Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation

In recent years, there has been a surge of interest in palm tree detection using unmanned aerial vehicle (UAV) images, with implications for sustainability, productivity, and profitability. Similar to other object detection problems in the field of computer vision, palm tree detection typically invo...

Full description

Bibliographic Details
Main Author: Chen, Zi Yan
Format: Thesis (University of Nottingham only)
Language:English
Published: 2022
Subjects:
Online Access:https://eprints.nottingham.ac.uk/67174/
_version_ 1848800394437722112
author Chen, Zi Yan
author_facet Chen, Zi Yan
author_sort Chen, Zi Yan
building Nottingham Research Data Repository
collection Online Access
description In recent years, there has been a surge of interest in palm tree detection using unmanned aerial vehicle (UAV) images, with implications for sustainability, productivity, and profitability. Similar to other object detection problems in the field of computer vision, palm tree detection typically involves classifying palm trees from non-palm tree objects or background and localising every palm tree instance in an image. Palm tree detection in large-scale high-resolution UAV images is challenging due to the large number of pixels that need to be visited by the object detector, which is computationally costly. In this thesis, we design a novel hybrid approach based on multimodal particle swarm optimisation (MPSO) algorithm that can speed up the localisation process whilst maintaining optimal accuracy for palm tree detection in UAV images. The proposed method uses a feature-extraction-based classifier as the MPSO's objective function to seek multiple positions and scales in an image that maximise the detection score. The feature-extraction-based classifier was carefully selected through empirical study and was proven seven times faster than the state-of-the-art convolutional neural network (CNN) with comparable accuracy. The research goes on with the development of a new k-d tree-structured MPSO algorithm, which is called KDT-SPSO that significantly speeds up MPSO's nearest neighbour search by only exploring the subspaces that most likely contain the query point's neighbours. KDT-SPSO was demonstrated effective in solving multimodal benchmark functions and outperformed other competitors when applied on UAV images. Finally, we devise a new approach that utilises a 3D digital surface model (DSM) to generate high confidence proposals for KDT-SPSO and existing region-based CNN (R-CNN) for palm tree detection. The use of DSM as prior information about the number and location of palm trees reduces the search space within images and decreases overall computation time. Our hybrid approach can be executed in non-specialised hardware without long training hours, achieving similar accuracy as the state-of-the-art R-CNN.
first_indexed 2025-11-14T20:50:52Z
format Thesis (University of Nottingham only)
id nottingham-67174
institution University of Nottingham Malaysia Campus
institution_category Local University
language English
last_indexed 2025-11-14T20:50:52Z
publishDate 2022
recordtype eprints
repository_type Digital Repository
spelling nottingham-671742022-02-27T04:40:12Z https://eprints.nottingham.ac.uk/67174/ Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation Chen, Zi Yan In recent years, there has been a surge of interest in palm tree detection using unmanned aerial vehicle (UAV) images, with implications for sustainability, productivity, and profitability. Similar to other object detection problems in the field of computer vision, palm tree detection typically involves classifying palm trees from non-palm tree objects or background and localising every palm tree instance in an image. Palm tree detection in large-scale high-resolution UAV images is challenging due to the large number of pixels that need to be visited by the object detector, which is computationally costly. In this thesis, we design a novel hybrid approach based on multimodal particle swarm optimisation (MPSO) algorithm that can speed up the localisation process whilst maintaining optimal accuracy for palm tree detection in UAV images. The proposed method uses a feature-extraction-based classifier as the MPSO's objective function to seek multiple positions and scales in an image that maximise the detection score. The feature-extraction-based classifier was carefully selected through empirical study and was proven seven times faster than the state-of-the-art convolutional neural network (CNN) with comparable accuracy. The research goes on with the development of a new k-d tree-structured MPSO algorithm, which is called KDT-SPSO that significantly speeds up MPSO's nearest neighbour search by only exploring the subspaces that most likely contain the query point's neighbours. KDT-SPSO was demonstrated effective in solving multimodal benchmark functions and outperformed other competitors when applied on UAV images. Finally, we devise a new approach that utilises a 3D digital surface model (DSM) to generate high confidence proposals for KDT-SPSO and existing region-based CNN (R-CNN) for palm tree detection. The use of DSM as prior information about the number and location of palm trees reduces the search space within images and decreases overall computation time. Our hybrid approach can be executed in non-specialised hardware without long training hours, achieving similar accuracy as the state-of-the-art R-CNN. 2022-02-27 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en cc_by https://eprints.nottingham.ac.uk/67174/1/PhD_Thesis_ChenZiYan.pdf Chen, Zi Yan (2022) Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation. PhD thesis, University of Nottingham. palm tree detection support vector machine particle swarm optimization local binary pattern convolutional neural network unmanned aerial vehicle
spellingShingle palm tree detection
support vector machine
particle swarm optimization
local binary pattern
convolutional neural network
unmanned aerial vehicle
Chen, Zi Yan
Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation
title Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation
title_full Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation
title_fullStr Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation
title_full_unstemmed Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation
title_short Palm tree detection in UAV images: a hybrid approach based on multimodal particle swarm optimisation
title_sort palm tree detection in uav images: a hybrid approach based on multimodal particle swarm optimisation
topic palm tree detection
support vector machine
particle swarm optimization
local binary pattern
convolutional neural network
unmanned aerial vehicle
url https://eprints.nottingham.ac.uk/67174/