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Semi-Self-Supervised Learning for Semantic Segmentation in Images with Dense Patterns

Deep learning has shown potential in domains with large-scale annotated datasets. However, manual annotation is expensive, time-consuming, and tedious. Pixel-level annotations are particularly costly for semantic segmentation in images with dense irregular patterns of object instances, such as in pl...

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Autores principales: Najafian, Keyhan, Ghanbari, Alireza, Sabet Kish, Mahdi, Eramian, Mark, Shirdel, Gholam Hassan, Stavness, Ian, Jin, Lingling, Maleki, Farhad
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AAAS 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10013790/
https://www.ncbi.nlm.nih.gov/pubmed/36930764
http://dx.doi.org/10.34133/plantphenomics.0025
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author Najafian, Keyhan
Ghanbari, Alireza
Sabet Kish, Mahdi
Eramian, Mark
Shirdel, Gholam Hassan
Stavness, Ian
Jin, Lingling
Maleki, Farhad
author_facet Najafian, Keyhan
Ghanbari, Alireza
Sabet Kish, Mahdi
Eramian, Mark
Shirdel, Gholam Hassan
Stavness, Ian
Jin, Lingling
Maleki, Farhad
author_sort Najafian, Keyhan
collection PubMed
description Deep learning has shown potential in domains with large-scale annotated datasets. However, manual annotation is expensive, time-consuming, and tedious. Pixel-level annotations are particularly costly for semantic segmentation in images with dense irregular patterns of object instances, such as in plant images. In this work, we propose a method for developing high-performing deep learning models for semantic segmentation of such images utilizing little manual annotation. As a use case, we focus on wheat head segmentation. We synthesize a computationally annotated dataset—using a few annotated images, a short unannotated video clip of a wheat field, and several video clips with no wheat—to train a customized U-Net model. Considering the distribution shift between the synthesized and real images, we apply three domain adaptation steps to gradually bridge the domain gap. Only using two annotated images, we achieved a Dice score of 0.89 on the internal test set. When further evaluated on a diverse external dataset collected from 18 different domains across five countries, this model achieved a Dice score of 0.73. To expose the model to images from different growth stages and environmental conditions, we incorporated two annotated images from each of the 18 domains to further fine-tune the model. This increased the Dice score to 0.91. The result highlights the utility of the proposed approach in the absence of large-annotated datasets. Although our use case is wheat head segmentation, the proposed approach can be extended to other segmentation tasks with similar characteristics of irregularly repeating patterns of object instances.
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spelling pubmed-100137902023-03-15 Semi-Self-Supervised Learning for Semantic Segmentation in Images with Dense Patterns Najafian, Keyhan Ghanbari, Alireza Sabet Kish, Mahdi Eramian, Mark Shirdel, Gholam Hassan Stavness, Ian Jin, Lingling Maleki, Farhad Plant Phenomics Research Article Deep learning has shown potential in domains with large-scale annotated datasets. However, manual annotation is expensive, time-consuming, and tedious. Pixel-level annotations are particularly costly for semantic segmentation in images with dense irregular patterns of object instances, such as in plant images. In this work, we propose a method for developing high-performing deep learning models for semantic segmentation of such images utilizing little manual annotation. As a use case, we focus on wheat head segmentation. We synthesize a computationally annotated dataset—using a few annotated images, a short unannotated video clip of a wheat field, and several video clips with no wheat—to train a customized U-Net model. Considering the distribution shift between the synthesized and real images, we apply three domain adaptation steps to gradually bridge the domain gap. Only using two annotated images, we achieved a Dice score of 0.89 on the internal test set. When further evaluated on a diverse external dataset collected from 18 different domains across five countries, this model achieved a Dice score of 0.73. To expose the model to images from different growth stages and environmental conditions, we incorporated two annotated images from each of the 18 domains to further fine-tune the model. This increased the Dice score to 0.91. The result highlights the utility of the proposed approach in the absence of large-annotated datasets. Although our use case is wheat head segmentation, the proposed approach can be extended to other segmentation tasks with similar characteristics of irregularly repeating patterns of object instances. AAAS 2023-02-24 2023 /pmc/articles/PMC10013790/ /pubmed/36930764 http://dx.doi.org/10.34133/plantphenomics.0025 Text en Copyright © 2023 Keyhan Najafian et al. https://creativecommons.org/licenses/by/4.0/Exclusive licensee Nanjing Agricultural University. No claim to original U.S. Government Works. Distributed under a Creative Commons Attribution License 4.0 (CC BY 4.0) (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Najafian, Keyhan
Ghanbari, Alireza
Sabet Kish, Mahdi
Eramian, Mark
Shirdel, Gholam Hassan
Stavness, Ian
Jin, Lingling
Maleki, Farhad
Semi-Self-Supervised Learning for Semantic Segmentation in Images with Dense Patterns
title Semi-Self-Supervised Learning for Semantic Segmentation in Images with Dense Patterns
title_full Semi-Self-Supervised Learning for Semantic Segmentation in Images with Dense Patterns
title_fullStr Semi-Self-Supervised Learning for Semantic Segmentation in Images with Dense Patterns
title_full_unstemmed Semi-Self-Supervised Learning for Semantic Segmentation in Images with Dense Patterns
title_short Semi-Self-Supervised Learning for Semantic Segmentation in Images with Dense Patterns
title_sort semi-self-supervised learning for semantic segmentation in images with dense patterns
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10013790/
https://www.ncbi.nlm.nih.gov/pubmed/36930764
http://dx.doi.org/10.34133/plantphenomics.0025
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