Hybrid Application Based Skin Lesion Analyzer Using Deep Neural Networks

Authors

  • S. Poornima A ssistant Professor, CSE Department, SRMIST, Chennai, India Author
  • Shivang Kaul Assistant Professor, CSE Department, SRMIST, Chennai, India Author
  • Yash Aggarwal Assistant Professor, CSE Department, SRMIST, Chennai, India Author
  • M. Pushpalatha Assistant Professor, CSE Department, SRMIST, Chennai, India Author

DOI:

https://doi.org/10.61841/awqp5r78

Keywords:

Neural Networks, Image Processing, Convolu-tional Neural Networks, Skin Cancer Detection, Skin Lesion Imaging, App Development,, Localization Algorithms,, Cloud Computing,, GCP, Compute Engine, App Engine.

Abstract

Skin cancer with more than 5 million cases reported every year. Early detection can increase the probability of survival. In recent study it was shown neural networks outperform medical board certified doctors in classifying lesions as cancerous. We intend to build a whole system encompassing Image capturing processing it by neural net , sending the response back to the device and formulating a report for the user. We intent to use CNNs to classify the image of skin lesion into 7 categories of cancerous lesions: Melanoma, Benign Keratosis, Actinic Keratoses, Dermatofibroma, Vascular skin lesion and Basal Cell Carcinoma. Our goal is to make the system easily usable by untrained users and make detecting skin cancer easy with higher efficiency.

 

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References

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Published

31.10.2020

How to Cite

Poornima, S., Kaul, S., Aggarwal, Y., & Pushpalatha, M. (2020). Hybrid Application Based Skin Lesion Analyzer Using Deep Neural Networks. International Journal of Psychosocial Rehabilitation, 24(8), 2545-2550. https://doi.org/10.61841/awqp5r78