Title :
A principal component analysis based object detection for thermal infra-red images
Author :
Woeber, Wilfried ; Szuegyi, Daniel ; Kubinger, Wilfried ; Mehnen, Lars
Author_Institution :
Dept. for Mechatron., UAS Technikum Wien, Vienna, Austria
Abstract :
Autonomous vehicles are increasingly used for transportation of supply and goods. This is done mainly indoors. In outdoor scenarios, a reliable vision system is crucial for the overall system performance. The restriction of the reliability of this vision system is caused by light changes. To overcome the problem of varying lightning conditions, thermal infra-red cameras are often used. This paper discusses an object detection approach for thermal infra-red images. This object detection approach uses principal component analysis (PCA) based machine learning techniques for image classification. Multiple Supervised machine learning algorithms and an unsupervised machine learning algorithm are analysed, evaluated and compared. Based on the experimental data of several tests, a PCA based Gaussian classifier and a Mahalanobis distance based classifier are the best choice for detection and tracking.
Keywords :
Gaussian distribution; cameras; image classification; infrared imaging; learning (artificial intelligence); object detection; principal component analysis; reliability; Gaussian classifier; Mahalanobis distance; PCA; autonomous vehicles; image classification; multiple supervised machine learning; object detection; principal component analysis; reliability; thermal infrared cameras; thermal infrared images; transportation; unsupervised machine learning; varying lightning conditions; vision system; Machine learning algorithms; Materials; Object detection; Principal component analysis; Training; Vectors; Vehicles; Machine Learning; Object Detection; Principal Component Analysis; Thermal Infra-Red Imaging;
Conference_Titel :
ELMAR, 2013 55th International Symposium
Conference_Location :
Zadar
Print_ISBN :
978-953-7044-14-5