Robust Rayleigh Regression Method for SAR Image Processing in Presence
of Outliers
- URL: http://arxiv.org/abs/2208.00097v1
- Date: Fri, 29 Jul 2022 23:03:45 GMT
- Title: Robust Rayleigh Regression Method for SAR Image Processing in Presence
of Outliers
- Authors: B. G. Palm, F. M. Bayer, R. Machado, M. I.Pettersson, V. T. Vu, R. J.
Cintra
- Abstract summary: The presence of outliers (anomalous values) in synthetic aperture radar (SAR) data may result in inaccurate inferences.
This paper aims at obtaining Rayleigh regression model parameter estimators robust to the presence of outliers.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The presence of outliers (anomalous values) in synthetic aperture radar (SAR)
data and the misspecification in statistical image models may result in
inaccurate inferences. To avoid such issues, the Rayleigh regression model
based on a robust estimation process is proposed as a more realistic approach
to model this type of data. This paper aims at obtaining Rayleigh regression
model parameter estimators robust to the presence of outliers. The proposed
approach considered the weighted maximum likelihood method and was submitted to
numerical experiments using simulated and measured SAR images. Monte Carlo
simulations were employed for the numerical assessment of the proposed robust
estimator performance in finite signal lengths, their sensitivity to outliers,
and the breakdown point. For instance, the non-robust estimators show a
relative bias value $65$-fold larger than the results provided by the robust
approach in corrupted signals. In terms of sensitivity analysis and break down
point, the robust scheme resulted in a reduction of about $96\%$ and $10\%$,
respectively, in the mean absolute value of both measures, in compassion to the
non-robust estimators. Moreover, two SAR data sets were used to compare the
ground type and anomaly detection results of the proposed robust scheme with
competing methods in the literature.
Related papers
- Distributionally Robust Optimization as a Scalable Framework to Characterize Extreme Value Distributions [22.765095010254118]
The goal of this paper is to develop distributionally robust optimization (DRO) estimators, specifically for multidimensional Extreme Value Theory (EVT) statistics.
In order to mitigate over-conservative estimates while enhancing out-of-sample performance, we study DRO estimators informed by semi-parametric max-stable constraints in the space of point processes.
Both approaches are validated using synthetically generated data, recovering prescribed characteristics, and verifying the efficacy of the proposed techniques.
arXiv Detail & Related papers (2024-07-31T19:45:27Z) - X-Fake: Juggling Utility Evaluation and Explanation of Simulated SAR Images [49.546627070454456]
The distribution inconsistency between real and simulated data is the main obstacle that influences the utility of simulated SAR images.
We propose a novel trustworthy utility evaluation framework with a counterfactual explanation for simulated SAR images for the first time, denoted as X-Fake.
The proposed framework is validated on four simulated SAR image datasets obtained from electromagnetic models and generative artificial intelligence approaches.
arXiv Detail & Related papers (2024-07-28T09:27:53Z) - Study of Robust Direction Finding Based on Joint Sparse Representation [2.3333781137726137]
We propose a novel DOA estimation method based on sparse signal recovery (SSR)
To address the issue of grid mismatch, we utilize an alternating optimization approach.
Simulation results demonstrate that the proposed method exhibits robustness against large outliers.
arXiv Detail & Related papers (2024-05-27T02:26:37Z) - On Consistency and Asymptotic Normality of Least Absolute Deviation
Estimators for 2-dimensional Sinusoidal Model [0.0]
We propose a robust least absolute deviation (LAD) estimators for parameter estimation.
We establish the strong consistency and normality of the LAD estimators of the signal parameters of a 2-dimensional sinusoidal model.
Data analysis of a 2-dimensional texture data indicates practical applicability of the proposed LAD approach.
arXiv Detail & Related papers (2023-01-09T09:50:32Z) - Improved Point Estimation for the Rayleigh Regression Model [0.0]
The Rayleigh regression model was recently proposed for modeling amplitude values of synthetic aperture radar (SAR) image pixels.
We introduce bias-adjusted estimators tailored for the Rayleigh regression model based on: (i) the Cox and Snell's method; (ii) the Firth's scheme; and (iii) the parametric bootstrap method.
arXiv Detail & Related papers (2022-08-07T01:28:39Z) - Heavy-tailed Streaming Statistical Estimation [58.70341336199497]
We consider the task of heavy-tailed statistical estimation given streaming $p$ samples.
We design a clipped gradient descent and provide an improved analysis under a more nuanced condition on the noise of gradients.
arXiv Detail & Related papers (2021-08-25T21:30:27Z) - SLOE: A Faster Method for Statistical Inference in High-Dimensional
Logistic Regression [68.66245730450915]
We develop an improved method for debiasing predictions and estimating frequentist uncertainty for practical datasets.
Our main contribution is SLOE, an estimator of the signal strength with convergence guarantees that reduces the computation time of estimation and inference by orders of magnitude.
arXiv Detail & Related papers (2021-03-23T17:48:56Z) - Support estimation in high-dimensional heteroscedastic mean regression [2.28438857884398]
We consider a linear mean regression model with random design and potentially heteroscedastic, heavy-tailed errors.
We use a strictly convex, smooth variant of the Huber loss function with tuning parameter depending on the parameters of the problem.
For the resulting estimator we show sign-consistency and optimal rates of convergence in the $ell_infty$ norm.
arXiv Detail & Related papers (2020-11-03T09:46:31Z) - $\gamma$-ABC: Outlier-Robust Approximate Bayesian Computation Based on a
Robust Divergence Estimator [95.71091446753414]
We propose to use a nearest-neighbor-based $gamma$-divergence estimator as a data discrepancy measure.
Our method achieves significantly higher robustness than existing discrepancy measures.
arXiv Detail & Related papers (2020-06-13T06:09:27Z) - Instability, Computational Efficiency and Statistical Accuracy [101.32305022521024]
We develop a framework that yields statistical accuracy based on interplay between the deterministic convergence rate of the algorithm at the population level, and its degree of (instability) when applied to an empirical object based on $n$ samples.
We provide applications of our general results to several concrete classes of models, including Gaussian mixture estimation, non-linear regression models, and informative non-response models.
arXiv Detail & Related papers (2020-05-22T22:30:52Z) - Machine learning for causal inference: on the use of cross-fit
estimators [77.34726150561087]
Doubly-robust cross-fit estimators have been proposed to yield better statistical properties.
We conducted a simulation study to assess the performance of several estimators for the average causal effect (ACE)
When used with machine learning, the doubly-robust cross-fit estimators substantially outperformed all of the other estimators in terms of bias, variance, and confidence interval coverage.
arXiv Detail & Related papers (2020-04-21T23:09:55Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.