Land cover classification by using multi-temporal COSMO-SkyMed data

G. Satalino, D. Impedovo, A. Balenzano, F. Mattia
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引用次数: 10

Abstract

The objective of this paper is to report on the crop classification activities carried out during the first year of the Italian project “Use of COSMO-SkyMed data for LANDcover classification and surface parameters retrieval over agricultural sites” (COSMOLAND), funded by the Italian Space Agency. The project intends to contribute to the COSMO-SkyMed mission objectives in the agriculture and hydrology application domains. In particular, the objective of the classification activities is to assess the potential of multi-temporal series of X-band COSMO-SkyMed SAR data for crop classification. The selected agricultural site is located in the Capitanata plain close to the Foggia town (Puglia region, Southern Italy). Over this area, 8 Stripmap PingPong COSMO Sky-Med images at HH/HV polarization and at low incidence angle were acquired from April to August 2010. In the paper, a classification scheme based on the Maximum Likelihood algorithm is applied to the multi-temporal data set and its accuracy is assessed with respect to a reference map obtained by means of SPOT data.
基于cosmos - skymed多时相数据的土地覆盖分类
本文的目的是报告由意大利空间局资助的意大利项目“利用COSMO-SkyMed数据进行土地覆盖分类和农业场地表面参数检索”(COSMOLAND)第一年开展的作物分类活动。该项目打算为COSMO-SkyMed任务在农业和水文学应用领域的目标作出贡献。特别是,分类活动的目的是评估x波段cosmos - skymed SAR数据多时间序列用于作物分类的潜力。选定的农业基地位于卡皮塔纳塔平原,靠近福贾镇(意大利南部普利亚地区)。2010年4 - 8月在该区域获取了8幅低入射角HH/HV偏振下的Stripmap乒乓COSMO Sky-Med图像。本文将基于极大似然算法的分类方案应用于多时相数据集,并结合SPOT数据获得的参考图对其精度进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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