Semantic Speech Retrieval With a Visually Grounded Model of Untranscribed SpeechDownload PDFOpen Website

2018 (modified: 10 Nov 2022)CVPR Workshops 2018Readers: Everyone
Abstract: There is growing interest in speech models that can learn from unlabelled speech paired with visual context. Here we study how a visually grounded speech model, trained on images of scenes paired with spoken captions, captures aspects of semantics. We use an external image tagger to generate soft text labels from images, which serve as targets for a neural model that maps untranscribed speech to (semantic) keyword labels. We introduce a newly collected data set of human semantic relevance judgements and an associated task, semantic speech retrieval, where the goal is to search for spoken utterances that are semantically relevant to a given text query. Without seeing any text, the model trained on parallel speech and images achieves a precision of almost 60% on its top ten semantic retrievals. Compared to a supervised model trained on transcriptions, our model matches human judgements better by some measures, especially in retrieving non-verbatim semantic matches.
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