Line spectral frequency-based features and extreme learning machine for voice activity detection from audio signal

International Journal of Speech Technology - Tập 21 Số 4 - Trang 753-760 - 2018
Himadri Mukherjee1, Sk Md Obaidullah2, K. C. Santosh3, Santanu Phadikar4, Kaushik Roy1
1Department of Computer Science, West Bengal State University, Kolkata, India
2Department of Computer Science and Engineering, Aliah University, Kolkata, India
3Department of Computer Science, The University of South Dakota, Vermillion, SD, 57069, USA
4Department of Computer Science and Engineering, Maulana Abul Kalam Azad University of Technology, Kolkata, India

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