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Zero-Shot Cross-lingual Aphasia Detection using Automatic Speech Recognition

Gerasimos Chatzoudis, Manos Plitsis, Spyridoula Stamouli, Athanasia‐Lida Dimou, Nassos Katsamanis, Vassilis Katsouros

2022Interspeech 202217 citationsDOIOpen Access PDF

Abstract

<p>Aphasia is a common speech and language disorder, typically caused by a brain injury or a stroke, that affects millions of people worldwide. Detecting and assessing Aphasia in patients is a difficult, time-consuming process, and numerous attempts to automate it have been made, the most successful using machine learning models trained on aphasic speech data. Like in many medical applications, aphasic speech data is scarce and the problem is exacerbated in so-called "low resource" languages, which are, for this task, most languages excluding English. We attempt to leverage available data in English and achieve zero-shot aphasia detection in low-resource languages such as Greek and French, by using language-agnostic linguistic features. Current cross-lingual aphasia detection approaches rely on manually extracted transcripts. We propose an end-toend pipeline using pre-trained Automatic Speech Recognition (ASR) models that share cross-lingual speech representations and are fine-tuned for our desired low-resource languages. To further boost our ASR model's performance, we also combine it with a language model. We show that our ASR-based end-toend pipeline offers comparable results to previous setups using human-annotated transcripts.</p>

Topics & Concepts

Computer scienceZero (linguistics)Speech recognitionAphasiaArtificial intelligenceNatural language processingLinguisticsPsychologyPhilosophyNeuroscienceNatural Language Processing TechniquesSpeech Recognition and SynthesisSubtitles and Audiovisual Media
Zero-Shot Cross-lingual Aphasia Detection using Automatic Speech Recognition | Litcius