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A Semi-Automated Method to Extract Green and Non-Photosynthetic Vegetation Cover from RGB Images in Mixed Grasslands

机译:从混合草原中的RGB图像提取绿色和非光合植被覆盖的半自动方法

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摘要

Green (GV) and non-photosynthetic vegetation (NPV) cover are both important biophysical parameters for grassland research. The current methodology for cover estimation, including subjective visual estimation and digital image analysis, requires human intervention, lacks automation, batch processing capabilities and extraction accuracy. Therefore, this study proposed to develop a method to quantify both GV and standing dead matter (SDM) fraction cover from field-taken digital RGB images with semi-automated batch processing capabilities (i.e., written as a python script) for mixed grasslands with more complex background information including litter, moss, lichen, rocks and soil. The results show that the GV cover extracted by the method developed in this study is superior to that by subjective visual estimation based on the linear relation with normalized vegetation index (NDVI) calculated from field measured hyper-spectra (R2 = 0.846, p < 0.001 for GV cover estimated from RGB images; R2 = 0.711, p < 0.001 for subjective visual estimated GV cover). The results also show that the developed method has great potential to estimate SDM cover with limited effects of light colored understory components including litter, soil crust and bare soil. In addition, the results of this study indicate that subjective visual estimation tends to estimate higher cover for both GV and SDM compared to that estimated from RGB images.
机译:绿色(GV)和非光合植被(NPV)封面是草原研究的重要生物物理参数。目前用于覆盖估计的方法,包括主观视觉估计和数字图像分析,需要人为干预,缺乏自动化,批量处理能力和提取精度。因此,该研究建议开发一种方法来量化GV和站立的死亡事件(SDM)分数覆盖,以具有半自动批处理能力(即,写入Python脚本)的混合草地,更多复杂的背景信息,包括垃圾,苔藓,地衣,岩石和土壤。结果表明,本研究中开发的方法提取的GV盖优于通过基于与场测量超光谱计算的标准化植被指数(NDVI)的线性关系(R2 = 0.846,P <0.001,通过主体视觉估计对于从RGB图像估计的GV盖; R2 = 0.711,P <0.001对于主观视觉估计GV盖)。结果还表明,开发方法具有很大的潜力,估计SDM覆盖物,其浅色林下组分包括垃圾,土壳和裸土壤的有限影响。此外,该研究的结果表明,与RGB图像估计相比,主观视觉估计趋于估计GV和SDM的较高覆盖。

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