses on the challenging task of separating the musical audio sources with in...
Separating the leading voice from a musical recording seems to be natural to the human ear. Yet, it ...
In recent years, source separation has been a central research topic in music signal processing, wit...
International audienceSeparating multiple tracks from professionally produced music recordings (PPMR...
Separating multiple music sources from a single channel mixture is a challenging problem. We present...
In this work, we propose solutions to the problem of audio source separation from a single recording...
International audienceIn this paper we tackle the problem of single channel audio source separation ...
This is Konstatninos Dimitriou's B.Sc. thesis on NMF-based blind audio source separation of monophon...
The separation of different sound sources from polyphonic music recordings constitutes a complex tas...
International audienceSpectral decomposition by nonnegative matrix factorisation (NMF) has become st...
In this paper we present a new method for musical audio source separation, using the information fr...
In recent years, the processing of audio recordings by exploiting additional musical knowledge has t...
AES 2011: The 45th International Conference on Applications of Time-Frequency Processing in Audio, 1...
International audienceIn this paper, we propose a new unconstrained nonnegative matrix factorization...
Close-microphone techniques are extensively employed in many live music recordings, allowing for int...
This Master’s thesis focuses on the challenging task of separating the musical audio sources with in...
Separating the leading voice from a musical recording seems to be natural to the human ear. Yet, it ...
In recent years, source separation has been a central research topic in music signal processing, wit...
International audienceSeparating multiple tracks from professionally produced music recordings (PPMR...
Separating multiple music sources from a single channel mixture is a challenging problem. We present...
In this work, we propose solutions to the problem of audio source separation from a single recording...
International audienceIn this paper we tackle the problem of single channel audio source separation ...
This is Konstatninos Dimitriou's B.Sc. thesis on NMF-based blind audio source separation of monophon...
The separation of different sound sources from polyphonic music recordings constitutes a complex tas...
International audienceSpectral decomposition by nonnegative matrix factorisation (NMF) has become st...