Abstract:
In healthcare, including dermatology, .Artificial intelligence is widely used. One ofthe subfields
ofAI that involves statistical models along with algorithms that learn progressively from any given
dataset to predict the characteristics ofthe new samples and achieve the desired goal is Machine
learning. However, there is a very significant role of ML in detecting skin cancer, but the
dermatology skill lags behindhand radiology in terms of Artificial intelligence acceptance. With
the rapid spreading, use, and development of technologies, Artificial intelligence has become
extensively accessible even to the overall people. People can use Artificial intelligence in initial
skin cancer detection. E, g. using Deep Convolutional Neural Networks can help develop any
system that can be able to evaluate images ofthe skin for the skin cancer diagnoses. Hence, in this
article, we present a completely automated system ofskin cancer detection through lesion images.
We have used transfer learning algorithms like MobileNetV2, VGG16, and InceptionV3. Our
models are designed into multiple phases including data collection, augmentation, model building,
fine-tuning, and finally prediction. We have presented a comparison of these three models.
MobileNetV2 model with fine-tuning gives higher accuracy of 99%. Finally, we will make an
android app for our MobileNetV2 (Fine-tuned model) to test our results