Crop Journal (Feb 2021)

An integrated rice panicle phenotyping method based on X-ray and RGB scanning and deep learning

  • Lejun Yu,
  • Jiawei Shi,
  • Chenglong Huang,
  • Lingfeng Duan,
  • Di Wu,
  • Debao Fu,
  • Changyin Wu,
  • Lizhong Xiong,
  • Wanneng Yang,
  • Qian Liu

Journal volume & issue
Vol. 9, no. 1
pp. 42 – 56

Abstract

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Rice panicle phenotyping is required in rice breeding for high yield and grain quality. To fully evaluate spikelet and kernel traits without threshing and hulling, using X-ray and RGB scanning, we developed an integrated rice panicle phenotyping system and a corresponding image analysis pipeline. We compared five methods of counting spikelets and found that Faster R-CNN achieved high accuracy (R2 of 0.99) and speed. Faster R-CNN was also applied to indica and japonica classification and achieved 91% accuracy. The proposed integrated panicle phenotyping method offers benefit for rice functional genetics and breeding.

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