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  1. Home
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  4. AnoLeaf: Unsupervised Leaf Disease Segmentation via Structurally Robust Generative Inpainting
 
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AnoLeaf: Unsupervised Leaf Disease Segmentation via Structurally Robust Generative Inpainting

Date Issued
2023-01-01
Author(s)
Bhugra, Swati
Kaushik, Vinay
Gupta, Amit
Lall, Brejesh
Chaudhury, Santanu
DOI
10.1109/WACV56688.2023.00635
Abstract
Plant diseases severely limits agriculture production, necessitating the high-throughput monitoring of plant leaves. Currently, this is formulated as an automatic disease segmentation task addressed via deep learning frameworks. These deep leaning frameworks trained with leaf image data in a supervised paradigm have few limitations, mainly: (1) training datasets are heavily imbalanced towards healthy leaf images, (2) disease region annotation is labour-intensive and (3) due to the heterogeneity of disease symptoms, these frameworks lacks generalisability. In this paper, we reformulate disease segmentation as an anomaly localisation task. Specifically, we introduce a novel unsupervised framework (AnoLeaf) based on an edge-guided in-painting that optimises the learning of contextual attention on only healthy leaf images. The network utilisation on diseased leaf images results in reconstruction of its healthy counterparts, generating an inpainting error. The contextual attention maps reinforce the inpainting error to effectively localise the disease. Thus, AnoLeaf alleviates the acquisition and annotation of rare disease images. Additional experiments on MVTec anomaly detection dataset further demonstrate its generalisability.
Subjects
  • Applications: Agricul...

  • Biomedical/healthcare...

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