Defines executable boundary contracts for sound event traces using an STL-embeddable Boolean fragment plus interval and duration clauses, then evaluates them on speech and soundscape data where they disagree with standard scores.
Bypassing Direct Reconstruction: Speech Detection from MEG via Large-Scale Audio Retrieval
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Decoding speech from non-invasive brain signals is challenging. For the LibriBrain 2025 Speech Detection task, we propose a novel two-step framework that bypasses direct reconstruction. First, a contrastive learning model retrieves the matching speech segment for the given test MEG from a large-scale audio library (LibriVox). Second, a speech detection model generates the binary silence/speech sequence directly from this retrieved audio. With this approach, our team Sherlock Holmes achieved first place in the extended track (F1-score: 0.962), demonstrating that leveraging external audio databases is a highly effective strategy.
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cs.LO 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Executable Boundary Contracts for Sound Event Traces
Defines executable boundary contracts for sound event traces using an STL-embeddable Boolean fragment plus interval and duration clauses, then evaluates them on speech and soundscape data where they disagree with standard scores.