AgriEngineering (Jul 2024)

Growth Monitoring of Greenhouse Tomatoes Based on Context Recognition

  • Fisilmi Azizah Rahman,
  • Miho Takanayagi,
  • Taiga Eguchi,
  • Wen Liang Yeoh,
  • Nobuhiko Yamaguchi,
  • Hiroshi Okumura,
  • Munehiro Tanaka,
  • Shigeki Inaba,
  • Osamu Fukuda

DOI
https://doi.org/10.3390/agriengineering6030119
Journal volume & issue
Vol. 6, no. 3
pp. 2043 – 2056

Abstract

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To alleviate social problems in agriculture such as aging and labor force shortages, automatic growth monitoring based on image measurement has been introduced to tomato cultivation in greenhouses. The overlap of leaves and fruits makes precise observations challenging. In this study, we applied context recognition to tomato growth monitoring by using a Bayesian network. The proposed method combines image recognition using convolutional networks and context recognition using Bayesian networks. It enables not only the recognition of individual tomatoes but also the evaluation of tomato plants. An accurate number of tomatoes and the condition of the stocks can be estimated based on the number of ripe and unripened tomatoes in addition to their density information. The verification experiments clarified that a more accurate number of tomatoes could be estimated than with simple tomato detection, and the stock states could also be evaluated correctly. Compared to conventional methods, the method used in this study has improved tomato decision accuracy by 23%.

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