CAD system for breast US images with speckle noise reduction and bio-inspired segmentation
N/D
Tipo de produção
Artigo de evento
Data de publicação
2019-10-05
Texto completo (DOI)
Periódico
Proceedings - 32nd Conference on Graphics, Patterns and Images, SIBGRAPI 2019
Editor
Texto completo na Scopus
Citações na Scopus
2
Autores
RODRIGUES, P. S. S.
Guilherme Lopes
GIRALDI, G. A.
BARCELOS, C. A. Z.
VIEIRA, L.
GULIATO, D.
KUMAR SINGH, B.
Orientadores
Resumo
© 2019 IEEE.Ultrasound (US) images are highly susceptible to speckle-like noise which makes imperative to use specific techniques for image smoothing. However, this process can lead to undesirable side effects such as the degradation of the real contour of the region of interest (ROI). In such context, this paper presents a new methodology for computer aided diagnosis (CAD) systems whose heart is the combination of a method for speckle noise reduction, with histogram equalization and a technique for image segmentation that uses the bio-inspired firefly algorithm and Bayesian model. The segmentation approach and the equalization are applied in two distinct stages: globally and locally. The global application produces an initial coarse estimate of the ROI, and the local application defines this region more precisely. In the classification step we carried out experiments which show that the combination of features computed both within and below the lesion strongly influences the final accuracy. We show that the gray-scale distribution and statistical moments within the lesion together with gray-scale distribution and contrast of the region below the lesion is the combination that produces the better classification results. Experiments in a database of 250 US images of breast anomalies (100 benign and 150 malignant) show that the proposed methodology reaches performance of 95%.
Citação
RODRIGUES, P. S. S.; LOPES, G.; GIRALDI, G. A.; BARCELOS, C. A. Z.; VIEIRA, L.; GULIATO, D.; KUMAR SINGH, B.; KUMAR SINGH, B. CAD system for breast US images with speckle noise reduction and bio-inspired segmentation. Proceedings - 32nd Conference on Graphics, Patterns and Images, SIBGRAPI 2019, p. 68-75.
Palavras-chave
Keywords
Bio inspired Segmentation; Breast US Images; CAD System; Speckle Noise Reduction
Assuntos Scopus
Breast US; CAD system; Classification results; Computer Aided Diagnosis(CAD); Histogram equalizations; Speckle noise reduction; Statistical moments; The region of interest (ROI)