Abstract:
Similarity measures play crucial role in Content-Based Dermoscopic Image Retrieval (CBDIR). This paper analyses and compares images based respectively on twelve distances...Show MoreMetadata
Abstract:
Similarity measures play crucial role in Content-Based Dermoscopic Image Retrieval (CBDIR). This paper analyses and compares images based respectively on twelve distances namely: Minkowski, Euclidean, Standardized Euclidean, Mahalanobis, Manhattan, Chebychev, Cosine, Canberra, Relative Deviation, Bray-Curtis, Square Chord and Square Chi-Squared measures for CBDIR. Two dermatologists were asked to diagnose 176 skin lesion images in order to classify them. Eight common classes of pigmented skin lesions have been identified, including: Melanoma, Nevus/Mole (ML), Lentigo (Len), Basal Cell Carcinoma (BCC), Seborrhoeic Keratosis (SK), Actinic Keratosis (AK), Angioma (AG) and Dermatofibroma (DF). Color and texture features have been extracted from the segmented skin lesions. Then a series of CBDIR experiments were conducted on the image database. The results indicate that the CBDIR performance is significantly improved by using Canberra and Bray-Curtis distances compared to conventional measures.
Published in: 2015 First International Conference on New Technologies of Information and Communication (NTIC)
Date of Conference: 08-09 November 2015
Date Added to IEEE Xplore: 04 January 2016
ISBN Information:
Computer Science Department, Constantine University 2, Constantine, Algeria
Computer Science Department, Constantine University 2, Constantine, Algeria
Computer Science Department, Constantine University 2, Constantine, Algeria
Computer Science Department, Constantine University 2, Constantine, Algeria