Skip to content

amrithsam/ML66-CNN-Assignment

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

3 Commits
 
 
 
 
 
 

Repository files navigation

ML66-CNN-Assignment

Upgrad ISIC classification assignment ML66

Outline a brief description of your project.

Table of Contents

  • [General Info]In this assignment, you will build a multiclass classification model using a custom convolutional neural network in TensorFlow.
  • [Technologies Used]Python
  • [Conclusions]A solution that can evaluate images and alert dermatologists about the presence of melanoma has the potential to reduce a lot of manual effort needed in diagnosis.

General Information

To build a CNN based model which can accurately detect melanoma. Melanoma is a type of cancer that can be deadly if not detected early. It accounts for 75% of skin cancer deaths.

The dataset consists of 2357 images of malignant and benign oncological diseases, which were formed from the International Skin Imaging Collaboration (ISIC). All images were sorted according to the classification taken with ISIC, and all subsets were divided into the same number of images, with the exception of melanomas and moles, whose images are slightly dominant.

The data set contains the following diseases:

Actinic keratosis Basal cell carcinoma Dermatofibroma Melanoma Nevus Pigmented benign keratosis Seborrheic keratosis Squamous cell carcinoma Vascular lesion

Conclusions

  • Conclusion 1 from the analysis
  • Conclusion 2 from the analysis
  • Conclusion 3 from the analysis
  • Conclusion 4 from the analysis

Technologies Used

  • library - version 1.0
  • library - version 2.0
  • library - version 3.0

Acknowledgements

Give credit here.

  • This project was inspired by...
  • References if any...
  • This project was based on this tutorial.

Contact

Created by [@amrithsam] - feel free to contact me!

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published