Quantifying the Uncertainty of Blindly Estimated Room Embeddings Using a Dispersion-Calibrated Score

📅 2026-07-01
📈 Citations: 0
Influential: 0
📄 PDF
🤖 AI Summary
Blind estimation of room embeddings is highly susceptible to interference from speech content and recording distortions, degrading downstream task performance. This work proposes a self-supervised framework that requires no downstream supervision, learning speech-content-invariant room representations and associated confidence estimates directly from single-channel reverberant speech. The approach leverages a structured embedding space derived from the room impulse response (RIR) latent manifold, a multi-positive contrastive learning mechanism, and a lightweight uncertainty head calibrated via embedding dispersion. By incorporating multi-view data construction, KL alignment, and joint waveform-spectrogram distortion modeling, the method yields uncertainty scores that closely align with embedding dispersion, enabling reliable selective prediction across diverse distortion conditions.
📝 Abstract
Room embeddings derived from reverberant speech are often unreliable: speech content and recording degradation can alter the representation even when speaker, room, and source-receiver geometry remain unchanged, degrading downstream task performance. We propose a framework that learns room embeddings robust to speech-content variation and a representation-level uncertainty score from reverberant speech without downstream-task supervision. The embedding is anchored to a structured room impulse response (RIR) latent space and trained using a multi-view data structure with Kullback-Leibler (KL)-based alignment; a multi-positive contrastive term further refines robustness. A lightweight uncertainty head is calibrated using the dispersion of corruption-induced embeddings and optimized with a rank-based objective. Across waveform- and spectrogram-level corruptions, the score is consistent with representation dispersion and enables effective selective prediction while requiring only a single utterance at inference.
Problem

Research questions and friction points this paper is trying to address.

room embeddings
reverberant speech
representation uncertainty
speech-content variation
downstream task performance
Innovation

Methods, ideas, or system contributions that make the work stand out.

room embedding
uncertainty quantification
reverberant speech
contrastive learning
dispersion calibration