Analytic Incremental Learning For Sound Source Localization With Imbalance Rectification
Abstract
Sound source localization (SSL) demonstrates remarkable results in controlled settings but struggles in real-world deployment due to dual imbalance challenges: intra-task imbalance arising from long-tailed direction-of-arrival (DoA) distributions, and inter-task imbalance induced by cross-task skews and overlaps. These often lead to catastrophic forgetting, significantly degrading the localization accuracy. To mitigate these issues, we propose a unified framework with two key innovations. Specifically, we design a GCC-PHAT-based data augmentation (GDA) method that leverages peak characteristics to alleviate intra-task distribution skews. We also propose an Analytic dynamic imbalance rectifier (ADIR) with task-adaption regularization, which enables analytic updates that adapt to inter-task dynamics. On the SSLR benchmark, our proposal achieves state-of-the-art (SoTA) results of 89.0% accuracy, 5.3{\deg} mean absolute error, and 1.6 backward transfer, demonstrating robustness to evolving imbalances without exemplar storage.
Cite
@article{arxiv.2601.18335,
title = {Analytic Incremental Learning For Sound Source Localization With Imbalance Rectification},
author = {Zexia Fan and Yu Chen and Qiquan Zhang and Kainan Chen and Xinyuan Qian},
journal= {arXiv preprint arXiv:2601.18335},
year = {2026}
}
Comments
Accepted by ICASSP26