Improvement in Speaker Verification Performance using an innovative combination scheme

K. Dutta, Jagabandhu Mishra, D. Pati
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Abstract

Performance of any machine recognition task can be improved by utilizing the benefit of multiple evidences lies in the combination schemes. In speaker verification tasks the score level combination scheme is widely used. In that scheme multiple features take decisions independently and later the overall decisions are modified based on individual strength accompanied with suitable weightage. The score level combination scheme provides interesting improvements in the overall performance, when evidences from different features are complementary in nature. It is conjecture that collectively contributed decisions may be more useful in achieving improved overall performance. Based on this idea, we propose a combination scheme for generic GMM-UBM based speaker verification system. In the proposed scheme the individual adapted GMM-UBM models are built from different available features. The individual model parameters are padded together to build overall GMM-UBM adaptive models. The test features of different evidences are padded in similar pattern and placed before the system for verification. The experimental studies are made on Indian Institute of Technology Guwahati Multi-Variability (IITG-MV) speech database and well known NIST-2003 SRE database. Proposed method outperformed the score level combination scheme in both experiments which signifies the importance of the proposed method.
利用创新组合方案改进说话人验证性能
利用多证据组合方案的优势,可以提高任何机器识别任务的性能。在说话人验证任务中,分级组合方案被广泛采用。在该方案中,多个特征独立决策,然后根据个体强度和适当的权重对总体决策进行修改。当来自不同特征的证据在本质上是互补的时,分数水平组合方案在整体性能上提供了有趣的改进。据推测,集体贡献的决策可能在实现改进的整体性能方面更有用。基于这一思想,我们提出了一种基于通用GMM-UBM的说话人验证系统的组合方案。在该方案中,根据不同的可用特征构建自适应GMM-UBM模型。各个模型参数被填充在一起,以构建整体的GMM-UBM自适应模型。将不同证据的测试特征以相似的方式填充,置于系统前进行验证。在印度理工学院Guwahati Multi-Variability (IITG-MV)语音数据库和著名的NIST-2003 SRE数据库上进行了实验研究。该方法在两个实验中均优于分数水平组合方案,表明了该方法的重要性。
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