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Published May 2020 | public
Book Section - Chapter

One-Bit Normalized Scatter Matrix Estimation For Complex Elliptically Symmetric Distributions

Abstract

One-bit quantization has attracted attention in massive MIMO, radar, and array processing, due to its simplicity, low cost, and capability of parameter estimation. Specifically, the shape of the covariance of the unquantized data can be estimated from the arcsine law and onebit data, if the unquantized data is Gaussian. However, in practice, the Gaussian assumption is not satisfied due to outliers. It is known from the literature that outliers can be modeled by complex elliptically symmetric (CES) distributions with heavy tails. This paper shows that the arcsine law remains applicable to CES distributions. Therefore, the normalized scatter matrix of the unquantized data can be readily estimated from one-bit samples derived from CES distributions. The proposed estimator is not only computationally fast but also robust to CES distributions with heavy tails. These attributes will be demonstrated through numerical examples, in terms of computational time and the estimation error. An application in DOA estimation with MUSIC spectrum is also presented.

Additional Information

© 2020 IEEE. The work of Chun-Lin Liu was supported by the Ministry of Science and Technology, Taiwan (Grant Number 108-2218-E-002-043-MY2), the Ministry of Education, Taiwan (Grant Number NTU-108V0902), and National Taiwan University. The work of P. P. Vaidyanathan was supported by the ONR grant N00014-18-1-2390, the NSF grant CCF-1712633, and the California Institute of Technology.

Additional details

Created:
August 19, 2023
Modified:
October 23, 2023