Automatic Skin Disease Detection Using Modified Level Set and Dragonfly Based Neural Network

Author(s):  
K. Melbin ◽  
Y. Jacob Vetha Raj

Most of the health issues on human body is notified through the skin. In this paper, we proposed a framework which identifies the skin infections by using Artificial Neural Network technique. This framework effectively recognizes different types of dermatological skin illnesses. It comprises of three stages. They are, picture fixing, articulating stage, locating the stage. Strategies like shifting, partition, highlight mining, picture prepreparing and edge identification are important. This paper introduces an overview of different skin sickness. A thorough report of various skin infections is studied.


Author(s):  
Revati Kadu ◽  
U. A. Belorkar

One of the most common and augmenting health problems in the world are related to skin. The most  unpredictable and one of the most difficult entities to automatically detect and evaluate is the human skin disease because of complexities of texture, tone, presence of hair and other distinctive features. Many cases of skin diseases in the world have triggered a need to develop an effective automated screening method for detection and diagnosis of the area of disease. Therefore the objective of this work is to develop a new technique for automated detection and analysis of the skin disease images based on color and texture information for skin disease screening. In this paper, system is proposed which detects the skin diseases using Wavelet Techniques and Artificial Neural Network. This paper presents a wavelet-based texture analysis method for classification of five types of skin diseases. The method applies tree-structured wavelet transform on different color channels of red, green and blue dermoscopy images, and employs various statistical measures and ratios on wavelet coefficients. In all 99 unique features are extracted from the image. By using Artificial Neural Network, the system successfully detects different types of dermatological skin diseases. It consists of mainly three phases image processing, training phase, detection  and classification phase.


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