DocumentCode :
1448097
Title :
Focusing attention on objects of interest using multiple matched filters
Author :
Stough, Tim M. ; Brodley, Carla E.
Volume :
10
Issue :
3
fYear :
2001
fDate :
3/1/2001 12:00:00 AM
Firstpage :
419
Lastpage :
426
Abstract :
In order to be of use to scientists, large image databases need to be analyzed to create a catalog of the objects of interest. One approach is to apply a multiple tiered search algorithm that uses reduction techniques of increasing computational complexity to select the desired objects from the database. The first tier of this type of algorithm, often called a focus of attention (FOA) algorithm, selects candidate regions from the image data and passes them to the next tier of the algorithm. In this paper we present a new approach to FOA that employs multiple matched filters (MMF), one for each object prototype, to detect the regions of interest. The MMFs are formed using k-means clustering on a set of image patches identified by domain experts as positive examples of objects of interest. An innovation of the approach is to radically reduce the dimensionality of the feature space, used by the k-means algorithm, by taking block averages (spoiling) the sample image patches. The process of spoiling is analyzed and its applicability to other domains is discussed. The combination of the output of the MMFs is achieved through the projection of the detections back into an empty image and then thresholding. This research was motivated by the need to detect small volcanos in the Magellan probe data from Venus. An empirical evaluation of the approach illustrates that a combination of the MMF plus the average filter results in a higher likelihood of 100% detection of the objects of interest at a lower false positive rate than a single matched filter alone
Keywords :
computational complexity; filtering theory; matched filters; object detection; search problems; visual databases; Magellan probe data; Venus; average filter; block averages; catalog; computational complexity; detection likelihood; domain experts; false positive rate; feature space; feature space dimensionality reduction; focus of attention algorithm; image candidate regions selection; image data; image patches; k-means algorithm; k-means clustering; large image databases; multiple matched filters; multiple tiered search algorithm; objects of interest; reduction techniques; small volcanos; spoiling; thresholding; Clustering algorithms; Computational complexity; Focusing; Image analysis; Image databases; Matched filters; Object detection; Prototypes; Technological innovation; Volcanoes;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/83.908516
Filename :
908516
Link To Document :
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