Frontiers in Plant Science (Aug 2023)

Local refinement mechanism for improved plant leaf segmentation in cluttered backgrounds

  • Ruihan Ma,
  • Ruihan Ma,
  • Alvaro Fuentes,
  • Alvaro Fuentes,
  • Sook Yoon,
  • Woon Yong Lee,
  • Sang Cheol Kim,
  • Hyongsuk Kim,
  • Hyongsuk Kim,
  • Dong Sun Park,
  • Dong Sun Park

DOI
https://doi.org/10.3389/fpls.2023.1211075
Journal volume & issue
Vol. 14

Abstract

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Plant phenotyping is a critical field in agriculture, aiming to understand crop growth under specific conditions. Recent research uses images to describe plant characteristics by detecting visual information within organs such as leaves, flowers, stems, and fruits. However, processing data in real field conditions, with challenges such as image blurring and occlusion, requires improvement. This paper proposes a deep learning-based approach for leaf instance segmentation with a local refinement mechanism to enhance performance in cluttered backgrounds. The refinement mechanism employs Gaussian low-pass and High-boost filters to enhance target instances and can be applied to the training or testing dataset. An instance segmentation architecture generates segmented masks and detected areas, facilitating the derivation of phenotypic information, such as leaf count and size. Experimental results on a tomato leaf dataset demonstrate the system’s accuracy in segmenting target leaves despite complex backgrounds. The investigation of the refinement mechanism with different kernel sizes reveals that larger kernel sizes benefit the system’s ability to generate more leaf instances when using a High-boost filter, while prediction performance decays with larger Gaussian low-pass filter kernel sizes. This research addresses challenges in real greenhouse scenarios and enables automatic recognition of phenotypic data for smart agriculture. The proposed approach has the potential to enhance agricultural practices, ultimately leading to improved crop yields and productivity.

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