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Leaf Recognition Based on Joint Learning Multiloss of Multimodel Convolutional Neural Networks: A Testing for Vietnamese Herb

A new modification of multi-CNN ensemble training is investigated by combining multiloss functions from state-of-the-art deep CNN architectures for leaf image recognition. We first apply the U-Net model to segment leaf images from the background to improve the performance of the recognition system....

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Autores principales: Dat, Trinh Tan, Le Thien Vu, Pham Cung, Truong, Nguyen Nhat, Anh Dang, Le Tran, Thanh Sang, Vu Ngoc, Bao, Pham The
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8486519/
https://www.ncbi.nlm.nih.gov/pubmed/34603432
http://dx.doi.org/10.1155/2021/5032359
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author Dat, Trinh Tan
Le Thien Vu, Pham Cung
Truong, Nguyen Nhat
Anh Dang, Le Tran
Thanh Sang, Vu Ngoc
Bao, Pham The
author_facet Dat, Trinh Tan
Le Thien Vu, Pham Cung
Truong, Nguyen Nhat
Anh Dang, Le Tran
Thanh Sang, Vu Ngoc
Bao, Pham The
author_sort Dat, Trinh Tan
collection PubMed
description A new modification of multi-CNN ensemble training is investigated by combining multiloss functions from state-of-the-art deep CNN architectures for leaf image recognition. We first apply the U-Net model to segment leaf images from the background to improve the performance of the recognition system. Then, we introduce a multimodel approach based on a combination of loss functions from the EfficientNet and MobileNet (called as multimodel CNN (MMCNN)) to generalize a multiloss function. The joint learning multiloss model designed for leaf recognition allows each network to perform its task and cooperate with the others simultaneously, where knowledge from various trained deep networks is shared. This cooperation-proposed multimodel is forced to deal with more complicated problems rather than a simple classification. Therefore, the network can learn much rich information and improve its generalization capability. Furthermore, a multiloss trade-off strategy between two deep learning models can reduce the effect of redundancy problems in ensemble classifiers. The performance of our approach is evaluated by our custom Vietnamese herbal leaf species dataset, and public datasets such as Flavia, Leafsnap, and Folio are used to build test cases. The results confirm that our approach enhances the leaf recognition performance and outperforms the current standard single networks while having less low computation cost.
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spelling pubmed-84865192021-10-02 Leaf Recognition Based on Joint Learning Multiloss of Multimodel Convolutional Neural Networks: A Testing for Vietnamese Herb Dat, Trinh Tan Le Thien Vu, Pham Cung Truong, Nguyen Nhat Anh Dang, Le Tran Thanh Sang, Vu Ngoc Bao, Pham The Comput Intell Neurosci Research Article A new modification of multi-CNN ensemble training is investigated by combining multiloss functions from state-of-the-art deep CNN architectures for leaf image recognition. We first apply the U-Net model to segment leaf images from the background to improve the performance of the recognition system. Then, we introduce a multimodel approach based on a combination of loss functions from the EfficientNet and MobileNet (called as multimodel CNN (MMCNN)) to generalize a multiloss function. The joint learning multiloss model designed for leaf recognition allows each network to perform its task and cooperate with the others simultaneously, where knowledge from various trained deep networks is shared. This cooperation-proposed multimodel is forced to deal with more complicated problems rather than a simple classification. Therefore, the network can learn much rich information and improve its generalization capability. Furthermore, a multiloss trade-off strategy between two deep learning models can reduce the effect of redundancy problems in ensemble classifiers. The performance of our approach is evaluated by our custom Vietnamese herbal leaf species dataset, and public datasets such as Flavia, Leafsnap, and Folio are used to build test cases. The results confirm that our approach enhances the leaf recognition performance and outperforms the current standard single networks while having less low computation cost. Hindawi 2021-09-23 /pmc/articles/PMC8486519/ /pubmed/34603432 http://dx.doi.org/10.1155/2021/5032359 Text en Copyright © 2021 Trinh Tan Dat et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Dat, Trinh Tan
Le Thien Vu, Pham Cung
Truong, Nguyen Nhat
Anh Dang, Le Tran
Thanh Sang, Vu Ngoc
Bao, Pham The
Leaf Recognition Based on Joint Learning Multiloss of Multimodel Convolutional Neural Networks: A Testing for Vietnamese Herb
title Leaf Recognition Based on Joint Learning Multiloss of Multimodel Convolutional Neural Networks: A Testing for Vietnamese Herb
title_full Leaf Recognition Based on Joint Learning Multiloss of Multimodel Convolutional Neural Networks: A Testing for Vietnamese Herb
title_fullStr Leaf Recognition Based on Joint Learning Multiloss of Multimodel Convolutional Neural Networks: A Testing for Vietnamese Herb
title_full_unstemmed Leaf Recognition Based on Joint Learning Multiloss of Multimodel Convolutional Neural Networks: A Testing for Vietnamese Herb
title_short Leaf Recognition Based on Joint Learning Multiloss of Multimodel Convolutional Neural Networks: A Testing for Vietnamese Herb
title_sort leaf recognition based on joint learning multiloss of multimodel convolutional neural networks: a testing for vietnamese herb
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8486519/
https://www.ncbi.nlm.nih.gov/pubmed/34603432
http://dx.doi.org/10.1155/2021/5032359
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