Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

DNN-Based Online Source Counting Based on Spatial Generalized Magnitude Squared Coherence

About

The number of active sound sources is a key parameter in many acoustic signal processing tasks, such as source localization, source separation, and multi-microphone speech enhancement. This paper proposes a novel method for online source counting by detecting changes in the number of active sources based on spatial coherence. The proposed method exploits the fact that a single coherent source in spatially white background noise yields high spatial coherence, whereas only noise results in low spatial coherence. By applying a spatial whitening operation, the source counting problem is reformulated as a change detection task, aiming to identify the time frames when the number of active sources changes. The method leverages the generalized magnitude-squared coherence as a measure to quantify spatial coherence, providing features for a compact neural network trained to detect source count changes framewise. Simulation results with binaural hearing aids in reverberant acoustic scenes with up to 4 speakers and background noise demonstrate the effectiveness of the proposed method for online source counting.

Henri Gode, Simon Doclo• 2026

Related benchmarks

TaskDatasetResultRank
Source Count EstimationDataset B BRUDEX (test)
Accuracy91.9
5
Source Count EstimationDataset A BRUDEX (test)
Accuracy95.6
3
Showing 2 of 2 rows

Other info

Follow for update