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首页> 外文期刊>Environmental Monitoring and Assessment >An automated (novel) algorithm for estimating green vegetation cover fraction from digital image: UIP-MGMEP
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An automated (novel) algorithm for estimating green vegetation cover fraction from digital image: UIP-MGMEP

机译:一种用于根据数字图像估算绿色植被覆盖率的自动(新颖)算法:UIP-MGMEP

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摘要

Green vegetation cover fraction (VCF) is an important indicator of vegetation status in ecology and agronomy. Digital image analysis (DIA) has been widely accepted as a new VCF measurement technique. In this study, we present a novel fully automatic threshold segmentation algorithm for VCF measurements, which is named as upper inflection point plus mean gradient magnitude of edge pixels (UIP-MGMEP). The algorithm performs VCF estimation upon the vegetation index Excess Green (EXG). UIP-MGMEP optimizes the EXG threshold by searching the upper inflection point (UIP) of the M-Et curve (mean gradient magnitude of edge pixels (MGMEP) vs. EXG threshold), based on the assumption that EXG variance of the boundary pixels between vegetation and background is larger than the variance of the background. Five typical sample images are used to illustrate how ground complexity reduces the distinctness of the UIP. Three controlled experiments are illustrated to test the robustness of UIP-MGMEP to resolution, exposure, and ground complexity. The results show that UIP-MGMEP is a promising algorithm for automatic VCF estimation upon digital images. Compared to broad-leaved grass, narrow-leaved grass is more sensitive to resolution and exposure. To reduce ground complexity, smaller footprint size while more images to cover the same area may be better than one image with large footprint size. UIP-MGMEP is fully automatic, making it promising for batch processing of VCF measurements that is very difficult in any wide-range field survey in the past. UIP-MGMEP algorithm can only extract green vegetation and is not suitable for non-green (even grayish-green) vegetation, due to the limits of vegetation index EXG. In addition, UIP-MGMEP is not recommended for images with VCF less than 0.5% or greater than 99.5%.
机译:绿色植被覆盖率(VCF)是生态学和农学中植被状况的重要指标。数字图像分析(DIA)已被广泛接受为一种新的VCF测量技术。在这项研究中,我们提出了一种用于VCF测量的新型全自动阈值分割算法,该算法称为上拐点加边缘像素的平均梯度幅度(UIP-MGMEP)。该算法对植被指数过高的绿色(EXG)进行VCF估计。 UIP-MGMEP基于以下假设,通过搜索M-Et曲线的上​​拐点(UIP)(边缘像素的平均梯度幅度(MGMEP)与EXG阈值)来优化EXG阈值植被和背景大于背景的方差。使用五个典型的样本图像来说明地面复杂度如何降低UIP的清晰度。说明了三个受控实验,以测试UIP-MGMEP对分辨率,曝光和地面复杂性的鲁棒性。结果表明,UIP-MGMEP是一种用于数字图像自动VCF估计的有前途的算法。与阔叶草相比,窄叶草对分辨率和曝光更敏感。为了减少地面的复杂性,较小的足迹尺寸同时覆盖更多图像以覆盖相同区域可能比具有较大足迹尺寸的图像更好。 UIP-MGMEP是全自动的,使其有望用于VCF测量的批处理,这在过去的任何大范围现场调查中都非常困难。由于植被指数EXG的限制,UIP-MGMEP算法只能提取绿色植被,不适用于非绿色(甚至是灰绿色)植被。此外,对于VCF小于0.5%或大于99.5%的图像,不建议使用UIP-MGMEP。

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