Memory and Computation Trade-Offs for Efficient I-Vector Extraction

Sandro Cumani, P. Laface
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引用次数: 11

Abstract

This work aims at reducing the memory demand of the data structures that are usually pre-computed and stored for fast computation of the i-vectors, a compact representation of spoken utterances that is used by most state-of-the-art speaker recognition systems. We propose two new approaches allowing accurate i-vector extraction but requiring less memory, showing their relations with the standard computation method introduced for eigenvoices, and with the recently proposed fast eigen-decomposition technique. The first approach computes an i-vector in a Variational Bayes (VB) framework by iterating the estimation of one sub-block of i-vector elements at a time, keeping fixed all the others, and can obtain i-vectors as accurate as the ones obtained by the standard technique but requiring only 25% of its memory. The second technique is based on the Conjugate Gradient solution of a linear system, which is accurate and uses even less memory, but is slower than the VB approach. We analyze and compare the time and memory resources required by all these solutions, which are suited to different applications, and we show that it is possible to get accurate results greatly reducing memory demand compared with the standard solution at almost the same speed.
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高效i向量提取的内存和计算权衡
这项工作旨在减少数据结构的内存需求,这些数据结构通常是为了快速计算i向量而预先计算和存储的,i向量是大多数最先进的说话人识别系统使用的口语的紧凑表示。我们提出了两种新的方法,可以精确地提取i向量,但需要更少的内存,并展示了它们与特征语音的标准计算方法以及最近提出的快速特征分解技术的关系。第一种方法在变分贝叶斯(VB)框架中计算i向量,每次迭代估计i向量元素的一个子块,保持所有其他子块的固定,并且可以获得与标准技术获得的i向量一样准确的i向量,但只需要25%的内存。第二种技术是基于线性系统的共轭梯度解,它是精确的,使用更少的内存,但比VB方法慢。我们分析和比较了所有这些解决方案所需的时间和内存资源,这些解决方案适用于不同的应用程序,我们表明,在几乎相同的速度下,与标准解决方案相比,它有可能得到准确的结果,大大降低了内存需求。
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来源期刊
IEEE Transactions on Audio Speech and Language Processing
IEEE Transactions on Audio Speech and Language Processing 工程技术-工程:电子与电气
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0.00%
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0
审稿时长
24.0 months
期刊介绍: The IEEE Transactions on Audio, Speech and Language Processing covers the sciences, technologies and applications relating to the analysis, coding, enhancement, recognition and synthesis of audio, music, speech and language. In particular, audio processing also covers auditory modeling, acoustic modeling and source separation. Speech processing also covers speech production and perception, adaptation, lexical modeling and speaker recognition. Language processing also covers spoken language understanding, translation, summarization, mining, general language modeling, as well as spoken dialog systems.
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