Web
Education
Viewing 1-5 of 5 total results
A Novel Voice Activity Detector for Noisy Environments ...
In this paper, a voice activity detector is proposed on the basis of Gaussian modeling of noise in the spectro-temporal space. Spectro-temporal space is obtained from auditory cortical processing. The auditory model that offers a multi-dimensional picture of the sound includes two stages: the initial stage is a model of inner ear and the second stage is the auditory central cortical modeling ......
A Novel Voice Activity Detector for Noisy Environments ...
A Novel Voice Activity Detector for Noisy Environments Using Gaussian Clustering of Noise in Spectro-Temporal Domain Conference Paper (PDF Available) · October 2010 with 48 Reads How we measure ......
Nafiseh ESFANDIAN | PhD | Islamic Azad University, Tehran ...
A Novel Voice Activity Detector for Noisy Environments Using Gaussian Clustering of Noise in Spectro-Temporal Domain ... a voice activity detector is proposed on the basis of Gaussian modeling of ......
A novel fast nonstationary noise tracking approach based ...
However, accurate and fast noise tracking is a particularly challenging task, particularly when noise environments are highly nonstationary. The typical noise PSD estimation approach is based on a voice activity detector (VAD), in which the noise PSD estimate is updated only in the absence of speech , , , . For stationary noise sources, such an ......
A hierarchical framework approach for voice activity ...
[13] X. Bao and J. Zhu, "A novel voice activity detection based on phoneme recognition using statistical model," Journal on Audio, Speech, and Music Processing, vol. 2012, article 1, 2012. [14] M. H. Moattar and M. M. Homayounpour, "A weighted feature voting approach for robust and real-time voice activity detection," ETRI Journal, vol. 33, no ......
|
iSEEK provides users with a Favorites library that allows them easy access to their most-used websites from any computer. If you have an iSEEK account, the content you just selected can be added to your Favorites page to be revisited any time you want.
If you would like to join the iSEEK community, click the "Register" button below to create your free iSEEK account. The resource you have selected will be added to your new Favorites library after you sign in for the first time.
If you already have an iSEEK account, click the button below to sign in and add the resource to your Favorites library.