Determination of Olive Trees with Multi-sensor Data Fusion

Haydar Akcay, S. Kaya, Elif Sertel, U. Alganci
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引用次数: 7

Abstract

Global warming, which triggers climatic changes, has direct effects on the phenology of plants. For a sustainable agricultural production, continuous monitoring of crops and trees is critical to have updated information and producing effective agricultural plans. Remote sensing is an efficient option for this purpose and is a very popular technique. Olive is an essential agricultural product for the economy of Mediterranean countries such as Turkey. Determination of olive trees, which are expanded all around Aegean and}{Mediterranean regions of the country, is critical to assess the production capacity and the quality of products. In this study, combinations of time series of Sentinel-1 satellite images, Sentinel-2 satellite images and NDVI products obtained from Sentinel-2 satellite images are used to investigate the classification accuracy of olive trees. According to analysis results, a significant correlation with R2 = 0.67 found between NDVI and SAR data (sigma nought VH/VV in decibel scale). This result pointed out probable accuracy improvement in classification of fused data from different sensors. In the next step, supervised random forest classification was applied on the fused data combinations and results showed that Sentinel-1 – Sentinel-2, Sentinel-1 – NDVI and Sentinel-2 – NDVI combinations achieved the highest overall accuracy with 73 %, while standalone Sentinel-1 and Sentinel-2 image time series classification accuracies are 48 % and 68 % respectively.
多传感器数据融合测定橄榄树
全球变暖引发气候变化,对植物物候有直接影响。为了可持续的农业生产,对作物和树木的持续监测对于获得最新信息和制定有效的农业计划至关重要。遥感是实现这一目的的有效选择,也是一种非常流行的技术。橄榄是土耳其等地中海国家经济的重要农产品。橄榄树遍布该国的爱琴海和地中海地区,对橄榄树的测定对于评估产品的生产能力和质量至关重要。本研究结合Sentinel-1卫星图像、Sentinel-2卫星图像的时间序列以及Sentinel-2卫星图像获得的NDVI产品,对橄榄树的分类精度进行了研究。分析结果显示,NDVI与SAR数据(sigma 0 VH/VV分贝标度)之间存在R2 = 0.67的显著相关。这一结果指出了不同传感器融合数据分类精度的可能提高。对融合后的数据组合进行监督随机森林分类,结果表明,Sentinel-1 - Sentinel-2、Sentinel-1 - NDVI和Sentinel-2 - NDVI组合的整体分类精度最高,达到73%,而单独的Sentinel-1和Sentinel-2图像时间序列分类精度分别为48%和68%。
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