In this paper, a performance study of a methodology for reconstruction of high-resolution remote sensing imagery is presented. This method is the robust version of the Bayesian regularization (BR) technique, which performs the image reconstruction as a solution of the ill-conditioned inverse spatial spectrum pattern (SSP) estimation problem with model uncertainties via unifying the Bayesian minimum risk (BMR) estimation strategy with the maximum entropy (ME) randomized a priori image model and other projection-type regularization constraints imposed on the solution. The results of extended comparative simulation study of a family of image formation/enhancement algorithms that employ the RBR method for high-resolution reconstruction of the S...
Abstract. The connection between Bayesian statistics and the technique of regularization for inverse...
In super-resolution (SR) reconstruction of images, regularization becomes crucial when insufficient ...
This paper presents a nonlinear Bayesian regression algorithm for detecting and estimating gas plume...
In this paper, a performance study of a methodology for reconstruction of high-resolution remote sen...
In this paper, we address and discuss a novel look at the high-resolution array radar/SAR imaging as...
Earth atmospheric remote sensing is an inverse problem that fits surface and atmospheric models to i...
In this paper, we address a hardware implementation of the efficient robust Bayesian regularization ...
In this paper, we address a hardware implementation of the efficient robust Bayesian regularization ...
Radio astronomy image formation can be treated as a linear inverse problem. However, due to physical...
37 pages - SIIMS 2020Many imaging problems require solving an inverse problem that is ill-conditione...
. Sampling techniques are used to explore the Bayesian posterior density in imaging problems. Beside...
In this paper we present a Bayesian image reconstruction algorithm with entropy prior (FMAPE) that u...
Abstract. A new fused Bayesian maximum entropy–variational analysis (BMEVA) method for enhanced rada...
Many scientific experiments such as those found in astronomy, geology, microbiology, and X-ray radio...
Abstract — In recent years, kernel methods, in particular support vector machines (SVMs), have been ...
Abstract. The connection between Bayesian statistics and the technique of regularization for inverse...
In super-resolution (SR) reconstruction of images, regularization becomes crucial when insufficient ...
This paper presents a nonlinear Bayesian regression algorithm for detecting and estimating gas plume...
In this paper, a performance study of a methodology for reconstruction of high-resolution remote sen...
In this paper, we address and discuss a novel look at the high-resolution array radar/SAR imaging as...
Earth atmospheric remote sensing is an inverse problem that fits surface and atmospheric models to i...
In this paper, we address a hardware implementation of the efficient robust Bayesian regularization ...
In this paper, we address a hardware implementation of the efficient robust Bayesian regularization ...
Radio astronomy image formation can be treated as a linear inverse problem. However, due to physical...
37 pages - SIIMS 2020Many imaging problems require solving an inverse problem that is ill-conditione...
. Sampling techniques are used to explore the Bayesian posterior density in imaging problems. Beside...
In this paper we present a Bayesian image reconstruction algorithm with entropy prior (FMAPE) that u...
Abstract. A new fused Bayesian maximum entropy–variational analysis (BMEVA) method for enhanced rada...
Many scientific experiments such as those found in astronomy, geology, microbiology, and X-ray radio...
Abstract — In recent years, kernel methods, in particular support vector machines (SVMs), have been ...
Abstract. The connection between Bayesian statistics and the technique of regularization for inverse...
In super-resolution (SR) reconstruction of images, regularization becomes crucial when insufficient ...
This paper presents a nonlinear Bayesian regression algorithm for detecting and estimating gas plume...