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Factors limiting adoption of remote sensing methods for agriculture? 


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Factors limiting the adoption of remote sensing methods for agriculture include the high cost or lack of remote sensing observations, limited coverage due to low altitude aerial surveys, lack of accurate maps and operational monitoring points, and the difficulty in obtaining objective data for land state and situation forecasting . Additionally, there are knowledge gaps regarding the sufficiency, appropriateness, and techno-economic feasibility of remote sensing technologies in agriculture . These factors hinder the full implementation of remote sensing technologies in the agricultural sector, preventing their widespread use for decision-making and optimization of crop production . However, recent advancements in sensor technologies, data management, and data analytics have increased the availability and potential of remote sensing options for the agricultural community . Further research and development are needed to address these limitations and promote the adoption of remote sensing methods in agriculture.

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Open accessJournal ArticleDOI
E. G. Meshchaninova, Yu. A. Stepkin 
01 Jan 2020
1 Citations
The lack of accurate maps, undeveloped ground stations, and limited air support are factors limiting the adoption of remote sensing methods in agriculture.
The adoption of remote sensing methods in agriculture is limited due to knowledge gaps on their sufficiency, appropriateness, and techno-economic feasibilities.
Book ChapterDOI
01 Jan 2021
2 Citations
The factors limiting adoption of remote sensing methods for agriculture in the past were high cost and lack of remote sensing observations.
The price of radiometric cameras and low coverage due to low altitude limit the adoption of remote sensing methods for agriculture.
Open accessJournal ArticleDOI
N. Desai, Dhara O. Bhavsar, Himanshu Pandya 
14 May 2023
The paper does not provide information about the factors limiting the adoption of remote sensing methods for agriculture.

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