A convolutional network for streaming speech enhancement produces models with configurable latency (12.5-75 ms) via asymmetric temporal padding, reaching PESQ 3.35-3.43 on VoiceBank+DEMAND while matching prior causal SOTA at lowest latency.
Latency-Configurable Streaming Speech Enhancement via Asymmetric Temporal Padding
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Streaming speech enhancement requires balancing algorithmic latency against quality, yet existing approaches largely treat this as a binary causal versus non-causal choice. LaCo-SENet addresses this issue with two mechanisms parameterized by a single training-time hyperparameter. First, asymmetric temporal padding redistributes past and future context in convolutions, enabling systematic latency configuration. Second, dual-buffer streaming combines state buffers for past context with lookahead buffers that supply future context at both the input and feature levels. Selective state updates also prevent future-frame leakage into the streaming state, ensuring training-inference consistency. On VoiceBank+DEMAND, a fixed-budget (1.37M parameters) backbone yields a family of models spanning 12.5-75.0 ms, with PESQ rising from 3.35 to 3.43. At just 12.5 ms (fully causal), a PESQ of 3.35 matches or exceeds the prior causal state-of-the-art (3.27 at 46.5 ms).
fields
cs.SD 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
Latency-Configurable Streaming Speech Enhancement via Asymmetric Temporal Padding
A convolutional network for streaming speech enhancement produces models with configurable latency (12.5-75 ms) via asymmetric temporal padding, reaching PESQ 3.35-3.43 on VoiceBank+DEMAND while matching prior causal SOTA at lowest latency.