Dehazing and Road Feature Extraction from Satellite Images

Archa Gopan, Abid Hussain Muhammed
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引用次数: 1

Abstract

Image captured by satellite will be degraded due to scattering of the light by the atmospheric particles under challenging environmental conditions like fog, haze, smoke, etc. Hence this will seriously affect the performance of computer vision system. In this paper an image dehazing based on Quad tree subdivision and convolution neural network(CNN) transmission map is developed to provide end to end dehazing. This algorithm will help to recover the image clearly and accurately. Road extraction plays a significant role in traffic management, city planning road monitoring map updating, GPS navigation, etc. After analyzing various road models and features, this paper also presents an effective method for road extraction based on morphological operation and canny edge detection from the dehazed image. Hence provide a fast, simple and accurate method of dehazing and road extraction.
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卫星图像去雾与道路特征提取
在雾、霾、烟等恶劣的环境条件下,由于大气粒子对光线的散射,卫星捕捉到的图像会受到影响。因此,这将严重影响计算机视觉系统的性能。本文提出了一种基于四叉树细分和卷积神经网络(CNN)传输映射的图像去雾方法,实现了端到端去雾。该算法有助于清晰、准确地恢复图像。道路提取在交通管理、城市规划、道路监控地图更新、GPS导航等方面发挥着重要作用。在分析各种道路模型和特征的基础上,提出了一种基于形态学运算和精细边缘检测的有效道路提取方法。从而提供了一种快速、简便、准确的脱雾和道路提取方法。
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