Data Fusion in Agriculture: Resolving Ambiguities and Closing Data Gaps

被引:33
作者
Arnal Barbedo, Jayme Garcia [1 ]
机构
[1] Embrapa Digital Agr, BR-13083886 Campinas, SP, Brazil
关键词
data fusion; sensors; variability; precision agriculture; artificial intelligence; SENSOR DATA FUSION; MULTISENSOR DATA FUSION; SYNTHETIC LANDSAT DATA; SURFACE SOIL-MOISTURE; PRECISION AGRICULTURE; MANAGEMENT ZONES; CROP TYPE; YIELD PREDICTION; IMAGE FUSION; WHEAT YIELD;
D O I
10.3390/s22062285
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Acquiring useful data from agricultural areas has always been somewhat of a challenge, as these are often expansive, remote, and vulnerable to weather events. Despite these challenges, as technologies evolve and prices drop, a surge of new data are being collected. Although a wealth of data are being collected at different scales (i.e., proximal, aerial, satellite, ancillary data), this has been geographically unequal, causing certain areas to be virtually devoid of useful data to help face their specific challenges. However, even in areas with available resources and good infrastructure, data and knowledge gaps are still prevalent, because agricultural environments are mostly uncontrolled and there are vast numbers of factors that need to be taken into account and properly measured for a full characterization of a given area. As a result, data from a single sensor type are frequently unable to provide unambiguous answers, even with very effective algorithms, and even if the problem at hand is well defined and limited in scope. Fusing the information contained in different sensors and in data from different types is one possible solution that has been explored for some decades. The idea behind data fusion involves exploring complementarities and synergies of different kinds of data in order to extract more reliable and useful information about the areas being analyzed. While some success has been achieved, there are still many challenges that prevent a more widespread adoption of this type of approach. This is particularly true for the highly complex environments found in agricultural areas. In this article, we provide a comprehensive overview on the data fusion applied to agricultural problems; we present the main successes, highlight the main challenges that remain, and suggest possible directions for future research.
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页数:20
相关论文
共 138 条
[1]   Generating surface soil moisture at 30 m spatial resolution using both data fusion and machine learning toward better water resources management at the field scale [J].
Abowarda, Ahmed Samir ;
Bai, Liangliang ;
Zhang, Caijin ;
Long, Di ;
Li, Xueying ;
Huang, Qi ;
Sun, Zhangli .
REMOTE SENSING OF ENVIRONMENT, 2021, 255
[2]   Sentinel SAR-optical fusion for crop type mapping using deep learning and Google Earth Engine [J].
Adrian, Jarrett ;
Sagan, Vasit ;
Maimaitijiang, Maitiniyazi .
ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2021, 175 :215-235
[3]   Data fusion of visible near-infrared and mid-infrared spectroscopy for rapid estimation of soil aggregate stability indices [J].
Afriyie, Ernest ;
Verdoodt, Ann ;
Mouazen, Abdul M. .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2021, 187
[4]   A decision support system based on multisensor data fusion for sustainable greenhouse management [J].
Aiello, Giuseppe ;
Giovino, Irene ;
Vallone, Mariangela ;
Catania, Pietro ;
Argento, Antonella .
JOURNAL OF CLEANER PRODUCTION, 2018, 172 :4057-4065
[5]   Graph-Based Data Fusion Applied to: Change Detection and Biomass Estimation in Rice Crops [J].
Alejandro Jimenez-Sierra, David ;
Dario Benitez-Restrepo, Hernan ;
Dario Vargas-Cardona, Hernan ;
Chanussot, Jocelyn .
REMOTE SENSING, 2020, 12 (17)
[6]   Human Activity Recognition through Recurrent Neural Networks for Human-Robot Interaction in Agriculture [J].
Anagnostis, Athanasios ;
Benos, Lefteris ;
Tsaopoulos, Dimitrios ;
Tagarakis, Aristotelis ;
Tsolakis, Naoum ;
Bochtis, Dionysis .
APPLIED SCIENCES-BASEL, 2021, 11 (05) :1-21
[7]   A multi-source data fusion approach to assess spatial-temporal variability and delineate homogeneous zones: A use case in a table grape vineyard in Greece [J].
Anastasiou, Evangelos ;
Castrignano, Annamaria ;
Arvanitis, Konstantinos ;
Fountas, Spyros .
SCIENCE OF THE TOTAL ENVIRONMENT, 2019, 684 (155-163) :155-163
[8]  
[Anonymous], 2002, Citizen science: A study of people, expertise and sustainable development, DOI [10.4324/9780203202395, DOI 10.4324/9780203202395]
[9]   Estimation of root zone soil moisture from ground and remotely sensed soil information with multisensor data fusion and automated machine learning [J].
Babaeian, Ebrahim ;
Paheding, Sidike ;
Siddique, Nahian ;
Devabhaktuni, Vijay K. ;
Tuller, Markus .
REMOTE SENSING OF ENVIRONMENT, 2021, 260 (260)
[10]  
Bai LL, 2019, WATER RESOUR RES, V55, P1105, DOI [10.1029/2018WR024162, 10.1029/2018wr024162]