DocumentCode :
236782
Title :
Using thresholding techniques for object detection in infrared images
Author :
Quy, Pham Ich ; Polasek, Martin
Author_Institution :
Univ. of Defence, Brno, Czech Republic
fYear :
2014
fDate :
3-5 Dec. 2014
Firstpage :
530
Lastpage :
537
Abstract :
Image processing techniques play an important role in military applications. Image binarization could be understood as a process of pixel values segmentation of grayscale image into two value groups, zero as a background and 1 as a foreground. In simple humor application of object detection we assume that contrast distribution of foreground is uniformed and without background noise or that variation in contrast does not exist. However, in complex cases previous conditions are inappropriate as variation in contrast exists and it does include background noise, etc. This paper deals with object detection in infrared images for military application using an image binarization step. Military targets are detected in different conditions such as winter condition, summer condition, at night etc. This paper focuses on combination of two methods of image binarization. One is the global binarization method proposed by Otsu and the other one is the local adaptive threshold technique. The global binarization method is usually faster than the local adaptive method and the global method will give good results for specific weather conditions such as object detection in winter condition. In these cases, acquired images have uniform contrast distribution of foreground and background and little variation in illumination. We are looking for an effective method for object detection in infrared images in challenging conditions such as summer conditions or in an urban environment, where there is a shortage of objects of interest. In these cases, we employed local mean techniques and local variance techniques. The experiment results are presented so that we can better choose which method should be employed or what combination of these previous techniques to employ. In order to minimise computational time of local thresholding technique, we employed a combination of two previous techniques. The algorithm was tested in a Matlab environment and the tested pictures were acquired by RayCam C.A- 1884 and thermoIMAGER 160 cameras.
Keywords :
image segmentation; infrared imaging; military computing; object detection; Matlab environment; RayCam C.A. 1884 camera; global binarization method; grayscale image pixel value segmentation; image binarization; image processing techniques; image thresholding techniques; infrared images; local adaptive threshold technique; local mean techniques; local variance techniques; military applications; military target detection; object detection; thermoIMAGER 160 camera; Gray-scale; Image color analysis; Object detection; Shape; Springs; Standards; Video sequences; Binarization techniques; Digital image processing; Global thresholding technique; Infrared image; Integral sum image; Local thresholding technique; Matlab; Object detection;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Mechatronics - Mechatronika (ME), 2014 16th International Conference on
Conference_Location :
Brno
Print_ISBN :
978-80-214-4817-9
Type :
conf
DOI :
10.1109/MECHATRONIKA.2014.7018315
Filename :
7018315
Link To Document :
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