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Vineyard Detection and Vine Variety Discrimination from Very High Resolution Satellite Data

机译:从超高分辨率卫星数据中进行葡萄园检测和葡萄品种区分

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摘要

In order to exploit remote sensing data operationally for precision agriculture applications, efficient and automated methods are required for the accurate detection of vegetation, crops and different crop varieties. To this end, we have designed, developed and evaluated an object-based classification framework towards the detection of vineyards, the vine canopy extraction and the vine variety discrimination from very high resolution multispectral data. A novel set of spectral, spatial and textural features, as well as rules, segmentation scales and a set of parameters are proposed based on object-based image analysis. The validation of the developed methodology was carried out on multitemporal WorldView-2 satellite data at four different viticulture regions in Greece. Concurrent in situ canopy reflectance observations were acquired from a portable spectroradiometer during the field campaigns. The performed quantitative evaluation indicated that the developed approach managed in all cases to detect vineyards with high completeness and correctness detection rates, i.e. , over 89%. The vine canopy extraction methodology was validated with overall accuracy (OA) rates of above 96%. The quantitative evaluation regarding the vine variety discrimination task, including experiments with up to six different varieties, reached OA rates above 85% at the parcel level. The combined analysis of the experimental results with the spectral signatures from the in situ reflectance data indicated that certain vine varieties (e.g., Merlot ) presented distinct spectral patterns across the VNIR spectrum.
机译:为了可操作地将遥感数据用于精确农业应用,需要高效且自动化的方法来准确检测植被,农作物和不同农作物品种。为此,我们已经设计,开发和评估了一个基于对象的分类框架,用于从非常高分辨率的多光谱数据中检测葡萄园,葡萄树冠层提取和葡萄树品种鉴别。基于基于对象的图像分析,提出了一组新颖的光谱,空间和纹理特征,以及规则,分割尺度和一组参数。所开发方法的验证是在希腊四个不同的葡萄种植区对多时域WorldView-2卫星数据进行的。在野战期间从便携式分光辐射计获得了同时进行的原地冠层反射率观测。进行的定量评估表明,所开发的方法在所有情况下都可以检测出具有较高完整性和正确性检出率(即超过89%)的葡萄园。葡萄树冠层提取方法的总体准确率(OA)高于96%,得到了验证。有关葡萄品种鉴别任务的定量评估(包括对多达六个不同品种的试验)在包裹级别上的OA率达到了85%以上。对实验结果与来自原位反射率数据的光谱特征的组合分析表明,某些葡萄树品种(例如Merlot)在整个VNIR光谱中呈现出不同的光谱模式。

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