claritychallenge/clarity
Clarity Challenge toolkit - software for building Clarity Challenge systems
This toolkit helps researchers and engineers develop and evaluate new hearing aid signal processing algorithms. It provides standardized tools and data to simulate hearing loss, enhance speech, and objectively measure speech intelligibility and quality for people with hearing impairments. The ideal users are hearing aid researchers, audio engineers, and academics working on improving hearing aid technology.
179 stars.
Use this if you are developing or testing new algorithms to improve hearing aid performance and need standardized tools for simulation, enhancement, and objective evaluation.
Not ideal if you are an end-user looking for a hearing aid, or if you need to perform clinical hearing assessments on human subjects.
Stars
179
Forks
63
Language
Python
License
MIT
Category
Last pushed
Mar 09, 2026
Commits (30d)
0
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