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Date fruit dataset for automated harvesting and visual yield estimation

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The date fruit dataset was created to address the requirements of many applications in the pre-harvesting and harvesting stages. The two most important applications are automatic harvesting and visual yield estimation. The dataset is divided into two

Maize response to free air CO2 enrichment under ample and restricted water supply: field experimental data and output of a process-based hydrological plant growth model

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This paper contains data from a two year FACE experiment with maize (Zea mays L., cv. ‘Romario’) investigating the interaction of two CO2 concentrations (378, 550 ppm) and two levels of water supply (sufficient: wet, limited: dry) on c

Experimental field data for modeling the growth response of tef to nitrogen fertilizer and water stressi

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Field data from six experiments covering a wide range of growing conditions were organized for tef growth and cropping systems modeling. The data included (i) an irrigation experiment in the Tigray region of Ethiopia, (ii) a cultivar trial at Fallon,

Landscape diagnostic survey data of wheat production practices and yield in eastern India

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Approximately 7,600 wheat plots were surveyed and geo-tagged in the 2017-18 winter or rabi season in Bihar and eastern Uttar Pradesh (UP) in India to capture farmers’ wheat production practices at the landscape level. A two-stage cluster sam

Data from the Arizona FACE (Free-Air CO2 Enrichment) Experiments on Sorghum at Ample and Limiting Levels of Water Supply

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Two free-air CO2 enrichment (FACE) experiments were conducted on sorghum (Sorghum bicolor (L.), a C4 grain crop) at Maricopa, Arizona, U.S.A. during the 1998 and 1999 summer growing seasons. They were conducted at ample and limited (50% of ample) sup

Crop Yield Prediction

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Crop Yield Prediction with Deep Learning