2021
DOI: 10.1109/tsp.2020.3042946
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Matched and Mismatched Estimation of Kronecker Product of Linearly Structured Scatter Matrices Under Elliptical Distributions

Abstract: The estimation of covariance matrices is a core problem in many modern adaptive signal processing applications. For matrix-and array-valued data, e.g., MIMO communication, EEG/MEG (time versus channel), the covariance matrix of vectorized data may belong to the non-convex set of Kronecker product structure. In addition, the Kronecker factors can also exhibit an additional linear structure. Taking this prior knowledge into account during the estimation process drastically reduces the amount of unknown parameter… Show more

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Cited by 10 publications
(8 citation statements)
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“…Although this paper focuses on electromagnetic brain source imaging, Type-II methods have also been successfully developed in other fields such as direction of arrival (DoA) and channel estimation in wireless communications ( Gerstoft et al, 2016 ; Haghighatshoar and Caire, 2017 ; Khalilsarai et al, 2020 ; Prasad et al, 2015 ), Internet of Things (IoT) (Fengler et al, 2019a; 2019b), robust portfolio optimization in finance ( Feng et al, 2016 ), covariance matching and estimation ( Benfenati et al, 2020 ; Greenewald and Hero, 2015 ; Meriaux et al, 2020 ; Ollila et al, 2020 ; Ottersten et al, 1998 ; Tsiligkaridis et al, 2013 ; Werner et al, 2008 ; Zoubir et al, 2018 ), graph learning ( Kumar et al, 2020 ), and brain functional imaging ( Wei et al, 2020 ). The methods introduced in this work may also prove useful in these domains.…”
Section: Discussionmentioning
confidence: 99%
“…Although this paper focuses on electromagnetic brain source imaging, Type-II methods have also been successfully developed in other fields such as direction of arrival (DoA) and channel estimation in wireless communications ( Gerstoft et al, 2016 ; Haghighatshoar and Caire, 2017 ; Khalilsarai et al, 2020 ; Prasad et al, 2015 ), Internet of Things (IoT) (Fengler et al, 2019a; 2019b), robust portfolio optimization in finance ( Feng et al, 2016 ), covariance matching and estimation ( Benfenati et al, 2020 ; Greenewald and Hero, 2015 ; Meriaux et al, 2020 ; Ollila et al, 2020 ; Ottersten et al, 1998 ; Tsiligkaridis et al, 2013 ; Werner et al, 2008 ; Zoubir et al, 2018 ), graph learning ( Kumar et al, 2020 ), and brain functional imaging ( Wei et al, 2020 ). The methods introduced in this work may also prove useful in these domains.…”
Section: Discussionmentioning
confidence: 99%
“…Moreover its estimation performance is way better that the SCM one in heavy-tailed data while it is almost similar in light-tailed scenarios: high gain, very small loss. These very promising results promote the use of the R-estimator to other problems, as the structured shape estimation discussed in [19,21].…”
Section: Mean Squared Error (Mse) Indicesmentioning
confidence: 86%
“…Although this paper focuses on electromagnetic brain source imaging, Type-II methods have also been successfully developed in other fields such as direction of arrival (DoA) and channel estimation in wireless communications [18], [19], [21], [102], Internet of Things (IoT) [103], [104], robust portfolio optimization in finance [22], covariance matching and estimation [105]- [112], graph learning [113], and brain functional imaging [92]. The methods introduced in this work may also prove useful in these domains.…”
Section: Discussionmentioning
confidence: 99%