Frontiers in Sustainable Food Systems (Feb 2025)

Trend analysis of the application of multispectral technology in plant yield prediction: a bibliometric visualization analysis (2003–2024)

  • Jiahui Xu,
  • Jiahui Xu,
  • Jiahui Xu,
  • Yalong Song,
  • Yalong Song,
  • Yalong Song,
  • ZhaoYu Rui,
  • ZhaoYu Rui,
  • Zhao Zhang,
  • Zhao Zhang,
  • Can Hu,
  • Can Hu,
  • Can Hu,
  • Long Wang,
  • Long Wang,
  • Long Wang,
  • Wentao Li,
  • Wentao Li,
  • Wentao Li,
  • Jianfei Xing,
  • Jianfei Xing,
  • Jianfei Xing,
  • Xufeng Wang,
  • Xufeng Wang,
  • Xufeng Wang

DOI
https://doi.org/10.3389/fsufs.2025.1513690
Journal volume & issue
Vol. 9

Abstract

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Multispectral imaging technology uses sensors capable of detecting spectral information across various wavelength ranges to acquire multi-channel target data. This enables researchers to collect comprehensive biological information about the observed objects or areas, including their physical and chemical characteristics. Spectral technology is widely applied in agriculture for collecting crop information and predicting yield. Over the past decade, multispectral image acquisition and information extraction from plants have provided rich data resources for scientific research, facilitating a deeper understanding of plant growth mechanisms and ecosystem function. This article presents a bibliometric analysis of the relationship between multispectral imaging and crop yield prediction, reviewing past studies and forecasting future research trends. Through comprehensive analysis, we identified that research using multispectral technology for crop yield prediction primarily focuses on key areas, such as chlorophyll content, remote sensing, convolutional neural networks (CNNs), and machine learning. Cluster and co-citation analyses revealed the developmental trajectory of multispectral yield estimation. Our bibliometric approach offers a novel perspective to understand the current status of multispectral technology in agricultural applications. This methodology helps new researchers quickly familiarize themselves with the field’s knowledge and gain a more precise understanding of development trends and research hotspots in the domain of multispectral technology for agricultural yield estimation.

Keywords