首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ANALYSIS ON THE EFFECT OF SPATIAL AND SPECTRAL RESOLUTION OF DIFFERENT REMOTE SENSING DATA IN SUGARCANE CROP YIELD STUDY
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ANALYSIS ON THE EFFECT OF SPATIAL AND SPECTRAL RESOLUTION OF DIFFERENT REMOTE SENSING DATA IN SUGARCANE CROP YIELD STUDY

机译:不同遥感数据在甘蔗作物产量研究中不同遥感数据的空间和光谱分辨率的影响分析

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Sugarcane is a perennial crop that contributes to nearly 80% of the global sugar-based products. Therefore, sugarcane growers and food companies are seeking ways to address the concerns related to sugarcane crop yield and health. In this study, a spatial and spectral analysis on the peak growth stage of the sugarcane fields in Bundaberg, Queensland, Australia is performed using the Normalized Difference Vegetation Index (NDVI) and Normalized Difference Red Edge Index (NDRE) derived from high-resolution WorldView-2 (WV2) images and multispectral Unmanned Aerial Vehicle (UAV) images. Two topics are chosen for this study: 1) the difference and correlation between NDVI and NDRE that are commonly used to estimate Leaf Area Index, a common crop parameter for the assessment of crop yield and health stages; 2) the impact of spatial resolution on the systematic difference in the abovementioned two Vegetation Indices (VIs). The statistical correlation analysis between the WV2 and UAV images produced correlation coefficients of 0.68 and 0.71 for NDVI and NDRE, respectively. In addition, an overall comparison of the WV2 and UAV-derived VIs indicated that the UAV images produced a better accuracy than the WV2 images because UAV can effectively distinguish various status of vegetation owing to its high spatial resolution. The results illustrated a strong positive correlation between NDVI and NDRE, each derived from the WV2 and UAV images, and the correlation coefficients were 0.81 and 0.90, respectively, i.e. the correlation between NDVI and NDRE is higher in the UAV images than the WV2 images.
机译:甘蔗是一种常年作物,有助于近80%的全球糖类产品。因此,甘蔗种植者和食品公司正在寻求解决与甘蔗作物产量和健康有关的疑虑的方法。在这项研究中,澳大利亚Bundaberg在昆士兰群岛甘蔗田的峰生长阶段的空间和光谱分速分析是使用从高分辨率世界观的归一化差异植被指数(NDVI)和归一化差异红色指数(NDRE)进行的-2(WV2)图像和多光谱无人机(UAV)图像。本研究选择了两个主题:1)NDVI和NDRE之间的差异和相关性通常用于估算叶片区域指数,是评估作物产量和健康阶段的常见作物参数; 2)空间分辨率对上述两种植被指数系统差异的影响(VIS)。 WV2和UAV图像之间的统计相关性分析分别为NDVI和NDRE产生0.68和0.71的相关系数。此外,WV2和UAV导出的VI的总体比较表明,UAV图像产生比WV2图像更好的精度,因为由于其高空间分辨率,UAV可以有效地区分植被的各种状态。结果示出了NDVI和NDRE之间的强正相关,每个来自WV2和UAV图像的结果,并且相关系数分别为0.81和0.90,即UAV图像中的NDVI和NDRE之间的相关性比WV2图像更高。

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