Mammogram Diagnostics via 2-D Complex Wavelet-based Self-similarity Measures

Autores

  • Seonghye Jeon Depertment of Industrial and Systems Engineeroing, Georgia Institute of Technology, US
  • Orietta Nicolis Instituto de Estadistica, Universidad de Valparaiso, Chile
  • Brani Vidakovic Depertment of Industrial and Systems Engineeroing, Georgia Institute of Technology, US

DOI:

https://doi.org/10.11606/issn.2316-9028.v8i2p265-284

Resumo

Breast cancer is the second leading cause of death in women in the United States. Mammography is currently the most eective method for detecting breast cancer early; however, radiological inter- pretation of mammogram images is a challenging task. Many medical images demonstrate a certain degree of self-similarity over a range of scales. This scaling can help us to describe and classify mammograms. In this work, we generalize the scale-mixing wavelet spectra to the complex wavelet domain. In this domain, we estimate Hurst parameter and image phase and use them as discriminatory descriptors to clas- sify mammographic images to benign and malignant. The proposed methodology is tested on a set of images from the University of South Florida Digital Database for Screening Mammography (DDSM). Keywords: Scaling; Complex Wavelets; Self-similarity; 2-D Wavelet Scale-Mixing Spectra.

Downloads

Os dados de download ainda não estão disponíveis.

Downloads

Publicado

2014-12-12

Edição

Seção

Artigos

Como Citar

Mammogram Diagnostics via 2-D Complex Wavelet-based Self-similarity Measures. (2014). São Paulo Journal of Mathematical Sciences, 8(2), 265-284. https://doi.org/10.11606/issn.2316-9028.v8i2p265-284