A novel STAP algorithm via volume cross-correlation function on the Grassmann manifold
Jia-Mian Li, Jian-Yi Chen, Bing-Zhao Li

TL;DR
This paper introduces a new STAP algorithm that leverages the Grassmann manifold and volume cross-correlation to improve clutter suppression accuracy and robustness in radar signal processing.
Contribution
The novel algorithm utilizes geometric properties of covariance matrices on the Grassmann manifold, enhancing clutter suppression beyond traditional Euclidean-based methods.
Findings
Superior clutter suppression in heterogeneous environments
Enhanced robustness and accuracy demonstrated on simulated data
Effective filtering of target signals using Brauer disc theorem
Abstract
The performance of space-time adaptive processing (STAP) is often degraded by factors such as limited sample size and moving targets. Traditional clutter covariance matrix (CCM) estimation relies on Euclidean metrics, which fail to capture the intrinsic geometric and structural properties of the covariance matrix, thus limiting the utilization of structural information in the data. To address these issues, the proposed algorithm begins by constructing Toeplitz Hermitian positive definite (THPD) matrices from the training samples. The Brauer disc (BD) theorem is then employed to filter out THPD matrices containing target signals, retaining only clutter-related matrices. These clutter matrices undergo eigendecomposition to construct the Grassmann manifold, enabling CCM estimation through the volume cross-correlation function (VCF) and gradient descent method. Finally, the filter weight…
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Taxonomy
TopicsComputer Graphics and Visualization Techniques · Advanced Numerical Analysis Techniques · 3D Shape Modeling and Analysis
