scispace - formally typeset
Journal ArticleDOI

A Bandelet-Based Inpainting Technique for Clouds Removal From Remotely Sensed Images

Reads0
Chats0
TLDR
An efficient inpainting technique for the reconstruction of areas obscured by clouds or cloud shadows in remotely sensed images is presented, based on the Bandelet transform and the multiscale geometrical grouping.
Abstract
It is well known that removing cloud-contaminated portions of a remotely sensed image and then filling in the missing data represent an important photo editing cumbersome task. In this paper, an efficient inpainting technique for the reconstruction of areas obscured by clouds or cloud shadows in remotely sensed images is presented. This technique is based on the Bandelet transform and the multiscale geometrical grouping. It consists of two steps. In the first step, the curves of geometric flow of different zones of the image are determined by using the Bandelet transform with multiscale grouping. This step allows an efficient representation of the multiscale geometry of the image's structures. Having well represented this geometry, the information inside the cloud-contaminated zone is synthesized by propagating the geometrical flow curves inside that zone. This step is accomplished by minimizing a functional whose role is to reconstruct the missing or cloud contaminated zone independently of the size and topology of the inpainting domain. The proposed technique is illustrated with some examples on processing aerial images. The obtained results are compared with those obtained by other clouds removal techniques.

read more

Citations
More filters
Journal ArticleDOI

Missing Information Reconstruction of Remote Sensing Data: A Technical Review

TL;DR: This paper provides an introduction to the principles and theories of missing information reconstruction of remote sensing data, and classify the established and emerging algorithms into four main categories, followed by a comprehensive comparison of them from both experimental and theoretical perspectives.
Journal ArticleDOI

Recovering Quantitative Remote Sensing Products Contaminated by Thick Clouds and Shadows Using Multitemporal Dictionary Learning

TL;DR: This paper proposes two multitemporal dictionary learning algorithms, expanding on their KSVD and Bayesian counterparts, to make better use of the temporal correlations of quantitative data contaminated by thick clouds and shadows.
Journal ArticleDOI

Cloud Removal From Multitemporal Satellite Images Using Information Cloning

TL;DR: The experimental results show that the proposed approach can process large clouds in a heterogeneous landscape, which is difficult for cloud removal approaches.
Journal ArticleDOI

Forest Change Detection in Incomplete Satellite Images With Deep Neural Networks

TL;DR: This paper analyzes imagery data from remote sensing satellites to detect forest cover changes over a period of 29 years, and automatically learns region representations using a deep neural network in a data-driven fashion.
Journal ArticleDOI

Cloud removal for remotely sensed images by similar pixel replacement guided with a spatio-temporal MRF model

TL;DR: An effective method based on similar pixel replacement is developed to solve the problem of removing the clouds and recovering the ground information for the cloud-contaminated images.
References
More filters
Proceedings ArticleDOI

Image inpainting

TL;DR: A novel algorithm for digital inpainting of still images that attempts to replicate the basic techniques used by professional restorators, and does not require the user to specify where the novel information comes from.
Journal ArticleDOI

Simultaneous structure and texture image inpainting

TL;DR: The novel contribution of this paper is the combination of these three previously developed components, image decomposition with inpainting and texture synthesis, which permits the simultaneous use of filling-in algorithms that are suited for different image characteristics.
Journal ArticleDOI

Sparse geometric image representations with bandelets

TL;DR: A new class of bases are introduced, called bandelet bases, which decompose the image along multiscale vectors that are elongated in the direction of a geometric flow, which leads to optimal approximation rates for geometrically regular images.
Journal ArticleDOI

Vector-valued image regularization with PDEs: a common framework for different applications

TL;DR: A unifying expression is proposed that gathers the majority of PDE-based formalisms for vector-valued image regularization into a single generic anisotropic diffusion equation, allowing us to implement the authors' regularization framework with accuracy by taking the local filtering properties of the proposed equations into account.

Fast Digital Image Inpainting

TL;DR: A very simple inpainting algorithm is presented for reconstruction of small missing and damaged portions of images that is two to three orders of magnitude faster than current methods while producing comparable results.
Related Papers (5)