Abstract
Image texture analysisis a key taskincomputer vision. Although various methods have been applied to extract texture information, none of them are based on the principles of sample entropy, which is a measurement of entropy rate. This paper proposesatwo-dimensional sample entropy method, namely SampEn2D, inordertomeasure irregularity in pixel patterns.We evaluated the proposed method in three different situations: a set of simulated images generated by a deterministic function corrupted with different levels of a stochastic influence; the Brodatz public texture database; and a real biological image set of rat sural nerve. Evaluation with simulations showed SampEn2D as a robust irregularity measure, closely following sample entropy properties. Results with Brodatz dataset testified superiority of SampEn2D to separate different image categories compared to conventional Haralick and wavelet descriptors. SampEn2D was also capable of discriminating rat sural nerve images by age groups with high accuracy (AUROC =0.844). Nosignificant difference was found between SampEn2DAUROC and those obtained with the best performed Haralick descriptors, i.e. entropy (AUROC= 0.828), uniformity (AUROC=0.833), homogeneity (AUROC =0.938) and Wavelet descriptors, i.e. Haar energy/entropy (AUROC =0.932) and Daubechies energy/entropy (AUROC= 0.859).Inaddition,itwas shown that SampEn2Dcomputation time increases with image size, being around 1400sfor a600× 600 pixels image.In conclusion, SampEn2Dshowedto bestable and robust enough to be applied as texture feature quantifier and irregularity properties, as measured by SampEn2D, seem tobe animportant feature for image characterizationinbiomedical image analysis.
Author supplied keywords
Cite
CITATION STYLE
Silva, L. E. V., Filho, A. C. S. S., Fazan, V. P. S., Felipe, J. C., & Murta, L. O. (2016). Two-dimensional sample entropy: Assessing image texture through irregularity. Biomedical Physics and Engineering Express, 2(4). https://doi.org/10.1088/2057-1976/2/4/045002
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.