eature extractor to learn a low-dimensional speaker representation for Speaker Verification, which is also used to model session and channel effects/variabilities
In this new space, a given speech utterance is represented by a new vector named total factors (called the identity-vector or the “i-vector”)
The i-vector is thus a feature that represents the characteristics of the frame-level Features’ distributive pattern
[dimensionality reduction](dimensionality reduction.md) of the GMM supervector (although the GMM supervector is not extracted when computing the i-vector)
extracted in a similar manner with the eigenvoice adaptation scheme or the JFA technique
extracted per sentence
Support-Vector-Machine-based system that uses the cosine kernel to estimate the similarity between the input data