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Emissivity-based vegetation indices to monitor deforestation and forest degradation in the Congo Basin rainforest

机译:基于发射率的植被指数,以监测森林盆地雨林中的森林砍伐和森林退化

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Vegetation stress is a major widespread problem in many countries because of climate change and anthropogenic activities. Deforestation and forest degradation phenomena may be caused for several reasons such as infrastructure development, agriculture, collection of wood energy, forest exploitation. Over the last decade, a severe decline in vegetation was observed in the Congo Basin rainforest, the second-largest tropical forest in the world, behind the Amazon. Therefore, actions are required to monitor and detect vegetation stresses to mitigate their negative impacts on human life, wildlife, and plant communities. Vegetation stress can be estimated using three different methods: field measurements, meteorological data, and remote sensing. The present study is mainly focused on satellite remote sensing. The main objective is to develop and test new indices of vegetation-soil dryness based on the surface emissivity. Until now, the problem has been attacked through indices such as the normalized differential vegetation index (or NDVI). The problem of NDVI is that it is a greenness index and is not capable to distinguish bare soil from senescent vegetation, whereas this distinction is important especially when forest degradation followed by eventual regeneration occurs and when dealing with semi-arid regions, where we could have desert sand. We propose to follow the strategy of using surface emissivity (r), which is more closely related to surface type and coverage. By properly using surface emissivity in the infrared we can define a set of channels that arc particularly sensitive to bare soil, green, and senescent vegetation. From these emissivity channels, we can derive a suitable emissivity contrast index or ECI, which is sensitive to green vegetation, senescent vegetation, and bare soil, therefore overcoming the NDVI limitation concerning its capability to distinguish bares soil from senescent vegetation. The analysis is performed with CAMEL (Combined ASTER and MODIS Emissivity for Land) database from 2000 to 2016.
机译:由于气候变化和人为活动,植被压力是许多国家的主要普遍问题。森林砍伐和森林退化现象可能是由于基础设施开发,农业,木能集合,森林剥削等几种原因而导致。在过去十年中,在亚马逊后面的世界第二大热带森林中观察到植被的严重下降。因此,需要行动来监测和检测植被应力,以减轻对人类生命,野生动物和植物群落的负面影响。可以使用三种不同方法估算植被应力:现场测量,气象数据和遥感。本研究主要集中在卫星遥感上。主要目的是基于表面发射率开发和测试新的植被水土干燥索引。到目前为止,问题已经通过诸如归一化差分植被指数(或NDVI)等索引攻击。 NDVI的问题是,它是一种绿色指数,并且无法将裸露的土壤与衰老植被区分开,而这种区别是重要的,特别是当森林降解后,当发生最终的再生时以及在处理半干旱地区时,我们可以拥有沙漠沙子。我们建议遵循使用表面发射率(R)的策略,这与表面类型和覆盖率更密切相关。通过在红外线使用表面发射率,我们可以定义一组通电对裸土,绿色和衰老植被特别敏感的通道。从这些发射渠道,我们可以得出合适的发射率对比度指数或ECI,这对绿色植被,衰老植被和裸土是敏感的,因此克服了与其能力区别于衰老植被区区麦芽土壤的能力的限制。从2000年到2016年,用骆驼(组合ASTER和MODIS发射率组合)数据库进行分析。

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