Skin Lesion Segmentation in Dermoscopy Imagery

Shelly Garg1 and Balkrishan Jindal2

1Department of Electronics and communication, Punjabi University, India

2Yadavindra College of Engineering, Computer Engineering Section, Punjabi University, India

Abstract: The main purpose of this study is to find an optimum method for segmentation of skin lesion images. In the present world, Skin cancer has proved to be the most deadly disease. The present research paper has developed a model which encompasses two gradations, the first being pre-processing for the reduction of unwanted artefacts like hair, illumination or many other by enhanced technique using threshold and morphological operations to attain higher accuracy and the second being segmentation by using k-mean with optimized Firefly Algorithm (FFA) technique. The online image database from the International Skin Imaging Collaboration (ISIC) archive dataset and dermatology service of Hospital Pedro Hispano (PH2) dataset has been used for input sample images. The parameters on which the proposed method is measured are sensitivity, specificity, dice coefficient, jacquard index, execution time, accuracy, error rate. From the results, authors have observed proposed model gives the average accuracy value of huge number of cancer images using ISIC dataset is 98.9% and using PH2 dataset is 99.1% with minimize average less error rate. It also estimates the dice coefficient value 0.993 using ISIC and 0.998 using PH2 datasets. However, the results for the rest of the parameters remain quite the same. Therefore the outcome of this model is highly reassuring.

Keywords: Automatic detection, FFA, K-mean, pre-processing, segmentation.

Received October 29, 2019; accepted February 7, 2021

https://doi.org/10.34028/iajit/19/1/4

Full text

Read 803 times

Related items

Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…