4.7 Article

Leaf vein segmentation with self-supervision

Journal

COMPUTERS AND ELECTRONICS IN AGRICULTURE
Volume 203, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.compag.2022.107352

Keywords

Leaf vein segmentation; Computer vision; Self-supervision; Encoder-Decoder

Funding

  1. Natural Science Foundation of China (NSFC) [62061136001, 62176132]
  2. German Research Foundation (DFG) in Project Crossmodal Learning [DFG TRR-169]

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Leaf vein segmentation is an important task that aims to extract vein features and structures. In this study, a novel network model (CoRE-Net) is proposed to enhance segmentation prediction by utilizing the characteristics of leaf veins. Additionally, the first leaf vein dataset is collected and released.
The leaf vein, often viewed as the fingerprint of the leaf, is an important characteristic used to identify plant species. Leaf vein segmentation aims to extract the vein features and obtain the vein architectures from leaf images. Unlike the general semantic or instance segmentation focusing on the block and object level, the leaf vein segmentation is fine and it focuses on the internal details inside the mesophyll, whose color is indistinguishable, making this task difficult. To tackle this problem, we utilize the particularities of leaf veins, namely continuity and branching, and propose a Confidence Refining Vein Network (CoRE-Net) to segment leaf veins by handling the intersections, breakpoints, and blurred boundaries of veins to enhance segment prediction. Moreover, the proposed network only needs a few labeled samples to warm start, and then the whole network can converge without any annotated labels. Meanwhile, we collect and release the first leaf vein dataset, Leaf Vein Dataset 2021 (LVD2021). The proposed framework achieves mean Intersection over Union at 71.02% and mean Dice at 79.76% on LVD2021, which outperforms its counterparts in different settings, demonstrating the effectiveness of our framework.

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