Journal of Food Quality (Jan 2022)

Multisensor Data and Cross-Validation Technique for Merging Temporal Images for the Agricultural Performance Monitoring System

  • Venkata Kanaka Srivani Maddala,
  • K. Jayarajan,
  • M. Braveen,
  • Ranjan Walia,
  • Patteti Krishna,
  • Sivakumar Ponnusamy,
  • Karthikeyan Kaliyaperumal

DOI
https://doi.org/10.1155/2022/9575423
Journal volume & issue
Vol. 2022

Abstract

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Many approaches for crop yield prediction were analyzed by countries using remote sensing data, but the information obtained was less successful due to insufficient data gathered due to climatic variables and poor image resolution. As a result, current crop yield estimation methods are obsolete and no longer useful. Several attempts have been made to overcome these difficulties by combining high precision remote sensing images. Furthermore, such remote sensing-based working models are better suited to extraterrestrial farmers and homogeneous agricultural areas. The development of this innovative framework was prompted by a scarcity of high-quality satellite imagery. This intelligent strategy is based on a new theoretical framework that employs the energy equation to improve crop yield predictions. This method was used to collect input from multiple farmers in order to validate the observation. The proposed technique’s excellent reliability on crop yield prediction is compared and contrasted between crop yield prediction and actual production in different areas, and meaningful observations are provided.