Please use this identifier to cite or link to this item: https://hdl.handle.net/1959.11/59700
Full metadata record
DC FieldValueLanguage
dc.contributor.authorJoshi, Abhashaen
dc.contributor.authorPradhan, Biswajeeten
dc.contributor.authorGite, Shilpaen
dc.contributor.authorChakraborty, Subrataen
dc.date.accessioned2024-05-22T06:49:00Z-
dc.date.available2024-05-22T06:49:00Z-
dc.date.issued2023-04-11-
dc.identifier.citationRemote Sensing, 15(8), p. 1-26en
dc.identifier.issn2072-4292en
dc.identifier.urihttps://hdl.handle.net/1959.11/59700-
dc.description.abstract<p>Reliable and timely crop-yield prediction and crop mapping are crucial for food security and decision making in the food industry and in agro-environmental management. The global coverage, rich spectral and spatial information and repetitive nature of remote sensing (RS) data have made them effective tools for mapping crop extent and predicting yield before harvesting. Advanced machine-learning methods, particularly deep learning (DL), can accurately represent the complex features essential for crop mapping and yield predictions by accounting for the nonlinear relationships between variables. The DL algorithm has attained remarkable success in different fields of RS and its use in crop monitoring is also increasing. Although a few reviews cover the use of DL techniques in broader RS and agricultural applications, only a small number of references are made to RS-based crop-mapping and yield-prediction studies. A few recently conducted reviews attempted to provide overviews of the applications of DL in crop-yield prediction. However, they did not cover crop mapping and did not consider some of the critical attributes that reveal the essential issues in the field. This study is one of the first in the literature to provide a thorough systematic review of the important scientific works related to state-of-the-art DL techniques and RS in crop mapping and yield estimation. This review systematically identified 90 papers from databases of peer-reviewed scientific publications and comprehensively reviewed the aspects related to the employed platforms, sensors, input features, architectures, frameworks, training data, spatial distributions of study sites, output scales, evaluation metrics and performances. The review suggests that multiple DL-based solutions using different RS data and DL architectures have been developed in recent years, thereby providing reliable solutions for crop mapping and yield prediction. However, challenges related to scarce training data, the development of effective, efficient and generalisable models and the transparency of predictions should be addressed to implement these solutions at scale for diverse locations and crops.</p>en
dc.languageenen
dc.publisherMDPI AGen
dc.relation.ispartofRemote Sensingen
dc.rightsAttribution 4.0 International*
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/*
dc.titleRemote-Sensing Data and Deep-Learning Techniques in Crop Mapping and Yield Prediction: A Systematic Reviewen
dc.typeJournal Articleen
dc.identifier.doi10.3390/rs15082014en
dcterms.accessRightsUNE Greenen
local.contributor.firstnameAbhashaen
local.contributor.firstnameBiswajeeten
local.contributor.firstnameShilpaen
local.contributor.firstnameSubrataen
local.profile.schoolSchool of Science and Technologyen
local.profile.emailschakra3@une.edu.auen
local.output.categoryC1en
local.record.placeauen
local.record.institutionUniversity of New Englanden
local.publisher.placeSwitzerlanden
local.identifier.runningnumber2014en
local.format.startpage1en
local.format.endpage26en
local.peerreviewedYesen
local.identifier.volume15en
local.identifier.issue8en
local.title.subtitleA Systematic Reviewen
local.access.fulltextYesen
local.contributor.lastnameJoshien
local.contributor.lastnamePradhanen
local.contributor.lastnameGiteen
local.contributor.lastnameChakrabortyen
dc.identifier.staffune-id:schakra3en
local.profile.orcid0000-0002-0102-5424en
local.profile.roleauthoren
local.profile.roleauthoren
local.profile.roleauthoren
local.profile.roleauthoren
local.identifier.unepublicationidune:1959.11/59700en
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
local.title.maintitleRemote-Sensing Data and Deep-Learning Techniques in Crop Mapping and Yield Predictionen
local.relation.fundingsourcenoteThis study was supported by the Centre for Advanced Modelling and Geospatial Information Systems (CAMGIS), University of Technology Sydney. The research was supported by an Australian Government Research Training Program Scholarship, granted to A.J.en
local.output.categorydescriptionC1 Refereed Article in a Scholarly Journalen
local.search.authorJoshi, Abhashaen
local.search.authorPradhan, Biswajeeten
local.search.authorGite, Shilpaen
local.search.authorChakraborty, Subrataen
local.open.fileurlhttps://rune.une.edu.au/web/retrieve/e0a1d256-4fea-426b-846e-0b44df4bff8fen
local.uneassociationYesen
local.atsiresearchNoen
local.sensitive.culturalNoen
local.year.published2023en
local.fileurl.openhttps://rune.une.edu.au/web/retrieve/e0a1d256-4fea-426b-846e-0b44df4bff8fen
local.fileurl.openpublishedhttps://rune.une.edu.au/web/retrieve/e0a1d256-4fea-426b-846e-0b44df4bff8fen
local.subject.for20204601 Applied computingen
local.profile.affiliationtypeExternal Affiliationen
local.profile.affiliationtypeExternal Affiliationen
local.profile.affiliationtypeExternal Affiliationen
local.profile.affiliationtypeUNE Affiliationen
local.date.moved2024-05-22en
Appears in Collections:Journal Article
School of Science and Technology
Files in This Item:
2 files
File Description SizeFormat 
openpublished/RemoteSensingChakraborty2023JournalArticle.pdfPublished version2.9 MBAdobe PDF
Download Adobe
View/Open
Show simple item record

SCOPUSTM   
Citations

35
checked on Aug 17, 2024
Google Media

Google ScholarTM

Check

Altmetric


This item is licensed under a Creative Commons License Creative Commons