In this paper, the multifeature fusion music classification algorithm and its simulation results are studied by deep confidence networks, the multifeature fusion music database is established and preprocessed, and then features are extracted. The simulation is carried out using multifeature fusion music data. The multifeature fusion music preprocessing includes endpoint detection, framing, windowing, and pre-emphasis. In this paper, we extracted the rhythm features, sound quality features, and spectral features, including energy, cross-zero rate, fundamental frequency, harmonic noise ratio, and 12 statistical features, including maximum value, mean value, and linear slope. A total of 384-dimensional statistical features was extracted and co...
In the audio event classification or detection research field, the representation of the audio itsel...
Music Genre Classification (MGC) automatically categorizes music into different genres based on vari...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
This research is done based on the identification and thorough analyzing musical data that is extrac...
Aiming at the shortcomings of single network classification model, this paper applies CNN-LSTM (conv...
Traditional Chinese music has undergone trials and tribulations. To date, traditional music has been...
The popularity of the Internet has brought the rapid development of artificial intelligence, affecti...
The medium of music has evolved specifically for the expression of emotions, and it is natural for u...
Music has been an integral part of the history of humankind with theories suggesting it is more ante...
Since musical genre is one of the most common ways used by people for managing digital music databas...
This article presents a comprehensive research endeavor focusing on the classification of music base...
As a key field in music information retrieval, music emotion recognition is indeed a challenging tas...
International audienceNowadays, deep learning is more and more used for Music Genre Classification: ...
Automatic Music Genre Classification is a core problem in the Music Information Retrieval space. The...
With the explosive growth of music recordings, automatic classification of music emotion becomes one...
In the audio event classification or detection research field, the representation of the audio itsel...
Music Genre Classification (MGC) automatically categorizes music into different genres based on vari...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
This research is done based on the identification and thorough analyzing musical data that is extrac...
Aiming at the shortcomings of single network classification model, this paper applies CNN-LSTM (conv...
Traditional Chinese music has undergone trials and tribulations. To date, traditional music has been...
The popularity of the Internet has brought the rapid development of artificial intelligence, affecti...
The medium of music has evolved specifically for the expression of emotions, and it is natural for u...
Music has been an integral part of the history of humankind with theories suggesting it is more ante...
Since musical genre is one of the most common ways used by people for managing digital music databas...
This article presents a comprehensive research endeavor focusing on the classification of music base...
As a key field in music information retrieval, music emotion recognition is indeed a challenging tas...
International audienceNowadays, deep learning is more and more used for Music Genre Classification: ...
Automatic Music Genre Classification is a core problem in the Music Information Retrieval space. The...
With the explosive growth of music recordings, automatic classification of music emotion becomes one...
In the audio event classification or detection research field, the representation of the audio itsel...
Music Genre Classification (MGC) automatically categorizes music into different genres based on vari...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...