Speaker veriÿcation and utterance veriÿcation are examples of techniques that can be used for speaker authentication purposes. Speaker veriÿcation consists of accepting or rejecting the claimed identity of a speaker by processing samples of his=her voice. Usually, these systems are based on HMM mod
Combining classifier decisions for robust speaker identification
✍ Scribed by Daniel J. Mashao; Marshalleno Skosan
- Publisher
- Elsevier Science
- Year
- 2006
- Tongue
- English
- Weight
- 232 KB
- Volume
- 39
- Category
- Article
- ISSN
- 0031-3203
No coin nor oath required. For personal study only.
✦ Synopsis
In this work, we combine the decisions of two classifiers as an alternative means of improving the performance of a speaker recognition system in adverse environments. The difference between these classifiers is in their feature-sets. One system is based on the popular mel-frequency cepstral coefficients (MFCC) and the other on the new parametric feature-sets (PFS) algorithm. The feature-vectors both have mel-scale spectral warping and are computed in the cepstral domain but the feature-sets differs in the use of spectral filters and compressions. The performance of the classifier is not much different in recognition rates terms but they are complementary. This shows that there is information that is not captured in the popular mel-frequency cepstral coefficients (MFCC), and the parametric featuresets (PFS) is able to add further information for improved performance. Several ways of combining these classifiers gives significant improvements in a speaker identification task using a very large telephone degraded NTIMIT database.
📜 SIMILAR VOLUMES
This paper compares techniques for asynchronous fusion of speech and lip information for robust speaker identification. In any fusion system, the ultimate challenge is to determine the optimal way to combine all information sources under varying conditions. We propose a new method for estimating con
This study presents a theoretical investigation of the rank-based multiple classi"er decision combination problem, with the aim of providing a uni"ed framework to understand a variety of such systems. The combination of the decisions of more than one classi"ers with the aim of improving overall syst
This paper describes an approach for constructing a classifier which is unaffected by occlusions in images. We propose a method for integrating an auto-associative network into a simple classifier. As the auto-associative network can recall the original image from a partly occluded input image, we c