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Title

Speech/Non-speech Discrimination for Broadcast Radio Using Entropy Energy Modulation

Author

Debabi Turkia and Cherif Adnen

Citation

Vol. 19  No. 4  pp. 140-145

Abstract

Humans have a remarkable ability to classify sound signals into classes: music, speech, applause, laughter, etc. Faced with an excessive abundance of multimedia documents, we propose in this paper to develop a new configuration of multimedia documents based on entropy and entropy energy for automatic segmentation. A sound classification plays an important role in rich and varied applications, ranging from indexing audio documents to protecting copyright and archiving the diversity of radio and television channels. Given the diversity of requirements of these potential applications in the sound of classification, our object is to choose a generalist approach to the classification of sound documents that can easily adapt to classes defined according to its particular application. The proposed approach is based on entropy energy modulation. The classical problems of sound classification are summarized by three classes: the classification into music/speech, man/woman and action/non-action. Our application concerns the segmentation of a sound track in speech/non-speech.

Keywords

Indexing, broadcast, classification, entropy, speech discrimination.

URL

http://paper.ijcsns.org/07_book/201904/20190418.pdf