Using the Bayesian Network to Map Large-Scale Cropping Intensity by Fusing Multi-Source Data

Global food demand will increase over the next few decades, and sustainable agricultural intensification on current cropland may be a preferred option to meet this demand. Mapping cropping intensity with remote sensing data is of great importance for agricultural production, food security, and agric...

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Main Authors: Jianbin Tao, Wenbin Wu, Meng Xu
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/11/2/168
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spelling doaj-a1c5ad0d9ddc4fa586e099d487d8e2a72020-11-24T23:13:30ZengMDPI AGRemote Sensing2072-42922019-01-0111216810.3390/rs11020168rs11020168Using the Bayesian Network to Map Large-Scale Cropping Intensity by Fusing Multi-Source DataJianbin Tao0Wenbin Wu1Meng Xu2Key Laboratory for Geographical Process Analysis & Simulation of Hubei province/School of Urban and Environmental Sciences, Central China Normal University, Wuhan 430079, ChinaKey Laboratory of Agricultural Remote Sensing, Ministry of Agriculture/Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, Beijing 100081, ChinaKey Laboratory for Geographical Process Analysis & Simulation of Hubei province/School of Urban and Environmental Sciences, Central China Normal University, Wuhan 430079, ChinaGlobal food demand will increase over the next few decades, and sustainable agricultural intensification on current cropland may be a preferred option to meet this demand. Mapping cropping intensity with remote sensing data is of great importance for agricultural production, food security, and agricultural sustainability in the context of global climate change. However, there are some challenges in large-scale cropping intensity mapping. First, existing indicators are too coarse, and fine indicators for measuring cropping intensity are lacking. Second, the regional, intra-class variations detected in time-series remote sensing data across vast areas represent environment-related clusters for each cropping intensity level. However, few existing studies have taken into account the intra-class variations caused by varied crop patterns, crop phenology, and geographical differentiation. In this research, we first presented a new definition, a normalized cropping intensity index (CII), to quantify cropping intensity precisely. We then proposed a Bayesian network model fusing prior knowledge (BNPK) to address the issue of intra-class variations when mapping CII over large areas. This method can fuse regional differentiation factors as prior knowledge into the model to reduce the uncertainty. Experiments on five sample areas covering the main grain-producing areas of mainland China proved the effectiveness of the model. Our research proposes the framework of obtain a CII map with both a finer spatial resolution and a fine temporal resolution at a national scale.http://www.mdpi.com/2072-4292/11/2/168cropping intensity indexregional differentiationBayesian networkprior knowledgeMODIS time-series
collection DOAJ
language English
format Article
sources DOAJ
author Jianbin Tao
Wenbin Wu
Meng Xu
spellingShingle Jianbin Tao
Wenbin Wu
Meng Xu
Using the Bayesian Network to Map Large-Scale Cropping Intensity by Fusing Multi-Source Data
Remote Sensing
cropping intensity index
regional differentiation
Bayesian network
prior knowledge
MODIS time-series
author_facet Jianbin Tao
Wenbin Wu
Meng Xu
author_sort Jianbin Tao
title Using the Bayesian Network to Map Large-Scale Cropping Intensity by Fusing Multi-Source Data
title_short Using the Bayesian Network to Map Large-Scale Cropping Intensity by Fusing Multi-Source Data
title_full Using the Bayesian Network to Map Large-Scale Cropping Intensity by Fusing Multi-Source Data
title_fullStr Using the Bayesian Network to Map Large-Scale Cropping Intensity by Fusing Multi-Source Data
title_full_unstemmed Using the Bayesian Network to Map Large-Scale Cropping Intensity by Fusing Multi-Source Data
title_sort using the bayesian network to map large-scale cropping intensity by fusing multi-source data
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-01-01
description Global food demand will increase over the next few decades, and sustainable agricultural intensification on current cropland may be a preferred option to meet this demand. Mapping cropping intensity with remote sensing data is of great importance for agricultural production, food security, and agricultural sustainability in the context of global climate change. However, there are some challenges in large-scale cropping intensity mapping. First, existing indicators are too coarse, and fine indicators for measuring cropping intensity are lacking. Second, the regional, intra-class variations detected in time-series remote sensing data across vast areas represent environment-related clusters for each cropping intensity level. However, few existing studies have taken into account the intra-class variations caused by varied crop patterns, crop phenology, and geographical differentiation. In this research, we first presented a new definition, a normalized cropping intensity index (CII), to quantify cropping intensity precisely. We then proposed a Bayesian network model fusing prior knowledge (BNPK) to address the issue of intra-class variations when mapping CII over large areas. This method can fuse regional differentiation factors as prior knowledge into the model to reduce the uncertainty. Experiments on five sample areas covering the main grain-producing areas of mainland China proved the effectiveness of the model. Our research proposes the framework of obtain a CII map with both a finer spatial resolution and a fine temporal resolution at a national scale.
topic cropping intensity index
regional differentiation
Bayesian network
prior knowledge
MODIS time-series
url http://www.mdpi.com/2072-4292/11/2/168
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