基于遥感光谱指数和决策树方法的巴西南部小内沼泽区域划界

IF 0.4 Q4 REMOTE SENSING Revista de Teledeteccion Pub Date : 2018-12-26 DOI:10.4995/RAET.2018.10366
J. D. Simioni, L. Guasselli, L. Ruiz, V. Nascimento, G. de Oliveira
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引用次数: 4

摘要

在过去的几十年里,由于向农业、城市和工业用地的转变,大量的小内部沼泽区已经消失。剩下的沼泽地面临着一些威胁,如农业排水、道路和港口设施的建设、废物处理等。本研究整合了17个遥感光谱指数和决策树(DT)方法,使用Sentinel 2A夏季和冬季的图像绘制SIM区域。我们的研究结果表明,遥感指数虽然不是专门为湿地划界而制定的,但在对这些生态系统进行分类时却取得了令人满意的结果。NDTI、BI、NDPI和BI_2是研究区DT技术对沼泽地分类更有用的指标,分别为25.9%、17.7%、11.1%和0.8%。总体而言,夏季和冬季图像的比例正确率分别为95.9%和77.9%。我们假设这种显著的PC变化与夏季的水稻种植期和/或冬季的水位振荡期有关。对于未来的研究,我们建议除了遥感光谱指数外,还使用有源遥感器(如雷达)和土壤图,以便在小的内部沼泽区划界方面获得更好的结果。
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Small inner marsh area delimitation using remote sensing spectral indexes and decision tree method in southern Brazil
Vast small inner marsh (SIM) areas have been lost in the past few decades through the conversion to agricultural, urban and industrial lands. The remaining marshes face several threats such as drainage for agriculture, construction of roads and port facilities, waste disposal, among others. This study integrates 17 remote sensing spectral indexes and decision tree (DT) method to map SIM areas using Sentinel 2A images from Summer and Winter seasons. Our results showed that remote sensing indexes, although not developed specifically for wetland delimitation, presented satisfactory results in order to classify these ecosystems. The indexes that showed to be more useful for marshes classification by DT techniques in the study area were NDTI, BI, NDPI and BI_2, with 25.9%, 17.7%, 11.1% and 0.8%, respectively. In general, the Proportion Correct (PC) found was 95.9% and 77.9% for the Summer and Winter images respectively. We hypothetize that this significant PC variation is related to the rice-planting period in the Summer and/or to the water level oscillation period in the Winter. For future studies, we recommend the use of active remote sensors (e.g., radar) and soil maps in addition to the remote sensing spectral indexes in order to obtain better results in the delimitation of small inner marsh areas.
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来源期刊
Revista de Teledeteccion
Revista de Teledeteccion REMOTE SENSING-
CiteScore
1.80
自引率
14.30%
发文量
11
审稿时长
10 weeks
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