The high cost of data acquisition makes Automatic Speech Recognition (ASR) model training problematic for most existing languages, including languages that do not even have a written script, or for which the phone inventories remain unknown. Past works explored multilingual training, transfer learning, as well as zero-shot learning in order to build ASR systems for these low-resource languages. While it has been shown that the pooling of resources from multiple languages is helpful, we have not yet seen a successful application of an ASR model to a language unseen during training. A crucial step in the adaptation of ASR from seen to unseen languages is the creation of the phone inventory of the unseen language. The ultimate goal of our work is to build the phone inventory of a language unseen during training in an unsupervised way without any knowledge about the language. In this paper, we 1) investigate the influence of different factors (i.e., model architecture, phonotactic model, type of speech representation) on phone recognition in an unknown language; 2) provide an analysis of which phones transfer well across languages and which do not in order to understand the limitations of and areas for further improvement for automatic phone inventory creation; and 3) present different methods to build a phone inventory of an unseen language in an unsupervised way. To that end, we conducted mono-, multi-, and crosslingual experiments on a set of 13 phonetically diverse languages and several in-depth analyses. We found a number of universal phone tokens (IPA symbols) that are well-recognized cross-linguistically. Through a detailed analysis of results, we conclude that unique sounds, similar sounds, and tone languages remain a major challenge for phonetic inventory discovery.
翻译:数据获取的高成本使得自动语音识别(ASR)模式培训对大多数现有语言,包括甚至没有书面脚本或电话库存尚不为人知的语言来说有问题。过去的工作探索了多语种培训、转移学习以及零光学习,以便为这些低资源语言建立ASR系统。虽然已经表明将多种语言的资源集中起来是有益的,但我们还没有看到将ASR模式成功地应用于培训期间看不见的语言。将ASR的深度从看到的语言转变为隐蔽语言的一个关键步骤是创建隐性语言的电话库存。我们工作的最终目标是建立在不了解语言知识的情况下以不受监督的方式培训期间所见语言的电话库存。在本文件中,我们1)调查了不同因素(即模型结构、流行模式模型、语言模型、语言代表类型)对电话识别的影响。2)我们分析了哪些不同语言的跨语言转移是独特的挑战,哪些是无法理解在自动电话库存创建方面有何局限性和哪些领域需要进一步改进的。我们工作的最终目标是在13种语言创建过程中以不受监督的方式建立隐形语言的电话库存。A和3)我们用不同的方法来建立一种超语言的样本分析。