Query-by-example Search With Discriminative Neural Acoustic Word Embeddings | Awesome Learning to Hash Add your paper to Learning2Hash

Query-by-example Search With Discriminative Neural Acoustic Word Embeddings

Shane Settle, Keith Levin, Herman Kamper, Karen Livescu . Interspeech 2017 2017 – 4 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Efficiency Evaluation Interspeech

Query-by-example search often uses dynamic time warping (DTW) for comparing queries and proposed matching segments. Recent work has shown that comparing speech segments by representing them as fixed-dimensional vectors — acoustic word embeddings — and measuring their vector distance (e.g., cosine distance) can discriminate between words more accurately than DTW-based approaches. We consider an approach to query-by-example search that embeds both the query and database segments according to a neural model, followed by nearest-neighbor search to find the matching segments. Earlier work on embedding-based query-by-example, using template-based acoustic word embeddings, achieved competitive performance. We find that our embeddings, based on recurrent neural networks trained to optimize word discrimination, achieve substantial improvements in performance and run-time efficiency over the previous approaches.

Similar Work