Abstract

Remote sensing images are widely used in object detection and tracking, military security, and other computer vision tasks. However, remote sensing images are often degraded by suspended aerosol in the air, especially under poor weather conditions, such as fog, haze, and mist. The quality of remote sensing images directly affect the normal operations of computer vision systems. As such, haze removal is a crucial and indispensable pre-processing step in remote sensing image processing. Additionally, most of the existing image dehazing methods are not applicable to all scenes, so the corresponding dehazed images may have varying degrees of color distortion. This paper proposes a novel atmospheric light estimation based dehazing algorithm to obtain high visual-quality remote sensing images. First, a differentiable function is used to train the parameters of a linear scene depth model for the scene depth map generation of remote sensing images. Second, the atmospheric light of each hazy remote sensing image is estimated by the corresponding scene depth map. Then, the corresponding transmission map is estimated on the basis of the estimated atmospheric light by a haze-lines model. Finally, according to the estimated atmospheric light and transmission map, an atmospheric scattering model is applied to remove haze from remote sensing images. The colors of the images dehazed by the proposed method are in line with the perception of human eyes in different scenes. A dataset with 100 remote sensing images from hazy scenes was built for testing. The performance of the proposed image dehazing method is confirmed by theoretical analysis and comparative experiments.

Highlights

  • Remote sensing image retrieval requires quick and accurate search of the targeted areas in a large-scale remote sensing image database

  • The remote sensing images acquired in hazy and foggy scenes are usually subject to both significant contrast reduction and noticeable visibility degradation, which cannot satisfy the basic requirements of remote sensing image retrieval

  • According to the theoretical basis of image degradation from existing atmospheric scattering models [5], this paper proposes an atmospheric light estimation based scattering model for remote sensing image dehazing

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Summary

Introduction

Remote sensing image retrieval requires quick and accurate search of the targeted areas in a large-scale remote sensing image database. The haze removal of remote sensing images needs to train a set of parameters for accurate scene depth estimation. According to the theoretical basis of image degradation from existing atmospheric scattering models [5], this paper proposes an atmospheric light estimation based scattering model for remote sensing image dehazing. According to the probability of density distribution, the scene depth map of remote sensing images can be estimated by a distribution function. According to the obtained scene depth map of a hazy image, the atmospheric light can be estimated. According to the estimated atmospheric light and the calculated transmission map, the proposed atmospheric scattering model can effectively achieve remote sensing image dehazing. A continuously differentiable function is created to learn the optimal parameters of a linear scene depth model for the scene depth map estimation of remote sensing images.

The Development of Remote Sensing Image Dehazing
The Proposed Dehazing Framework for Remote Sensing Images
Scene Depth Map Restoration
The Definition of the Linear Model
Training Data Collection
Learning Strategy
Scene Depth Restoration
Atmospheric Light Estimation
Transmission Map Estimation
Haze Removal
Experiment Preparation
Comparative Experiment in Real Hazy Scenes
Comparative Experiment in Synthetic Hazy Scenes
Comparison of Average Processing Time
Conclusions and Future Work
Findings
Objective
Full Text
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