Domain : Computer Vision, Machine Learning Sub-Domain : Deep Learning, Image Recognition Techniques : Deep Convolutional Neural Network, XceptionNet Application : Image Recognition, Image Classification, Medical Imaging
1. Detected 3 types of skin cancer from Skin Lesion images using Transfer Learning MobileNetV2 architecture with 12,295 Skin Lesion images (Basal Cell Carcinoma : 3273 images, Nevus (Benign) : 4550 images, Melanoma : 4472 images). 2. For classifying Basal Cell Carcinoma, Nevus and Melanoma classes architecture of pretrained network MobileNetV2 used. 3. Customized MobileNetV2 Network attained testing accuracy of 96.94%.
Dataset : ISIC Skin Cancer Challenge 2019
The sample images of Basal cell Carcinoma, Melanoma and Nevus are shown in figure below:
Dataset Details Dataset Name : ISIC Skin Cancer Images (Basal Cell Carcinoma vs Melanoma vs Nevus) Number of Class : 3 Number/Size of Images : Total : 12445 (555 MB) Training : 12295 Testing : 150
We have achieved following results which outperform 4 previous state-of-the-art deep CNNs for detection of Skin Cancers.
Performance Metrics Test Accuracy : 97.47% Precision : 97% Sensitivity (BCC) : 100% Sensitivity (Melanoma) : 96% Sensitivity (Nevus) : 98% F1-score : 98% AUC : 0.99