speaker clustering
Recently Published Documents


TOTAL DOCUMENTS

156
(FIVE YEARS 10)

H-INDEX

11
(FIVE YEARS 2)

2020 ◽  
pp. 1-1
Author(s):  
Yanxiong Li ◽  
Wucheng Wang ◽  
Mingle Liu ◽  
Zhongjie Jiang ◽  
Qianhua He

2019 ◽  
Vol 95 ◽  
pp. 235-246 ◽  
Author(s):  
Sandro Cumani ◽  
Pietro Laface

In this paper Spectral feature like Spectral Roll off, Spectral Centroid, RMS (Root Mean Square) energy, Zero crossing Rate, Spectral irregularity, Brightness, of speech audio signals are extracted and analyzed. From analysis, prominent features are selected. These prominent features are used for speaker identification. For performing feature analysis, database of seven speakers is created. By using features, speakers are divided into two groups or clusters.


2019 ◽  
Vol 9 (13) ◽  
pp. 2761 ◽  
Author(s):  
Umair Khan ◽  
Pooyan Safari ◽  
Javier Hernando

Restricted Boltzmann Machines (RBMs) have shown success in both the front-end and backend of speaker verification systems. In this paper, we propose applying RBMs to the front-end for the tasks of speaker clustering and speaker tracking in TV broadcast shows. RBMs are trained to transform utterances into a vector based representation. Because of the lack of data for a test speaker, we propose RBM adaptation to a global model. First, the global model—which is referred to as universal RBM—is trained with all the available background data. Then an adapted RBM model is trained with the data of each test speaker. The visible to hidden weight matrices of the adapted models are concatenated along with the bias vectors and are whitened to generate the vector representation of speakers. These vectors, referred to as RBM vectors, were shown to preserve speaker-specific information and are used in the tasks of speaker clustering and speaker tracking. The evaluation was performed on the audio recordings of Catalan TV Broadcast shows. The experimental results show that our proposed speaker clustering system gained up to 12% relative improvement, in terms of Equal Impurity (EI), over the baseline system. On the other hand, in the task of speaker tracking, our system has a relative improvement of 11% and 7% compared to the baseline system using cosine and Probabilistic Linear Discriminant Analysis (PLDA) scoring, respectively.


Sign in / Sign up

Export Citation Format

Share Document