偏振SAR数据用于生态系统监测的潜力

Radu Tănase, C. Cazacu, D. Faur, D. Sacaleanu, M. Datcu
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摘要

本文的总体目标是评估全极化SAR数据在生态系统监测领域用于土地利用制图的潜力。最先进的生态系统研究旨在将智能传感器网络获得的原位测量数据与地球观测数据分析相结合,以确保数据质量服务于多种应用。利用光学和SAR数据的近实时观测有助于评价多瑙河漫滩和内陆三角洲等动态环境下的生物多样性威胁。本文讨论了从极化SAR数据中提取生物多样性特征的综合方法的必要性。为了区分罗马尼亚Braila岛地区不同类型的植被,采用Entropy\各向异性\Alpha-Wishart算法对两幅重叠的PolSAR图像(l波段PALSAR和c波段RadarSAT 2)进行无监督分类,并将结果作为采集传感器特征的函数进行科学评估。
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Potential of polarimetric SAR data use for ecosystems monitoring
The overall goal of this paper is to assess the potential of fully polarimetric SAR data for land-use mapping in the field of ecosystem monitoring. State of the art ecosystems' studies aim at integrating in-situ measurements acquired by smart sensor networks with Earth observation data analysis to ensure data quality services to multiple applications. The near real time observation using optical and SAR data contributes to evaluation of biodiversity threats in a very dynamic environment, Danube floodplain and inland delta. This paper addresses the need for consolidated approaches to extract biodiversity features from polarimetric SAR data. Two overlapping PolSAR images (L-band PALSAR and C-band RadarSAT 2) were classified in an unsupervised manner using the Entropy\Anisotropy\Alpha-Wishart algorithm in order to differentiate between various types of vegetation in the region of Braila Island, Romania, and then the results were assessed in a scientific manner, as a function of the acquisition sensors characteristics.
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