Deep Optimization of Parametric IIR Filters for Audio Equalization
Giovanni Pepe (1, 2), Leonardo Gabrielli (1), Stefano Squartini, (1), Carlo Tripodi (2), Nicol\`o Strozzi (2) ((1) Universit\`a Politecnica, delle Marche, (2) ASK Industries S.p.A.)

TL;DR
This paper introduces BiasNet, a deep learning approach for designing IIR filters for audio equalization, achieving accurate tuning and improved performance over traditional methods with lower computational cost.
Contribution
A novel neural architecture, BiasNet, for automatic IIR filter parameter optimization in audio equalization, with an effective denormalization technique and spectral loss function.
Findings
Improved spectral response matching compared to baseline methods
Achieved near-flat frequency response in experimental scenarios
Lower runtime computational cost than FIR filters
Abstract
This paper describes a novel Deep Learning method for the design of IIR parametric filters for automatic audio equalization. A simple and effective neural architecture, named BiasNet, is proposed to determine the IIR equalizer parameters. An output denormalization technique is used to obtain accurate tuning of the IIR filters center frequency, quality factor and gain. All layers involved in the proposed method are shown to be differentiable, allowing backpropagation to optimize the network weights and achieve, after a number of training iterations, the optimal output. The parameters are optimized with respect to a loss function based on a spectral distance between the measured and desired magnitude response, and a regularization term used to achieve a spatialization of the acoustc scene. Two scenarios with different characteristics were considered for the experimental evaluation: a room…
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Taxonomy
TopicsSpeech and Audio Processing · Advanced Adaptive Filtering Techniques · Music and Audio Processing
