Open Access
Novel techniques for enhancement and segmentation of acne vulgaris lesions
Author(s) -
Malik A. S.,
Humayun J.,
Kamel N.,
Yap F. B.B.
Publication year - 2014
Publication title -
skin research and technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.521
H-Index - 69
eISSN - 1600-0846
pISSN - 0909-752X
DOI - 10.1111/srt.12122
Subject(s) - acne , segmentation , artificial intelligence , computer science , pixel , normalization (sociology) , image segmentation , pattern recognition (psychology) , computer vision , medicine , dermatology , sociology , anthropology
Background More than 99% acne patients suffer from acne vulgaris. While diagnosing the severity of acne vulgaris lesions, dermatologists have observed inter‐rater and intra‐rater variability in diagnosis results. This is because during assessment, identifying lesion types and their counting is a tedious job for dermatologists. To make the assessment job objective and easier for dermatologists, an automated system based on image processing methods is proposed in this study. Objectives There are two main objectives: (i) to develop an algorithm for the enhancement of various acne vulgaris lesions; and (ii) to develop a method for the segmentation of enhanced acne vulgaris lesions. Methods For the first objective, an algorithm is developed based on the theory of high dynamic range ( HDR ) images. The proposed algorithm uses local rank transform to generate the HDR images from a single acne image followed by the log transformation. Then, segmentation is performed by clustering the pixels based on Mahalanobis distance of each pixel from spectral models of acne vulgaris lesions. Results Two metrics are used to evaluate the enhancement of acne vulgaris lesions, i.e., contrast improvement factor ( CIF ) and image contrast normalization ( ICN ). The proposed algorithm is compared with two other methods. The proposed enhancement algorithm shows better result than both the other methods based on CIF and ICN. In addition, sensitivity and specificity are calculated for the segmentation results. The proposed segmentation method shows higher sensitivity and specificity than other methods. Conclusion This article specifically discusses the contrast enhancement and segmentation for automated diagnosis system of acne vulgaris lesions. The results are promising that can be used for further classification of acne vulgaris lesions for final grading of the lesions.