Capsule network-based approach for estimating grassland coverage using time series data from enhanced vegetation index

Yaqi Sun, Hailong Liu, Zhengqiang Guo
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引用次数: 3

Abstract

The degradation and desertification of grasslands pose a daunting challenge to China's arid and semiarid areas owing to the increasing demand for them in light of the rise of animal husbandry. Monitoring grasslands by using big data has emerged as a popular area of research in recent years. As grassland degradation is a slow and gradual process, the accurate identification of grassland cover is key to monitoring it. Vegetation coverage is currently monitored mainly by combining inversion-based methods with field surveys, which requires significant human effort and other resources and is thus unsuitable for use at a large scale. We proposed to use time series from the enhanced vegetation index (EVI) in capsule network-based methods to identify grasslands. The process classified grassland coverage into four levels, high, medium, low, and other, based on Landsat images from 2019. The accuracy in classifying the grasslands at each level was higher than 90%, with an overall accuracy of 96.32% and a kappa coefficient of 0.9508. The proposed method outperformed the SVM, RF, and LSTM algorithms in terms of classification accuracy.

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基于胶囊网络的增强植被指数时间序列草地覆盖度估算方法
随着畜牧业的兴起,对草原的需求不断增加,草原的退化和荒漠化对中国干旱和半干旱地区构成了严峻的挑战。近年来,利用大数据监测草原已成为一个热门的研究领域。草地退化是一个缓慢而渐进的过程,准确识别草地覆盖度是监测草地退化的关键。目前对植被覆盖度的监测主要是将基于反演的方法与实地调查相结合,这需要大量的人力和其他资源,因此不适合大规模使用。本文提出了基于胶囊网络的增强植被指数(EVI)的时间序列识别草地的方法。该过程基于2019年的Landsat图像,将草地覆盖率分为高、中、低和其他四个级别。各等级草地分类精度均在90%以上,总体精度为96.32%,kappa系数为0.9508。该方法在分类精度方面优于SVM、RF和LSTM算法。
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