gdalsanto/similarity-metrics-for-rirs
Similarity Metrics for Late Reverberation and code for data processing
This project helps acousticians, audio engineers, and room designers evaluate how different room configurations or microphone placements affect sound reverberation. By comparing measured or simulated room impulse responses (RIRs), it quantifies the similarity of their late reverberation characteristics. This allows users to understand subtle acoustic differences when adjusting absorption or listening positions.
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Use this if you need to objectively compare the late reverberation characteristics of different room impulse responses, for example, when optimizing room acoustics or designing artificial reverberators.
Not ideal if you primarily need to analyze early reflections or direct sound, or if you are looking for a general-purpose audio similarity metric that doesn't focus specifically on late reverberation.
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MATLAB
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MIT
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Last pushed
Oct 19, 2024
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