In this paper we address the problem of musical style classification. This problem has several applications like indexing in musical databases or development of automatic composition systems. Starting from MIDI files of real-world improvisations, we extract the melody track and cut it into overlapping segments of equal length. From these fragments, numerical features are extracted as descriptors of style samples. Then a cascade correlation neural network is adopted to build an effective musical style classifier. Preliminary experimental results show the effectiveness of the developed classifier that represents the first component of a musical audio retrieval system
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
In this paper we address the problem of musical style classification, which has a number of applicat...
In this paper we address the problem of musical style classification, which has a number of applicat...
In this paper we address the problem of musical style classification, which has a number of applicat...
In the field of computer music, pattern recognition algorithms are very relevant for music informati...
In the field of computer music, pattern recognition algorithms are very relevant for music informati...
Much of the work on perception and understanding of music by computers has focused on low-level perc...
Modelling human perception of musical similarity is critical for the evaluation of generative music ...
Much of the work on perception and understanding of music by computers has focused on low-level perc...
Much of the work on perception and understanding of music by computers has focused on low-level perc...
Abstract. The present paper describes a method for the automatic classification of musical styles fr...
Genre is a fluid descriptor used to categorize and classify musical works. Although it has historica...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
In this paper we address the problem of musical style classification, which has a number of applicat...
In this paper we address the problem of musical style classification, which has a number of applicat...
In this paper we address the problem of musical style classification, which has a number of applicat...
In the field of computer music, pattern recognition algorithms are very relevant for music informati...
In the field of computer music, pattern recognition algorithms are very relevant for music informati...
Much of the work on perception and understanding of music by computers has focused on low-level perc...
Modelling human perception of musical similarity is critical for the evaluation of generative music ...
Much of the work on perception and understanding of music by computers has focused on low-level perc...
Much of the work on perception and understanding of music by computers has focused on low-level perc...
Abstract. The present paper describes a method for the automatic classification of musical styles fr...
Genre is a fluid descriptor used to categorize and classify musical works. Although it has historica...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...