Project Summary: Skin cancer is an uncontrolled growth of abnormal cells. Skin damage with unrepaired DNA causing malignant tumors. It has ability to spread from one part of the body to other by the time passes. Melanoma is one of the common kind of skin cancer, which cause
Project Summary:
Skin cancer is an uncontrolled growth of abnormal cells. Skin damage with unrepaired DNA causing malignant tumors. It has ability to spread from one part of the body to other by the time passes. Melanoma is one of the common kind of skin cancer, which causes high number of causalities worldwide. The common types of melanomas are of skin-colored, brown or black, pink, red and many others, Melanoma is difficult to recognize at earlier stages, which is the major challenging problem for the dermatologist. There are two major stages of melanoma such as benign and malignant. The common and serious melanoma is benign, which is noncancerous tumor and do not have spread ability. However, it is treated as pre-cancerous signs most of the times. The second type of Melanoma is malignant form is very dangerous with no clear symptoms in advance. It is due to abnormal cell growth and can spread over the body. Fortunately, it can be clinically diagnosed and mostly curable up to 5% at premature stage. Therefore, skin cancer detection at an early stage is a significant requirement. Yet, some factors like irregularities, color and border area of cancerous cells make its detection complicated. Hence, the objective of this research is to propose an ensemble convolutional neural network model for the detection of melanoma at an early stage and save patient survival rate.
Project Objectives:
Software Implementation
| Output |
| Input Images |
|
Benign |
| Feature Maps |
| Feature Maps |
| Feature Maps |
|
| Convolutions |
| Malignant |
| Subsampling |
| Convolutions |
| Subsampling |
Figure1. General steps of the proposed deep learning model
Hardware Implementation:
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Figure 2. Flow diagram of hardware implementation
Output
Input Images


Benign
Feature Maps
Feature Maps
Feature Maps
| Benign |
Benign
Convolutions
Malignant
Subsampling
Convolutions
Subsampling
|
|
|
|

| Output |
Output
| Input |
Input
| Deploying On Ultra 96 |
Deploying On Ultra 96
| Benign/Malignant |
Benign/Malignant
Technical Details:
Matlab 2019b
Deep learning toolkit (DLTK)
| Input Images |
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