الخلاصة
In this study a skin disease diagnosis system was developed and
tested. The system was used for diagnosis of psoriases skin disease. Approach: Present study relied on
both skin color and texture features (features derives from the GLCM) to give a better and more
efficient recognition accuracy of skin diseases. We used feed forward neural networks to classify input
images to be psoriases infected or non psoriasis infected. Results: The system gave very encouraging
results during the neural network training and generalization face. Conclusion: The aim of this worked
to evaluate the ability of the proposed skin texture recognition algorithm to discriminate between
healthy and infected skins and we took the psoriasis disease as example. |