The Utilization of Psychometric Functions to Predict Speech Intelligibility in Vehicles
- Content
- In this study, a novel assessment approach of in-vehicle speech intelligibility is presented using psychometric curves. Speech recognition performance scores were modeled at an individual listener level for a set of speech recognition data previously collected under a variety of in-vehicle listening scenarios. The model coupled an objective metric of binaural speech intelligibility (i.e., the acoustic factors) with a psychometric curve indicating the listener’s speech recognition efficiency (i.e., the listener factors). In separate analyses, two objective metrics were used with one designed to capture spatial release from masking and the other designed to capture binaural loudness. The proposed approach is in contrast to the traditional approach of relying on the speech recognition threshold, the speech level at 50% recognition performance averaged across listeners, as the metric for in-vehicle speech intelligibility. Results from the presented analyses suggest the importance of considering speech recognition accuracy across a range of signal-to-noise ratios rather than the speech recognition threshold alone, and the importance of considering individual differences among listeners when evaluating in-vehicle speech intelligibility.
- Pages
- 10
- Citation
- Samardzic, N., Lavandier, M., and Shen, Y., "The Utilization of Psychometric Functions to Predict Speech Intelligibility in Vehicles," SAE Int. J. Veh. Dyn., Stab., and NVH 8(1):21-30, 2024, https://doi.org/10.4271/10-08-01-0002.