Title :
Comparison of segmentation processes for object acquisition in infrared images
Author_Institution :
Guidance & Control Dept., British Aerosp. plc, Bristol, UK
fDate :
2/1/1989 12:00:00 AM
Abstract :
A qualitative comparison of the performance of nine different segmentation algorithms on a database of infrared images of vehicles is described. The segmentation methods are categorised according to their mode of operation into three distinct generic classes of algorithm: namely ´grey level threshold techniques´, ´three dimensional histogram methods´ and ´pixel classification techniques´. Each segmentation technique is guided to a subset of the image by a spoke filter detection algorithm which locates regions of the scene that most resemble blob shaped man-made objects. A short list of four segmentation algorithms is compiled, of which two methods from the ´pixel classification´ class, a K-nearest neighbour (KNN) and a Bayesian algorithm, are selected. The final preference is for the Bayesian technique, the KNN method being less favoured owing to the higher computational burden.
Keywords :
picture processing; Bayesian algorithm; IR images; K-nearest neighbour; database; grey level threshold techniques; infrared images; object acquisition; pixel classification techniques; segmentation algorithms; segmentation processes; spoke filter detection algorithm; three dimensional histogram methods; vehicles;
Journal_Title :
Radar and Signal Processing, IEE Proceedings F