Skin disease detection using improved bag of features algorithm
College
College of Computer Studies
Department/Unit
Computer Science
Document Type
Conference Proceeding
Source Title
5th Iranian Conference on Signal Processing and Intelligent Systems (ICSPIS)
First Page
1
Last Page
5
Publication Date
12-18-2019
Abstract
This study uses digital image processing to develop a model to detect common skin diseases in the Philippines; acne and BOIL. The researchers used different methods and technique such as; improved bag of features algorithm, speeded up robust features algorithm, interest point detection, Gaussian filtering and k-means clustering. The overall accuracy rate of the system is 96% while overall loss is (0.03), and the total average confidence rate of the tests done with different test data in terms of detection and classification is 98.48%. Moreover, the average precision/recall rate of combined images for the two categories is 99% In the confusion matrix, Acne got the highest number of correct predicted skin disease. On the other hand, BOIL got the lowest number of correctly classified. Besides, Acne got the highest precision result of 98%, while BOIL got a high precision result of 97%. In recall results, both models have the same percentage of 99%.
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Recommended Citation
Navarro, M. M., & Barfeh, D. (2019). Skin disease detection using improved bag of features algorithm. 5th Iranian Conference on Signal Processing and Intelligent Systems (ICSPIS), 1-5. Retrieved from https://animorepository.dlsu.edu.ph/faculty_research/14525
Disciplines
Computer Sciences
Keywords
Image processing—Digital techniques; Skin—Diseases
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