Preliminary investigation of the short-term in situ performance of an automatic masker selection system
Soundscape augmentation or "masking" introduces wanted sounds into the acoustic environment to improve acoustic comfort. Usually, the masker selection and playback strategies are either arbitrary or based on simple rules (e.g. -3 dBA), which may lead to sub-optimal increment or even reduct...
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Zusammenfassung: | Soundscape augmentation or "masking" introduces wanted sounds into the
acoustic environment to improve acoustic comfort. Usually, the masker selection
and playback strategies are either arbitrary or based on simple rules (e.g. -3
dBA), which may lead to sub-optimal increment or even reduction in acoustic
comfort for dynamic acoustic environments. To reduce ambiguity in the selection
of maskers, an automatic masker selection system (AMSS) was recently developed.
The AMSS uses a deep-learning model trained on a large-scale dataset of
subjective responses to maximize the derived ISO pleasantness (ISO 12913-2).
Hence, this study investigates the short-term in situ performance of the AMSS
implemented in a gazebo in an urban park. Firstly, the predicted ISO
pleasantness from the AMSS is evaluated in comparison to the in situ subjective
evaluation scores. Secondly, the effect of various masker selection schemes on
the perceived affective quality and appropriateness would be evaluated. In
total, each participant evaluated 6 conditions: (1) ambient environment with no
maskers; (2) AMSS; (3) bird and (4) water masker from prior art; (5) random
selection from same pool of maskers used to train the AMSS; and (6) selection
of best-performing maskers based on the analysis of the dataset used to train
the AMSS. |
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DOI: | 10.48550/arxiv.2308.07767 |