Národní úložiště šedé literatury Nalezeno 2 záznamů.  Hledání trvalo 0.01 vteřin. 
Automatic Speech Detection for VHF Channel
Nováková, Mária ; Veselý, Karel (oponent) ; Szőke, Igor (vedoucí práce)
A noisy environment in air traffic communication is an unavoidable problem. The communication between the control tower and the pilot should be the most reliable and effective. That is why voice activity detection is crucial for recognising the start of the speech segment of the communicants for automated systems. The speakers take turns providing information by pressing the push-to-talk button. To detect voice activity, various approaches are used. Even though these methods are effective, machine learning can easily outshine them. Neural networks are widely used in voice activity detection as well as in other areas. Properly trained models are efficient and adaptable. In this thesis, a solution for voice activity detection together with push-to-talk detection is proposed. Proposed models are evaluated and compared. The adaptation of the GPVAD approach is discussed and compared to the proposed models. Neural networks will have their chance to once again prove that they are suitable for any task.
Automatic Speech Detection for VHF Channel
Nováková, Mária ; Veselý, Karel (oponent) ; Szőke, Igor (vedoucí práce)
A noisy environment in air traffic communication is an unavoidable problem. The communication between the control tower and the pilot should be the most reliable and effective. That is why voice activity detection is crucial for recognising the start of the speech segment of the communicants for automated systems. The speakers take turns providing information by pressing the push-to-talk button. To detect voice activity, various approaches are used. Even though these methods are effective, machine learning can easily outshine them. Neural networks are widely used in voice activity detection as well as in other areas. Properly trained models are efficient and adaptable. In this thesis, a solution for voice activity detection together with push-to-talk detection is proposed. Proposed models are evaluated and compared. The adaptation of the GPVAD approach is discussed and compared to the proposed models. Neural networks will have their chance to once again prove that they are suitable for any task.

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