Unsupervised Speaker Adaptation based on the Cosine Similarity for Text-Independent Speaker Verification
نویسندگان
چکیده
This paper proposes a new approach to unsupervised speaker adaptation inspired by the recent success of the factor analysisbased Total Variability Approach to text-independent speaker verification [1]. This approach effectively represents speaker variability in terms of low-dimensional total factor vectors and, when paired alongside the simplicity of cosine similarity scoring, allows for easy manipulation and efficient computation [2]. The development of our adaptation algorithm is motivated by the desire to have a robust method of setting an adaptation threshold, to minimize the amount of required computation for each adaptation update, and to simplify the associated score normalization procedures where possible. To address the final issue, we propose the Symmetric Normalization (S-norm) method, which takes advantage of the symmetry in cosine similarity scoring and achieves competitive performance to that of the ZT-norm while requiring fewer parameter calculations. In our subsequent experiments, we also assess an attempt to completely replace the use of score normalization procedures with a Normalized Cosine Similarity scoring function [3]. We evaluated the performance of our unsupervised speaker adaptation algorithm under various score normalization procedures on the 10sec-10sec and core conditions of the 2008 NIST SRE dataset. Using no-adaptation results as our baseline, it was found that the proposed methods are consistent in successfully improving speaker verification performance to achieve state-ofthe-art results.
منابع مشابه
Cosine Similarity Scoring without Score Normalization Techniques
In recent work [1], a simplified and highly effective approach to speaker recognition based on the cosine similarity between lowdimensional vectors, termed ivectors, defined in a total variability space was introduced. The total variability space representation is motivated by the popular Joint Factor Analysis (JFA) approach, but does not require the complication of estimating separate speaker ...
متن کاملDeep Speaker: an End-to-End Neural Speaker Embedding System
We present Deep Speaker, a neural speaker embedding system that maps utterances to a hypersphere where speaker similarity is measured by cosine similarity. The embeddings generated by Deep Speaker can be used for many tasks, including speaker identification, verification, and clustering. We experiment with ResCNN and GRU architectures to extract the acoustic features, then mean pool to produce ...
متن کاملUnsupervised learning of HMM topology for text-dependent speaker verification
Usually, text-dependent speaker verification can achieve better performance than text-independent system because of the constraint that the enrollment and testing utterance share the same phonetic content. However, the enrollment data for text-dependent system usually is very limited. Expectation Maximization(EM) training of HMM will suffer from noisy estimation because of limited enrollment. A...
متن کاملNew cosine similarity scorings to implement gender-independent speaker verification
This paper is a natural extension of our previous work on gender-independent speaker verification systems [1]. In a previous paper, we presented a solution to avoid using gender information in the Probabilistic Linear Discriminant Analysis (PLDA) without any loss of accuracy compared with a genderdependent base-line implementation. In this work, we propose two solutions to make a speaker verifi...
متن کاملStudy on the effects of intrinsic variation using i-vectors in text-independent speaker verification
Speaker verification performance is adversely affected by mismatches between training and testing data in intrinsic variations. This paper explores how recent technologies focused on modeling the total variability behave in addressing the effects of intrinsic variation in speaker verification. The effects of intrinsic variation are investigated from six aspects including speaking style, speakin...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2010