Deep plant: A deep learning approach for plant classification / Lee Sue Han

Plant classification systems developed by computer vision researchers have helped botanists to recognize and identify unknown plant species more rapidly. Hitherto, the majority of computer vision approaches have been focused on designing sophisticated algorithms to achieve a robust feature repres...

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Auteur principal: Lee , Sue Han
Format: Thèse
Publié: 2018
Sujets:
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author Lee , Sue Han
author_facet Lee , Sue Han
author_sort Lee , Sue Han
description Plant classification systems developed by computer vision researchers have helped botanists to recognize and identify unknown plant species more rapidly. Hitherto, the majority of computer vision approaches have been focused on designing sophisticated algorithms to achieve a robust feature representation for plant data. For many morphological leaf features pre-defined by botanists, researchers use hand-engineering approaches for their characterization. They look for the procedures or algorithms that maximize the use of leaf databases for plant predictive modelling, but this results in leaf features which are liable to change with different leaf data and feature extraction techniques. As a solution, the first part of the thesis proposes a novel framework based on Deep Learning (DL) to solve the ambiguities of leaf features that are deemed important for species discrimination. The leaf features are first learned directly from the raw representations of input data using Convolutional Neural Networks (CNN), and then the chosen features are exploited based on a Deconvolutional Network (DN) approach. Besides using solely a single leaf organ to recognize plant species, numerous studies have employed DL methods to solve multi-organ plant classification problem. They focus on generic feature as such the holistic representation of a plant image, disregarding its organ features. In such case, irrelevant features might be erroneously captured especially when they appear to be discriminative for species recognition. Therefore, the second part of the thesis proposes a new hybrid generic-organ CNN architecture. Specifically, it can go beyond the regular generic description of a plant, integrating the organ-specific features together with the generic features to explicitly force the designed network to focus on the organ regions during species classification. Modelling the relationship between different plant views (or organs) is important as these images captured from a same plant share overlapping characteristics which are useful for species recognition. The existing CNN based approaches can only capture the similar region-wise patterns within an image but not the structural patterns of a plant composed of varying number of plant views images composed of one or more organs. The third part of the thesis proposes a novel framework of plant structural learning based on Recurrent Neural Networks (RNN), namely the Plant-StructNet. Specifically, it takes into consideration contextual dependencies between varying plant views capturing one or more organs of a plant and optimizes them for species classification. In summary, the collective impact of the above contributions have constituted to achieve a more practical and feasible framework towards the applications of plant identification. Empirical studies show that the proposed frameworks outperform the state-of-the-art (SOTA) methods in Flavia (S. G. Wu et al., 2007a) and PlantClef2015 plant dataset (Joly et al., 2015). These findings can serve as reference sources for the research community working on plant identification, and also help to support the future work in this area.
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spelling oai:studentsrepo.um.edu.my:87582021-02-28T19:48:06Z Deep plant: A deep learning approach for plant classification / Lee Sue Han Lee , Sue Han QA75 Electronic computers. Computer science Plant classification systems developed by computer vision researchers have helped botanists to recognize and identify unknown plant species more rapidly. Hitherto, the majority of computer vision approaches have been focused on designing sophisticated algorithms to achieve a robust feature representation for plant data. For many morphological leaf features pre-defined by botanists, researchers use hand-engineering approaches for their characterization. They look for the procedures or algorithms that maximize the use of leaf databases for plant predictive modelling, but this results in leaf features which are liable to change with different leaf data and feature extraction techniques. As a solution, the first part of the thesis proposes a novel framework based on Deep Learning (DL) to solve the ambiguities of leaf features that are deemed important for species discrimination. The leaf features are first learned directly from the raw representations of input data using Convolutional Neural Networks (CNN), and then the chosen features are exploited based on a Deconvolutional Network (DN) approach. Besides using solely a single leaf organ to recognize plant species, numerous studies have employed DL methods to solve multi-organ plant classification problem. They focus on generic feature as such the holistic representation of a plant image, disregarding its organ features. In such case, irrelevant features might be erroneously captured especially when they appear to be discriminative for species recognition. Therefore, the second part of the thesis proposes a new hybrid generic-organ CNN architecture. Specifically, it can go beyond the regular generic description of a plant, integrating the organ-specific features together with the generic features to explicitly force the designed network to focus on the organ regions during species classification. Modelling the relationship between different plant views (or organs) is important as these images captured from a same plant share overlapping characteristics which are useful for species recognition. The existing CNN based approaches can only capture the similar region-wise patterns within an image but not the structural patterns of a plant composed of varying number of plant views images composed of one or more organs. The third part of the thesis proposes a novel framework of plant structural learning based on Recurrent Neural Networks (RNN), namely the Plant-StructNet. Specifically, it takes into consideration contextual dependencies between varying plant views capturing one or more organs of a plant and optimizes them for species classification. In summary, the collective impact of the above contributions have constituted to achieve a more practical and feasible framework towards the applications of plant identification. Empirical studies show that the proposed frameworks outperform the state-of-the-art (SOTA) methods in Flavia (S. G. Wu et al., 2007a) and PlantClef2015 plant dataset (Joly et al., 2015). These findings can serve as reference sources for the research community working on plant identification, and also help to support the future work in this area. 2018-05 Thesis NonPeerReviewed application/pdf http://studentsrepo.um.edu.my/8758/1/Lee_Sue_Han.pdf application/pdf http://studentsrepo.um.edu.my/8758/6/sue_han.pdf Lee , Sue Han (2018) Deep plant: A deep learning approach for plant classification / Lee Sue Han. PhD thesis, University of Malaya. http://studentsrepo.um.edu.my/8758/
spellingShingle QA75 Electronic computers. Computer science
Lee , Sue Han
Deep plant: A deep learning approach for plant classification / Lee Sue Han
title Deep plant: A deep learning approach for plant classification / Lee Sue Han
title_full Deep plant: A deep learning approach for plant classification / Lee Sue Han
title_fullStr Deep plant: A deep learning approach for plant classification / Lee Sue Han
title_full_unstemmed Deep plant: A deep learning approach for plant classification / Lee Sue Han
title_short Deep plant: A deep learning approach for plant classification / Lee Sue Han
title_sort deep plant a deep learning approach for plant classification lee sue han
topic QA75 Electronic computers. Computer science
url-record http://studentsrepo.um.edu.my/8758/
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