In this work, we introduce a novel tensor-based functional for targeted image enhancement and denoising. Via explicit regularization, our formulation incorporates application-dependent and contextual information using first principles. Few works in literature treat variational models that describe both application-dependent information and contextual knowledge of the denoising problem. We prove the existence of a minimizer and present results on tensor symmetry constraints, convexity, and geometric interpretation of the proposed functional. We show that our framework excels in applications where nonlinear functions are present such as in gamma correction and targeted value range filtering. We also study general denoising performance where w...
The assessment of image denoising results depends on the respective application area, i.e. image com...
The presence of noise in High Angular Resolution Diffusion Imaging (HARDI) data of the brain can lim...
In spite of its lack of theoretical justification, nonlinear diffusion filtering has become a powerf...
In this work, we introduce a novel tensor-based functional for targeted image enhancement and denois...
In this work, we introduce a novel tensor-based functional for targeted image enhancement and denois...
This dissertation addresses the problem of adaptive image filtering. Although the topic has a long h...
This dissertation addresses the problem of adaptive image filtering. Although the topic has a long h...
This dissertation addresses the problem of adaptive image filtering. Although the topic has a long h...
Abstract. We introduce a generic convex energy functional that is suitable for both grayscale and ve...
Abstract—Natural images exhibit geometric structures that are informative of the properties of the u...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceIn this chapter, we explore diffusion tensor estimation, regularization and cl...
International audienceIn this chapter, we explore diffusion tensor estimation, regularization and cl...
The assessment of image denoising results depends on the respective application area, i.e. image com...
The presence of noise in High Angular Resolution Diffusion Imaging (HARDI) data of the brain can lim...
In spite of its lack of theoretical justification, nonlinear diffusion filtering has become a powerf...
In this work, we introduce a novel tensor-based functional for targeted image enhancement and denois...
In this work, we introduce a novel tensor-based functional for targeted image enhancement and denois...
This dissertation addresses the problem of adaptive image filtering. Although the topic has a long h...
This dissertation addresses the problem of adaptive image filtering. Although the topic has a long h...
This dissertation addresses the problem of adaptive image filtering. Although the topic has a long h...
Abstract. We introduce a generic convex energy functional that is suitable for both grayscale and ve...
Abstract—Natural images exhibit geometric structures that are informative of the properties of the u...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceIn this chapter, we explore diffusion tensor estimation, regularization and cl...
International audienceIn this chapter, we explore diffusion tensor estimation, regularization and cl...
The assessment of image denoising results depends on the respective application area, i.e. image com...
The presence of noise in High Angular Resolution Diffusion Imaging (HARDI) data of the brain can lim...
In spite of its lack of theoretical justification, nonlinear diffusion filtering has become a powerf...