DocumentCode
1357564
Title
Combining Local Filtering and Multiscale Analysis for Edge, Ridge, and Curvilinear Objects Detection
Author
Berlemont, Sylvain ; Olivo-Marin, Jean-Christophe
Author_Institution
Inst. Pasteur, CNRS, Paris, France
Volume
19
Issue
1
fYear
2010
Firstpage
74
Lastpage
84
Abstract
This paper presents a general method for detecting curvilinear structures, like filaments or edges, in noisy images. This method relies on a novel technique, the feature-adapted beamlet transform (FABT) which is the main contribution of this paper. It combines the well-known beamlet transform (BT), introduced by Donoho , with local filtering techniques in order to improve both detection performance and accuracy of the BT. Moreover, as the desired feature detector is chosen to belong to the class of steerable filters, our transform requires only O(N log(N)) operations, where N = n 2 is the number of pixels. Besides providing a fast implementation of the FABT on discrete grids, we present a statistically controlled method for curvilinear objects detection. To extract significant objects, we propose an algorithm in four steps: 1) compute the FABT, 2) normalize beamlet coefficients, 3) select meaningful beamlets thanks to a fast energy-based minimization, and 4) link beamlets together in order to get a list of objects. We present an evaluation on both synthetic and real data, and demonstrate substantial improvements of our method over classical feature detectors.
Keywords
computational complexity; edge detection; filtering theory; object detection; transforms; curvilinear objects detection; discrete grids; edge detection; feature-adapted beamlet transform; local filtering; multiscale analysis; noisy images; normalize beamlet coefficients; ridge detection; steerable filters; Beamlet transform; Radon transform; curvilinear objects; edge; feature; ridge; statistical detection; steerable filters;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2009.2030968
Filename
5223700
Link To Document