Deep Metric Learning-Based Strawberry Disease Detection With Unknowns

There has been substantial research that has achieved significant advancements in plant disease detection based on deep object detection models. However, with unknown diseases, it is difficult to find a practical solution for plant disease detection. This study proposes a simple but effective strawb...

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Published in:Frontiers in Plant Science
Main Authors: You, Jie, Jiang, Kan, Lee, Joonwhoan
Format: Article in Journal/Newspaper
Language:unknown
Published: Frontiers Media SA 2022
Subjects:
DML
Online Access:http://dx.doi.org/10.3389/fpls.2022.891785
https://www.frontiersin.org/articles/10.3389/fpls.2022.891785/full
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spelling crfrontiers:10.3389/fpls.2022.891785 2024-10-13T14:06:51+00:00 Deep Metric Learning-Based Strawberry Disease Detection With Unknowns You, Jie Jiang, Kan Lee, Joonwhoan 2022 http://dx.doi.org/10.3389/fpls.2022.891785 https://www.frontiersin.org/articles/10.3389/fpls.2022.891785/full unknown Frontiers Media SA https://creativecommons.org/licenses/by/4.0/ Frontiers in Plant Science volume 13 ISSN 1664-462X journal-article 2022 crfrontiers https://doi.org/10.3389/fpls.2022.891785 2024-09-17T04:12:12Z There has been substantial research that has achieved significant advancements in plant disease detection based on deep object detection models. However, with unknown diseases, it is difficult to find a practical solution for plant disease detection. This study proposes a simple but effective strawberry disease detection scheme with unknown diseases that can provide applicable performance in the real field. In the proposed scheme, the known strawberry diseases are detected with deep metric learning (DML)-based classifiers along with the unknown diseases that have certain symptoms. The pipeline of our proposed scheme consists of two stages: the first is object detection with known disease classes, while the second is a DML-based post-filtering stage. The second stage has two different types of classifiers: one is softmax classifiers that are only for known diseases and the K -nearest neighbor ( K -NN) classifier for both known and unknown diseases. In the training of the first stage and the DML-based softmax classifier, we only use the known samples of the strawberry disease. Then, we include the known ( a priori ) and the known unknown training samples to construct the K -NN classifier. The final decisions regarding known diseases are made from the combined results of the two classifiers, while unknowns are detected from the K -NN classifier. The experimental results show that the DML-based post-filter is effective at improving the performance of known disease detection in terms of mAP. Furthermore, the separate DML-based K -NN classifier provides high recall and precision for known and unknown diseases and achieve 97.8% accuracy, meaning it could be exploited as a Region of Interest (ROI) classifier. For the real field data, the proposed scheme achieves a high mAP of 93.7% to detect known classes of strawberry disease, and it also achieves reasonable results for unknowns. This implies that the proposed scheme can be applied to identify disease-like symptoms caused by real known and unknown diseases or disorders ... Article in Journal/Newspaper DML Frontiers (Publisher) Frontiers in Plant Science 13
institution Open Polar
collection Frontiers (Publisher)
op_collection_id crfrontiers
language unknown
description There has been substantial research that has achieved significant advancements in plant disease detection based on deep object detection models. However, with unknown diseases, it is difficult to find a practical solution for plant disease detection. This study proposes a simple but effective strawberry disease detection scheme with unknown diseases that can provide applicable performance in the real field. In the proposed scheme, the known strawberry diseases are detected with deep metric learning (DML)-based classifiers along with the unknown diseases that have certain symptoms. The pipeline of our proposed scheme consists of two stages: the first is object detection with known disease classes, while the second is a DML-based post-filtering stage. The second stage has two different types of classifiers: one is softmax classifiers that are only for known diseases and the K -nearest neighbor ( K -NN) classifier for both known and unknown diseases. In the training of the first stage and the DML-based softmax classifier, we only use the known samples of the strawberry disease. Then, we include the known ( a priori ) and the known unknown training samples to construct the K -NN classifier. The final decisions regarding known diseases are made from the combined results of the two classifiers, while unknowns are detected from the K -NN classifier. The experimental results show that the DML-based post-filter is effective at improving the performance of known disease detection in terms of mAP. Furthermore, the separate DML-based K -NN classifier provides high recall and precision for known and unknown diseases and achieve 97.8% accuracy, meaning it could be exploited as a Region of Interest (ROI) classifier. For the real field data, the proposed scheme achieves a high mAP of 93.7% to detect known classes of strawberry disease, and it also achieves reasonable results for unknowns. This implies that the proposed scheme can be applied to identify disease-like symptoms caused by real known and unknown diseases or disorders ...
format Article in Journal/Newspaper
author You, Jie
Jiang, Kan
Lee, Joonwhoan
spellingShingle You, Jie
Jiang, Kan
Lee, Joonwhoan
Deep Metric Learning-Based Strawberry Disease Detection With Unknowns
author_facet You, Jie
Jiang, Kan
Lee, Joonwhoan
author_sort You, Jie
title Deep Metric Learning-Based Strawberry Disease Detection With Unknowns
title_short Deep Metric Learning-Based Strawberry Disease Detection With Unknowns
title_full Deep Metric Learning-Based Strawberry Disease Detection With Unknowns
title_fullStr Deep Metric Learning-Based Strawberry Disease Detection With Unknowns
title_full_unstemmed Deep Metric Learning-Based Strawberry Disease Detection With Unknowns
title_sort deep metric learning-based strawberry disease detection with unknowns
publisher Frontiers Media SA
publishDate 2022
url http://dx.doi.org/10.3389/fpls.2022.891785
https://www.frontiersin.org/articles/10.3389/fpls.2022.891785/full
genre DML
genre_facet DML
op_source Frontiers in Plant Science
volume 13
ISSN 1664-462X
op_rights https://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.3389/fpls.2022.891785
container_title Frontiers in Plant Science
container_volume 13
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