基于Cartosat2高分辨率卫星图像的树木检测与枚举

S. Koneru, M. Arul Raj, M. Padmaja, Praveen Kumar Kollu, Lokesh Bokinala, A. Ravi Raja, A. Jitendra
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引用次数: 3

摘要

遥感在地球资源监测中起着关键作用。遥感利用高分辨率卫星捕获和观测地球的各种条件,如土地覆盖和土地利用,提供有关森林,湿地,水体覆盖多少土地以及人们用于农村发展,城市化和农业的多少土地的数字图像信息。数字图像处理对卫星数据的解密具有重要意义,有助于了解变化检测和土地覆盖分类。在本研究中,利用卫星数据对地表树木进行调查和识别,而从高分辨率卫星图像中识别树木是一项非常困难的任务。数字图像处理包括图像增强、分割、特征提取和对提取的特征进行分类等技术。在本研究中,使用Cartosat2图像进行树木的检测和枚举。利用数字图像处理,可以知道卫星图像中可用的信息。图像处理有助于在没有任何损失的情况下对卫星图像中的可用数据进行细化。图像分割用于以可理解的形式分析图像,其中它将图像以像素的形式切割。它主要用于检测和分类数字图像中的形状或物体边界以及其他相关数据。对比度有限自适应直方图均衡化(CLAHE)是一种简单有效的图像质量增强技术。带掩蔽的活动轮廓模型最适合于图像分割、特征检测和树枚举。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Enumeration of Trees using Cartosat2 High Resolution Satellite Imagery
Remote sensing plays a key role to monitor the earth resources. Remote sensing uses High Resolution Satellites to capture and observe the various conditions of the earth like Land cover and Land use which provides the information regarding how much of land is covered by forest, wetland, water body and how much of land is used by people for rural development, urbanization and agricultural in digital images. Digital Image Processing is useful in decrypt satellite data which helps to know change detection and land cover classification. In this research, satellite data are used to investigate trees and identifying trees on the earth surface, where it is very difficult task to identify trees from high resolution satellite imagery. Digital Image Processing consists of various techniques like image enhancement, segmentation, feature extraction and classifying the extracted features. In this research, Cartosat2 images are used for detection and enumeration of trees. With utilization of digital image processing, the information can be known that is available in the satellite image. Image processing helps to refines the available data in the satellite images without any loss. Image segmentation is used to analyze the image in a understandable form, where it cleaves the image in the form of pixels. Basically it is used to detect and classify the shapes or object boundaries and other relevant data in the digital images. Contrast Limited Adaptive Histogram Equalization(CLAHE) is one of the effective simple techniques for enhancing image quality. Active Contour Model with masking is best suit for image Segmentation and feature Detection and Tree Enumeration.
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