We study the problem of evaluating automatic speech recognition (ASR) systems that target dialectal speech input. A major challenge in this case is that the orthography of dialects is typically not standardized. From an ASR evaluation perspective, this means that there is no clear gold standard for the expected output, and several possible outputs could be considered correct according to different human annotators, which makes standard word error rate (WER) inadequate as an evaluation metric. Specifically targeting the case of Arabic dialects, which are also morphologically rich and complex, we propose a number of alternative WER-based metrics that vary in terms of text representation, including different degrees of morphological abstraction and spelling normalization. We evaluate the efficacy of these metrics by comparing their correlation with human judgments on a validation set of 1,000 utterances. Our results show that the use of morphological abstractions and spelling normalization produces systems with higher correlation with human judgment. We released the code and the datasets to the research community.
|Original language||English (US)|
|Number of pages||5|
|State||Published - 2019|
- Non-standard Orthography