Direct posterior confidence for out-of-vocabulary spoken term detection

SSCS '10 Pub Date : 2010-10-29 DOI:10.1145/1878101.1878107
Dong Wang, Simon King, Joe Frankel, Ravichander Vipperla, N. Evans, Raphael Troncy
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引用次数: 8

Abstract

Spoken term detection (STD) is a fundamental task in spoken information retrieval. Compared to conventional speech transcription and keyword spotting, STD is an open-vocabul-ary task and is necessarily required to address out-of-vocabulary (OOV) terms. Approaches based on subword units, e.g. phonemes, are widely used to solve the OOV issue; however, performance on OOV terms is still significantly inferior to that for in-vocabulary (INV) terms. The performance degradation on OOV terms can be attributed to a multitude of factors. A particular factor we address in this paper is that the acoustic and language models used for speech transcribing are highly vulnerable to OOV terms, which leads to unreliable confidence measures and error-prone detections. A direct posterior confidence measure that is derived from discriminative models has been proposed for STD. In this paper, we utilize this technique to tackle the weakness of OOV terms in confidence estimation. Neither acoustic models nor language models being included in the computation, the new confidence avoids the weak modeling problem with OOV terms. Our experiments, set up on multi-party meeting speech which is highly spontaneous and conversational, demonstrate that the proposed technique improves STD performance on OOV terms significantly; when combined with conventional lattice-based confidence, a significant improvement in performance is obtained on both INVs and OOVs. Furthermore, the new confidence measure technique can be combined together with other advanced techniques for OOV treatment, such as stochastic pronunciation modeling and term-dependent confidence discrimination, which leads to an integrated solution for OOV STD with greatly improved performance.
词汇外口语词汇检测的直接后验置信度
口语词检测是口语信息检索的一项基本任务。与传统的语音转录和关键字查找相比,STD是一个开放词汇表任务,并且必须处理词汇表外(OOV)术语。基于子词单位(如音素)的方法被广泛用于解决OOV问题;然而,在OOV术语上的性能仍然明显不如词汇内(INV)术语。OOV方面的性能下降可归因于多种因素。我们在本文中提到的一个特殊因素是,用于语音转录的声学和语言模型非常容易受到OOV术语的影响,这导致不可靠的置信度测量和容易出错的检测。本文提出了一种基于判别模型的直接后验置信度度量方法。在本文中,我们利用该技术来解决OOV项在置信度估计中的弱点。由于在计算中不包括声学模型和语言模型,新的置信度避免了OOV项的弱建模问题。我们在高度自发和对话的多方会议演讲上进行的实验表明,所提出的技术显著提高了STD在OOV条件下的性能;当与传统的基于格子的置信度相结合时,invv和oov的性能都得到了显著改善。此外,新的置信度度量技术可以与其他先进的OOV处理技术(如随机发音建模和词相关置信度判别)相结合,从而形成一个整体的OOV STD解决方案,大大提高了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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