The content discusses the introduction of SMS-AF, a novel online adaptive filtering method that utilizes neural networks to optimize linear filters. The method is designed to scale up performance by incorporating feature pruning, a supervised loss, and multiple optimization steps per time-frame. By evaluating the method on acoustic echo cancellation and speech enhancement tasks, the results show significant performance gains across various metrics. The study also relates the approach to Kalman filtering and meta-adaptive filtering, showcasing its versatility in different AF tasks.
The article delves into the background of adaptive filters, emphasizing the importance of optimization rules in controlling filter parameters over time. It explores learned optimizers through meta-learning techniques and highlights recent advancements in deep learning algorithms for scaling methodologies.
Furthermore, the experimental design section details the methodology used for benchmarking SMS-AF on acoustic echo cancellation and generalized sidelobe canceller tasks. The results demonstrate substantial improvements in both subjective and objective metrics compared to previous methods.
Overall, the study presents SMS-AF as a promising direction for scalable adaptive filters, showcasing its potential for enhancing performance across various signal processing applications.
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