feat(logging): prefer speech crest factor in analysis display#32
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flexiondotorg merged 1 commit intomainfrom Feb 6, 2026
Merged
feat(logging): prefer speech crest factor in analysis display#32flexiondotorg merged 1 commit intomainfrom
flexiondotorg merged 1 commit intomainfrom
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- Compute crestFactor from peak - RMS and default crestSource to "full-file" - If SpeechProfile is present and CrestFactor > 0, use speech crest and set source - Update printed line to include crest factor and its source (speech | full-file) Clarifies which crest factor is shown in analysis output, aiding debugging and aligning displayed metrics with processor behaviour that prefers speech-specific measurements. Signed-off-by: Martin Wimpress <martin@wimpress.org>
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Clarifies which crest factor is shown in analysis output, aiding debugging and aligning displayed metrics with processor behaviour that prefers speech-specific measurements.