TL;DR
This paper introduces Auto-DSP, a data-driven approach that learns adaptive filtering update rules for acoustic echo cancellation, achieving fast convergence and robustness without expert tuning.
Contribution
We propose a novel method to automatically learn adaptive filtering update rules from data, replacing traditional expert-designed algorithms.
Findings
Learned update rules outperform traditional methods in convergence speed.
The approach handles nonlinearities effectively.
The learned filters are robust to acoustic scene changes.
Abstract
Adaptive filtering algorithms are commonplace in signal processing and have wide-ranging applications from single-channel denoising to multi-channel acoustic echo cancellation and adaptive beamforming. Such algorithms typically operate via specialized online, iterative optimization methods and have achieved tremendous success, but require expert knowledge, are slow to develop, and are difficult to customize. In our work, we present a new method to automatically learn adaptive filtering update rules directly from data. To do so, we frame adaptive filtering as a differentiable operator and train a learned optimizer to output a gradient descent-based update rule from data via backpropagation through time. We demonstrate our general approach on an acoustic echo cancellation task (single-talk with noise) and show that we can learn high-performing adaptive filters for a variety of common…
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