0092 3125718857
WhatsApp for More Details
Implementation of Deep Learning Approach for Detection and Prediction of Breast Cancer Test phase, srs, design phase and source code final deliverable
Project Domain / Category
Artificial Intelligence: Deep learning
Abstract/Introduction
Early detection and prediction of medical problems can save the life of human beings. It is complicated and expensive to detect on manual basis detection regularly by domain experts and it will not give accurate predictions. Artificial intelligence techniques are the better approach to automatic cancer disease detection and diagnosis with highly accurate results. Breast cancer is an important factor affecting women’s health. The program will be implemented to detect and predict breast cancer diseases by using deep learning methods such as the classification of normal, benign, and malignant tissues. In this system, it will be considered requirements that utilize breast cancer images repository datasets for experimentation.
Functional Requirements:
Note: Skype sessions must be attended to communicate with the supervisor about deep learning methods and dataset’s discussion otherwise project will not be accepted.
Tools/language: Python programming language,
Advanced libraries: Keras, OpenCV, NumPy, Pillow, SciPy, and TensorFlow etc
DataSet: Datasets details will be provided by Skype sessions.
Prerequisite: For Deep Learning Concepts, students will have to cover a short course relevant to the mentioned concepts besides SRS and design initial documentation. It will also be provided course links during Skype sessions.
Supervisor:
Name: Dr. Saima Munawar