An Algorithm for Intelligibility Prediction of Time–Frequency Weighted Noisy Speech
Delft University of Technology · Oticon Medical (Denmark)
Abstract
In the development process of noise-reduction algorithms, an objective machine-driven intelligibility measure which shows high correlation with speech intelligibility is of great interest. Besides reducing time and costs compared to real listening experiments, an objective intelligibility measure could also help provide answers on how to improve the intelligibility of noisy unprocessed speech. In this paper, a short-time objective intelligibility measure (STOI) is presented, which shows high correlation with the intelligibility of noisy and time-frequency weighted noisy speech (e.g., resulting from noise reduction) of three different listening experiments. In general, STOI showed better correlation with speech…
Citation impact
- FWCI
- 31.82
- Percentile
- 100%
- References
- 35
Authors
4Topics & keywords
- Intelligibility (philosophy)
- Active listening
- Computer science
- Speech recognition
- Correlation
- Noise reduction
- Algorithm
- Artificial intelligence