利用 Landsat 8 卫星图像和谷歌地球引擎的多时态混合 CNN+LSTM 框架绘制农林业地图

IF 2.5 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Jenila Vincent M, Varalakshmi P
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引用次数: 0

摘要

农林业的确是印度等热带国家的传统做法。约有 2843 万公顷的土地用于农林种植。到 2050 年,印度的任务是将农林业面积增加到 5300 万公顷。在这项研究中,我们利用地理空间工具和混合深度学习技术绘制了农林地区地图。利用现有的分类器,以树冠密度为参数,将用于种植和各种农林业活动的土地(如橡胶、茶叶、椰子和香蕉种植园)归类为林冠。为了解决这一问题,我们提出了一个多时态混合深度学习框架,该框架融合了卷积神经网络、深度神经网络和长短期记忆网络,利用遥感数据对农林业进行分类,将其与林冠区分开来。实验在印度南部地区进行,使用 Landsat 8 图像对研究区域的农林业进行分类,包括茶叶、香蕉、橡胶、椰子和农作物地。研究人员设计了一个高效的多时态混合深度学习框架,用于对农林种植进行分类,将其与农作物地和森林集群区分开来。多时相混合 CNN+LSTM 的实验结果优于 CNN、LSTM、BiLSTM 模型,降低了错误率,准确率和 kappa 分数分别为 98.23% 和 0.88。所提出的方法为准确分类和估算 LULC,特别是绘制全国其他地区的农林种植图提供了基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agroforestry Mapping using Multi Temporal Hybrid CNN+LSTM Framework with Landsat 8 Satellite Imagery and Google Earth Engine
Agroforestry is indeed a traditional practice followed in tropical countries like India. About 28.43 million hectare area is used for agroforest cultivation. By 2050 India has the mission of increasing the area under agroforestry to 53 million hectares. In this study, we have made an effort to map the agroforest areas using the geospatial tools and hybrid deep learning techniques. The land utilized for cultivation and various agroforestry activities such as rubber, tea, coconut, and banana plantation were classified as forest canopy by the existing classifiers taking the tree canopy density as a parameter. In light of proposing a solution to the issue, we have put forth a multi temporal hybrid deep learning framework which is a fusion of convolutional neural network, a deep neural net and long short term memory network to classify agroforestry distinguishing it from the forest canopy using remote sensing data. The experimentation was carried out in the southern districts of India, and Landsat 8 imagery was used to classify the agroforestry of the study area that includes tea, banana, rubber, coconut, and crop lands. An efficient multi temporal hybrid deep learning framework was designed to classify the agroforest plantation distinguishing it from crop lands and forest clusters. The experimental results of multi temporal hybrid CNN+LSTM outperformed CNN, LSTM, BiLSTM model reducing the error rate with respective accuracy and kappa score of 98.23% and 0.88. The proposed method provides a benchmark to accurately classify and estimate the LULC, particularly mapping the agroforest plantation for other regions across the country.
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来源期刊
Environmental Research Communications
Environmental Research Communications ENVIRONMENTAL SCIENCES-
CiteScore
3.50
自引率
0.00%
发文量
136
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