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A Modified Speaker Clustering Method for Efficient Speaker Identification

机译:一种有效的说话人识别的改进说话人聚类方法

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In speaker identification system, along with the growth of the population size, scoring process can be extremely time consuming. In such a case, speaker clustering is generally used to alleviate the situation. K-means is the widely used clustering algorithms, however, its performance suffers from the so-called local optimum problem. To deal with the problem, a novel initialization approach was introduced in this paper, which performs the initialization to the intrinsic spreading patterns of speaker models. In essence, the proposal is of the same spirit to the well-known Canopy mechanism. However, it differs from the Canopy in the aspects of candidate selection and thresholds setting. It is showed, to the application purpose, the proposed approach could work effectively and generates more rational and stable clustering outcome.
机译:在说话者识别系统中,随着人口规模的增长,评分过程非常耗时。在这种情况下,通常使用说话人聚类来减轻这种情况。 K-means是广泛使用的聚类算法,但是,其性能受到所谓的局部最优问题的困扰。为了解决这个问题,本文介绍了一种新颖的初始化方法,该方法对说话人模型的固有扩展模式进行初始化。从本质上讲,该提议与著名的Canopy机制具有相同的精神。但是,在候选者选择和阈值设置方面,它与Canopy不同。结果表明,针对应用目的,所提出的方法可以有效地工作,并产生更加合理和稳定的聚类结果。

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