Swarm Intelligence for Feature Identification in Natural Terrain Environment

Pooja Arora, A. Mishra, V. Panchal
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引用次数: 2

Abstract

One of the most important problems in remote sensing studies is the classification of features in the satellite images, as it provides land use/ land cover information of the area under study. The Land Cover information like vegetation, water bodies, rocky area, sandy area etc. and its change over a period of time greatly affect local, regional and global environmental changes. Land Use information like buildings, roads and railway tracks are important features of urban infrastructure which crucially affect the life of people in cities. Recent developments in biologically inspired optimization techniques have motivated the researchers to explore the application of these techniques to the problem of satellite image feature classification. In this paper particle swarm optimization (PSO) along with the morphological operators is used for the identification of urban features like road and railway network, as well as land cover types, contained in the image. The concept of this paper is to explore and utilize the neighborhood information of the swarm computing algorithm to accurately identify features in the natural terrain environment. The test areas used are located in urban environment of Chandigarh and Saharanpur. Google Earth images of these areas were acquired and processed. The approach adopted has yielded satisfactory results.
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基于群体智能的自然地形环境特征识别
遥感研究中最重要的问题之一是卫星图像的特征分类,因为它提供了所研究地区的土地利用/土地覆盖信息。植被、水体、岩石区、沙区等土地覆盖信息及其一段时间内的变化对局部、区域乃至全球的环境变化影响很大。建筑、道路、铁路等土地利用信息是城市基础设施的重要特征,对城市居民的生活有着至关重要的影响。生物优化技术的最新发展促使研究人员探索这些技术在卫星图像特征分类问题中的应用。本文将粒子群算法(particle swarm optimization, PSO)与形态学算子结合,用于识别图像中包含的道路、铁路网等城市特征以及土地覆盖类型。本文的概念是探索和利用群计算算法的邻域信息来准确识别自然地形环境中的特征。使用的试验区位于昌迪加尔和萨哈兰普尔的城市环境。谷歌获取并处理了这些地区的地球图像。所采取的方法取得了令人满意的结果。
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