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학술대회 Automatic lesion detection and segmentation algorithm on 2D breast ultrasound images
Cited 6 time in scopus Download 1 time Share share facebook twitter linkedin kakaostory
저자
유동훈, 이수열, 이정원, 김승환
발행일
201102
출처
Medical Imaging 2011 (SPIE 7963), pp.1-6
DOI
https://dx.doi.org/10.1117/12.876351
협약과제
10SC1300, 유방초음파용 병변 검출 기술 개발, 이수열
초록
Although X-ray mammography (MG) is the dominant imaging modality, ultrasonography (US), with recent advances in technologies, has proven very useful in the evaluation of breast abnormalities. But radiologist should investigate a lot of images for proper diagnosis unlike MG. This paper proposes the automatic algorithm of detecting and segmenting lesions on 2D breast ultrasound images to help radiologist. The detecting part is based on the Hough transform with downsampling process which is very efficient to sharpen the smooth lesion boundary and also to reduce the noise. In segmenting part, radial dependent contrast adjustment (RDCA) method is newly proposed. RDCA is introduced to overcome the limitation of Gaussian constraint function. It decreases contrast around the center of lesion but increases contrast proportional to the distance from the center of lesion. As a result, segmentation algorithm shows robustness in various shapes of lesion. The proposed algorithms may help to detect lesions and to find boundary of lesions efficiently. © 2011 SPIE.
KSP 제안 키워드
Automatic lesion detection and segmentation, Breast ultrasound images, Constraint Function, Contrast adjustment, automatic algorithm, hough transform, imaging modality, segmentation algorithm, x-ray