Title :
Automatic UAV Forced Landing Site Detection Using Machine Learning
Author :
Xufeng Guo ; Denman, Simon ; Fookes, Clinton ; Mejias, Luis ; Sridharan, Sridha
Abstract :
The commercialization of aerial image processing is highly dependent on the platforms such as UAVs (Unmanned Aerial Vehicles). However, the lack of an automated UAV forced landing site detection system has been identified as one of the main impediments to allow UAV flight over populated areas in civilian airspace. This article proposes a UAV forced landing site detection system that is based on machine learning approaches including the Gaussian Mixture Model and the Support Vector Machine. A range of learning parameters are analysed including the number of Guassian mixtures, support vector kernels including linear, radial basis function Kernel (RBF) and polynormial kernel (poly), and the order of RBF kernel and polynormial kernel. Moreover, a modified footprint operator is employed during feature extraction to better describe the geometric characteristics of the local area surrounding a pixel. The performance of the presented system is compared to a baseline UAV forced landing site detection system which uses edge features and an Artificial Neural Network (ANN) region type classifier. Experiments conducted on aerial image datasets captured over typical urban environments reveal improved landing site detection can be achieved with an SVM classifier with an RBF kernel using a combination of colour and texture features. Compared to the baseline system, the proposed system provides significant improvement in term of the chance to detect a safe landing area, and the performance is more stable than the baseline in the presence of changes to the UAV altitude.
Keywords :
Gaussian processes; autonomous aerial vehicles; feature extraction; image colour analysis; image processing; learning (artificial intelligence); mixture models; neural nets; support vector machines; ANN region type classifier; Gaussian mixture model; RBF kernel; UAV altitude; UAV flight; aerial image datasets; aerial image processing commercialization; artificial neural network region type classifier; automated UAV forced landing site detection system; automatic UAV forced landing site detection; civilian airspace; colour features; feature extraction; geometric characteristics; machine learning; machine learning approaches; modified footprint operator; polynormial kernel; radial basis function kernel; support vector kernels; support vector machine; texture features; unmanned aerial vehicles; Feature extraction; Gray-scale; Image segmentation; Kernel; Polynomials; Q-factor; Support vector machines;
Conference_Titel :
Digital lmage Computing: Techniques and Applications (DlCTA), 2014 International Conference on
Conference_Location :
Wollongong, NSW
DOI :
10.1109/DICTA.2014.7008097