Analysis of automatic image classification methods for Urticaceae pollen classification

Pollen classification is considered an important task in palynology. In the Netherlands, two genera of the Urticaceae family, named Parietaria and Urtica, have high morphological similarities but induce allergy at a very different level. Therefore, distinction between these two genera is very important. Within this group, the pollen of Urtica membranacea is the only species that can be recognized easily under the microscope. For the research presented in this study, we built a dataset from 6472 pollen images and our aim was to find the best possible classifier on this dataset by analysing different classification methods, both machine learning and deep learning-based methods. For machine learning-based methods, we measured both texture and moment features based on images from the pollen grains. Varied feature selection techniques, classifiers as well as a hierarchical strategy were implemented for pollen classification. For deep learning-based methods, we compared the performance of six popular Convolutional Neural Networks: AlexNet, VGG16, VGG19, MobileNet V1, MobileNet V2 and ResNet50. Results show that compared with flat classification models, a hierarchical strategy yielded the highest accuracy with 94.5% among machine learning-based methods. Among deep learning-based methods, ResNet50 achieved an accuracy of 99.4%, slightly outperforming the other neural networks investigated. In addition, we investigated the influence on performance by changing the size of image datasets to 1000 and 500 images, respectively. Results demonstrated that on smaller datasets, ResNet50 still achieved the best classification performance. An ablation study was implemented to help understanding why the deep learning-based methods outperformed the other models investigated. Using Urticaceae pollen as an example, our research provides a strategy of selecting a classification model for pollen datasets with highly similar pollen grains to support palynologists and could potentially be applied to other image classification tasks.

Saved in:
Bibliographic Details
Main Authors: Li, Chen, Polling, Marcel, Cao, Lu, Gravendeel, Barbara, Verbeek, Fons J.
Format: Article/Letter to editor biblioteca
Language:English
Subjects:Deep learning, Hierarchical strategy, Image classification, Machine learning, Pollen grains,
Online Access:https://research.wur.nl/en/publications/analysis-of-automatic-image-classification-methods-for-urticaceae
Tags: Add Tag
No Tags, Be the first to tag this record!
id dig-wur-nl-wurpubs-607248
record_format koha
spelling dig-wur-nl-wurpubs-6072482025-01-14 Li, Chen Polling, Marcel Cao, Lu Gravendeel, Barbara Verbeek, Fons J. Article/Letter to editor Neurocomputing 522 (2023) ISSN: 0925-2312 Analysis of automatic image classification methods for Urticaceae pollen classification 2023 Pollen classification is considered an important task in palynology. In the Netherlands, two genera of the Urticaceae family, named Parietaria and Urtica, have high morphological similarities but induce allergy at a very different level. Therefore, distinction between these two genera is very important. Within this group, the pollen of Urtica membranacea is the only species that can be recognized easily under the microscope. For the research presented in this study, we built a dataset from 6472 pollen images and our aim was to find the best possible classifier on this dataset by analysing different classification methods, both machine learning and deep learning-based methods. For machine learning-based methods, we measured both texture and moment features based on images from the pollen grains. Varied feature selection techniques, classifiers as well as a hierarchical strategy were implemented for pollen classification. For deep learning-based methods, we compared the performance of six popular Convolutional Neural Networks: AlexNet, VGG16, VGG19, MobileNet V1, MobileNet V2 and ResNet50. Results show that compared with flat classification models, a hierarchical strategy yielded the highest accuracy with 94.5% among machine learning-based methods. Among deep learning-based methods, ResNet50 achieved an accuracy of 99.4%, slightly outperforming the other neural networks investigated. In addition, we investigated the influence on performance by changing the size of image datasets to 1000 and 500 images, respectively. Results demonstrated that on smaller datasets, ResNet50 still achieved the best classification performance. An ablation study was implemented to help understanding why the deep learning-based methods outperformed the other models investigated. Using Urticaceae pollen as an example, our research provides a strategy of selecting a classification model for pollen datasets with highly similar pollen grains to support palynologists and could potentially be applied to other image classification tasks. en application/pdf https://research.wur.nl/en/publications/analysis-of-automatic-image-classification-methods-for-urticaceae 10.1016/j.neucom.2022.11.042 https://edepot.wur.nl/584158 Deep learning Hierarchical strategy Image classification Machine learning Pollen grains https://creativecommons.org/licenses/by/4.0/ https://creativecommons.org/licenses/by/4.0/ Wageningen University & Research
institution WUR NL
collection DSpace
country Países bajos
countrycode NL
component Bibliográfico
access En linea
databasecode dig-wur-nl
tag biblioteca
region Europa del Oeste
libraryname WUR Library Netherlands
language English
topic Deep learning
Hierarchical strategy
Image classification
Machine learning
Pollen grains
Deep learning
Hierarchical strategy
Image classification
Machine learning
Pollen grains
spellingShingle Deep learning
Hierarchical strategy
Image classification
Machine learning
Pollen grains
Deep learning
Hierarchical strategy
Image classification
Machine learning
Pollen grains
Li, Chen
Polling, Marcel
Cao, Lu
Gravendeel, Barbara
Verbeek, Fons J.
Analysis of automatic image classification methods for Urticaceae pollen classification
description Pollen classification is considered an important task in palynology. In the Netherlands, two genera of the Urticaceae family, named Parietaria and Urtica, have high morphological similarities but induce allergy at a very different level. Therefore, distinction between these two genera is very important. Within this group, the pollen of Urtica membranacea is the only species that can be recognized easily under the microscope. For the research presented in this study, we built a dataset from 6472 pollen images and our aim was to find the best possible classifier on this dataset by analysing different classification methods, both machine learning and deep learning-based methods. For machine learning-based methods, we measured both texture and moment features based on images from the pollen grains. Varied feature selection techniques, classifiers as well as a hierarchical strategy were implemented for pollen classification. For deep learning-based methods, we compared the performance of six popular Convolutional Neural Networks: AlexNet, VGG16, VGG19, MobileNet V1, MobileNet V2 and ResNet50. Results show that compared with flat classification models, a hierarchical strategy yielded the highest accuracy with 94.5% among machine learning-based methods. Among deep learning-based methods, ResNet50 achieved an accuracy of 99.4%, slightly outperforming the other neural networks investigated. In addition, we investigated the influence on performance by changing the size of image datasets to 1000 and 500 images, respectively. Results demonstrated that on smaller datasets, ResNet50 still achieved the best classification performance. An ablation study was implemented to help understanding why the deep learning-based methods outperformed the other models investigated. Using Urticaceae pollen as an example, our research provides a strategy of selecting a classification model for pollen datasets with highly similar pollen grains to support palynologists and could potentially be applied to other image classification tasks.
format Article/Letter to editor
topic_facet Deep learning
Hierarchical strategy
Image classification
Machine learning
Pollen grains
author Li, Chen
Polling, Marcel
Cao, Lu
Gravendeel, Barbara
Verbeek, Fons J.
author_facet Li, Chen
Polling, Marcel
Cao, Lu
Gravendeel, Barbara
Verbeek, Fons J.
author_sort Li, Chen
title Analysis of automatic image classification methods for Urticaceae pollen classification
title_short Analysis of automatic image classification methods for Urticaceae pollen classification
title_full Analysis of automatic image classification methods for Urticaceae pollen classification
title_fullStr Analysis of automatic image classification methods for Urticaceae pollen classification
title_full_unstemmed Analysis of automatic image classification methods for Urticaceae pollen classification
title_sort analysis of automatic image classification methods for urticaceae pollen classification
url https://research.wur.nl/en/publications/analysis-of-automatic-image-classification-methods-for-urticaceae
work_keys_str_mv AT lichen analysisofautomaticimageclassificationmethodsforurticaceaepollenclassification
AT pollingmarcel analysisofautomaticimageclassificationmethodsforurticaceaepollenclassification
AT caolu analysisofautomaticimageclassificationmethodsforurticaceaepollenclassification
AT gravendeelbarbara analysisofautomaticimageclassificationmethodsforurticaceaepollenclassification
AT verbeekfonsj analysisofautomaticimageclassificationmethodsforurticaceaepollenclassification
_version_ 1822264619986583552