In this paper we compare two different textural feature sets for automatic music genre classification. The idea is to convert the audio signal into spectrograms and then extract features from this visual representation. Two textural descriptors are explored in this work: the Gray Level Co-Occurrence Matrix (GLCM) and Local Binary Patterns (LBP). Besides, two different strategies of extracting features are considered: a global approach where the features are extracted from the entire spectrogram image and then classified by a single classifier; a local approach where the spectrogram image is split into several zones which are classified independently and final decision is then obtained by combining all the partial results. The database used ...
This paper presents a novel approach to Music Information Retrieval. Having represented the music tr...
This paper presents a non-conventional approach for the automatic music genre classification problem...
We present a strategy to perform automatic genre classification of musical signals. The technique di...
Abstract—In this paper we compare two different textural feature sets for automatic music genre clas...
Since musical genre is one of the most common ways used by people for managing digital music databas...
Abstract. This paper presents a novel approach for automatic music genre recognition in the visual d...
This paper presents a comparison among different texture descriptors and ensembles of descriptors fo...
Abstract—Music genre classification is an essential component for the music information retrieval sy...
Automatic musical genre classification is an important information retrieval task since it can be ap...
Abstract-The huge amount of multimedia dataset, especially digital music, available on-line nowaday...
In the field of computer music, pattern recognition algorithms are very relevant for music informati...
Modern digital music libraries are huge. Searching and retrieving requested piece of music is challe...
In this work, we present an ensemble for automated music genre classification that fuses acoustic an...
This thesis deals with the music style recognition. The introduction is an overview of current metho...
This paper presents a non-conventional approach for the automatic music genre classification problem...
This paper presents a novel approach to Music Information Retrieval. Having represented the music tr...
This paper presents a non-conventional approach for the automatic music genre classification problem...
We present a strategy to perform automatic genre classification of musical signals. The technique di...
Abstract—In this paper we compare two different textural feature sets for automatic music genre clas...
Since musical genre is one of the most common ways used by people for managing digital music databas...
Abstract. This paper presents a novel approach for automatic music genre recognition in the visual d...
This paper presents a comparison among different texture descriptors and ensembles of descriptors fo...
Abstract—Music genre classification is an essential component for the music information retrieval sy...
Automatic musical genre classification is an important information retrieval task since it can be ap...
Abstract-The huge amount of multimedia dataset, especially digital music, available on-line nowaday...
In the field of computer music, pattern recognition algorithms are very relevant for music informati...
Modern digital music libraries are huge. Searching and retrieving requested piece of music is challe...
In this work, we present an ensemble for automated music genre classification that fuses acoustic an...
This thesis deals with the music style recognition. The introduction is an overview of current metho...
This paper presents a non-conventional approach for the automatic music genre classification problem...
This paper presents a novel approach to Music Information Retrieval. Having represented the music tr...
This paper presents a non-conventional approach for the automatic music genre classification problem...
We present a strategy to perform automatic genre classification of musical signals. The technique di...