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Dive into the research topics where Yuee Liu is active.

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Featured researches published by Yuee Liu.


machine vision applications | 2010

Towards automatic power line detection for a UAV surveillance system using pulse coupled neural filter and an improved Hough transform

Zhengrong Li; Yuee Liu; Rodney A. Walker; Ross F. Hayward; Jinglan Zhang

Spatial information captured from optical remote sensors on board unmanned aerial vehicles (UAVs) has great potential in automatic surveillance of electrical infrastructure. For an automatic vision-based power line inspection system, detecting power lines from a cluttered background is one of the most important and challenging tasks. In this paper, a novel method is proposed, specifically for power line detection from aerial images. A pulse coupled neural filter is developed to remove background noise and generate an edge map prior to the Hough transform being employed to detect straight lines. An improved Hough transform is used by performing knowledge-based line clustering in Hough space to refine the detection results. The experiment on real image data captured from a UAV platform demonstrates that the proposed approach is effective for automatic power line detection.


digital image computing: techniques and applications | 2009

Classification of Airborne LIDAR Intensity Data Using Statistical Analysis and Hough Transform with Application to Power Line Corridors

Yuee Liu; Zhengrong Li; Ross F. Hayward; Rodney A. Walker; Hang Jin

Light Detection and Ranging (LIDAR) has great potential to assist vegetation management in power line corridors by providing more accurate geometric information of the power line assets and vegetation along the corridors. However, the development of algorithms for the automatic processing of LIDAR point cloud data, in particular for feature extraction and classification of raw point cloud data, is in still in its infancy. In this paper, we take advantage of LIDAR intensity and try to classify ground and non-ground points by statistically analyzing the skewness and kurtosis of the intensity data. Moreover, the Hough transform is employed to detected power lines from the filtered object points. The experimental results show the effectiveness of our methods and indicate that better results were obtained by using LIDAR intensity data than elevation data.


Journal of Field Robotics | 2012

Toward automated power line corridor monitoring using advanced aircraft control and multisource feature fusion

Zhengrong Li; Troy S. Bruggemann; Jason J. Ford; Luis Mejias; Yuee Liu

The conventional manual power line corridor inspection processes that are used by most energy utilities are labor-intensive, time consuming and expensive. Remote sensing technologies represent an attractive and cost-effective alternative approach to these monitoring activities. This paper presents a comprehensive investigation into automated remote sensing based power line corridor monitoring, focusing on recent innovations in the area of increased automation of fixed-wing platforms for aerial data collection, and automated data processing for object recognition using a feature fusion process. Airborne automation is achieved by using a novel approach that provides improved lateral control for tracking corridors and automatic real-time dynamic turning for flying between corridor segments, we call this approach PTAGS. Improved object recognition is achieved by fusing information from multi-sensor (LiDAR and imagery) data and multiple visual feature descriptors (color and texture). The results from our experiments and field survey illustrate the effectiveness of the proposed aircraft control and feature fusion approaches.


digital image computing: techniques and applications | 2007

A Shape Ontology Framework for Bird Classification

Yuee Liu; Jinglan Zhang; Dian Tjondronegoro; Shlomo Geve

Current research on shape based classification has been generally aimed at utilising various visual features. Previous research has shown that the existing knowledge in a specific domain can assist in understanding the image content. Ontologies are currently being used for explicit representation of the domain knowledge. In this paper, two contributions are presented: 1) a shape ontology framework which constitutes both domain and shape ontologies and in which domain and shape ontologies are mapped to each other. 2) A new approach for automatic construction of shape ontology. The experimental results are promising. Future work will focus on validating the framework and automatic method of the shape ontology construction for a much larger dataset.


international conference on wireless communications, networking and mobile computing | 2009

Towards Continuous Surveillance of Fruit Flies Using Sensor Networks and Machine Vision

Yuee Liu; Jinglan Zhang; Mark A. Richards; Binh L. Pham; Paul Roe; Anthony R. Clarke

In Australia, the Queensland fruit fly (B. tryoni), is the most destructive insect pest of horticulture, attacking nearly all fruit and vegetable crops. This project has researched and prototyped a system for monitoring fruit flies so that authorities can be alerted when a fly enters a crop in a more efficient manner than is currently used. This paper presents the idea of our sensor platform design as well as the fruit fly detection and recognition algorithm by using machine vision techniques. Our experiments showed that the designed trap and sensor platform is capable to capture quality fly images, the invasive flies can be successfully detected and the average precision of the Queensland fruit fly recognition is 80% from our experiment.


digital image computing: techniques and applications | 2008

Individual Tree Crown Delineation Techniques for Vegetation Management in Power Line Corridor

Zhengrong Li; Ross F. Hayward; Jinglan Zhang; Yuee Liu

Remotely sensed, high spatial resolution images have great potential in assisting vegetation management in power line corridor. With the wide use of object-based approaches in remote sensing image analysis, individual tree crown delineation becomes a key research focus to improve the accuracy of plant information extraction. Although many algorithms have been investigated for individual tree crown delineation, no one algorithm seems suitable for all situations. As such, this paper investigates the applicability of several tree crown delineation techniques for complex environments in power line corridors. The advantages and limitations of these algorithms and prospective improvements are discussed. Initial experiment results on tree crown delineation employing JSEG are presented and compared with Mats Eriksonpsilas region-growing method.


international conference on image processing | 2009

Towards automatic tree crown detection and delineation in spectral feature space using PCNN and morphological reconstruction

Zhengrong Li; Ross F. Hayward; Jinglan Zhang; Yuee Liu; Rodney A. Walker

The application of object-based approaches to the problem of extracting vegetation information from images requires accurate delineation of individual tree crowns. This paper presents an automated method for individual tree crown detection and delineation by applying a simplified PCNN model in spectral feature space followed by post-processing using morphological reconstruction. The algorithm was tested on high resolution multi-spectral aerial images and the results are compared with two existing image segmentation algorithms. The results demonstrate that our algorithm outperforms the other two solutions with the average accuracy of 81.8%.


international conference on applied robotics for power industry | 2012

Real-time power line extraction from Unmanned Aerial System video images

Yuee Liu; Luis Mejias

In this paper a real-time vision based power line extraction solution is investigated for active UAV guidance. The line extraction algorithm starts from ridge points detected by steerable filters. A collinear line segments fitting algorithm is followed up by considering global and local information together with multiple collinear measurements. GPU boosted algorithm implementation is also investigated in the experiment. The experimental result shows that the proposed algorithm outperforms two baseline line detection algorithms and is able to fitting long collinear line segments. The low computational cost of the algorithm make suitable for real-time applications.


International Journal of Image and Data Fusion | 2011

Spectral–texture feature extraction using statistical moments with application to object-based vegetation species classification

Zhengrong Li; Ross F. Hayward; Yuee Liu; Rodney A. Walker

The use of appropriate features to characterise an output class or object is critical for all classification problems. In order to find optimal feature descriptors for vegetation species classification in a power line corridor monitoring application, this article evaluates the capability of several spectral and texture features. A new idea of spectral–texture feature descriptor is proposed by incorporating spectral vegetation indices in statistical moment features. The proposed method is evaluated against several classic texture feature descriptors. Object-based classification method is used and a support vector machine is employed as the benchmark classifier. Individual tree crowns are first detected and segmented from aerial images and different feature vectors are extracted to represent each tree crown. The experimental results showed that the proposed spectral moment features outperform or can at least compare with the state-of-the-art texture descriptors in terms of classification accuracy. A comprehensive quantitative evaluation using receiver operating characteristic space analysis further demonstrates the strength of the proposed feature descriptors.


international conference on image processing | 2010

Color and texture feature fusion using kernel PCA with application to object-based vegetation species classification

Zhengrong Li; Yuee Liu; Ross F. Hayward; Rodney A. Walker

A good object representation or object descriptor is one of the key issues in object based image analysis. To effectively fuse color and texture as a unified descriptor at object level, this paper presents a novel method for feature fusion. Color histogram and the uniform local binary patterns are extracted from arbitrary-shaped image-objects, and kernel principal component analysis (kernel PCA) is employed to find nonlinear relationships of the extracted color and texture features. The maximum likelihood approach is used to estimate the intrinsic dimensionality, which is then used as a criterion for automatic selection of optimal feature set from the fused feature. The proposed method is evaluated using SVM as the benchmark classifier and is applied to object-based vegetation species classification using high spatial resolution aerial imagery. Experimental results demonstrate that great improvement can be achieved by using proposed feature fusion method.

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Zhengrong Li

Queensland University of Technology

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Jinglan Zhang

Queensland University of Technology

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Ross F. Hayward

Queensland University of Technology

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Rodney A. Walker

Queensland University of Technology

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Dian Tjondronegoro

Queensland University of Technology

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Luis Mejias

Queensland University of Technology

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Shlomo Geva

Queensland University of Technology

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Anthony R. Clarke

Queensland University of Technology

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Binh L. Pham

Queensland University of Technology

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Cher Han Lau

Queensland University of Technology

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