Model Order Estimation in the Presence of multipath Interference using Residual Convolutional Neural Networks
Jianyuan Yu, William W. Howard, Yue Xu, R. Michael Buehrer

TL;DR
This paper introduces a Residual CNN approach for model order estimation in multipath environments, significantly improving accuracy over classic methods and aiding subsequent signal processing tasks.
Contribution
The paper proposes a novel Residual CNN architecture with grouped symmetric kernels and weighted loss for robust model order estimation amidst multipath interference.
Findings
Achieves up to 95.2% estimation accuracy
Effective across various array types
Identifies overloaded scenarios accurately
Abstract
Model order estimation (MOE) is often a pre-requisite for Direction of Arrival (DoA) estimation. Due to limits imposed by array geometry, it is typically not possible to estimate spatial parameters for an arbitrary number of sources; an estimate of the signal model is usually required. MOE is the process of selecting the most likely signal model from several candidates. While classic methods fail at MOE in the presence of coherent multipath interference, data-driven supervised learning models can solve this problem. Instead of the classic MLP (Multiple Layer Perceptions) or CNN (Convolutional Neural Networks) architectures, we propose the application of Residual Convolutional Neural Networks (RCNN), with grouped symmetric kernel filters to deliver state-of-art estimation accuracy of up to 95.2\% in the presence of coherent multipath, and a weighted loss function to eliminate…
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Taxonomy
TopicsDirection-of-Arrival Estimation Techniques · Speech and Audio Processing · Blind Source Separation Techniques
