• Stars
    star
    1
  • Language
    Python
  • Created about 3 years ago
  • Updated about 3 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

In medical diagnosis, it is of great significance to use CT images to determine the location and size of tumors and determine whether tumor metastasis occurs. The goal of this case is to segment the tumor area from the existing CT images. The tumor area is drawn by a professional doctor and can be used as a label.

More Repositories

1

An-image-encryption-scheme-based-on-Lorenz-Hyperchaotic-System-and-RSA-algorithm

This research proposes a new image encryption scheme based on Lorenz hyperchaotic system and Rivest-Shamir-Adleman (RSA) algorithm. Firstly, the initial values of the Lorenz hyperchaotic system are generated by RSA algorithm, and the keystream is produced iteratively. In order to change the position and gray value of the pixel, the image data are hidden by additive mode diffusion. Secondly, the diffusion image matrix is reshaped into a one-dimensional image matrix, which is confused without repetition to hide the image data again. Then, the finite field diffusion algorithm is executed to realize the third hiding of the image information. In order to diffuse the pixel information into the entire cipher image, the additive mode diffusion algorithm needs to be looped twice. Finally, the cipher image can be obtained. The experimental results prove that the image encryption scheme proposed in this research is effective, and has strong anti-attack and key sensitivity. Moreover, the security of this encryption scheme relies on the RSA algorithm, which has high security.
MATLAB
10
star
2

lihang-Machine-Learning-code

ๆŽ่ˆช ็ปŸ่ฎกๅญฆไน ๆ–นๆณ• ไปฃ็ 
Jupyter Notebook
1
star
3

Research-and-Application-of-Fishing-Boat-s-Detection-and-Recognition-based-on-Deep-Learning

This repository has carried out a certain exploratory research on the subject of deep learning-based fishing boat brand recognition. The main work is summarized as follows:
1
star