Enhancing lane detection systems using deep learning models: U-Net and SegNet for the course ECE-5554 Computer Vision
-
Updated
May 28, 2024 - Jupyter Notebook
Enhancing lane detection systems using deep learning models: U-Net and SegNet for the course ECE-5554 Computer Vision
Glaucoma detection using CDR and UNET model to segment optic disk and optic cup.
DATA: 606 | Capstone Project
Application of deep learning for earth observation.
Employing a fusion of UNet and ResNet architectures, the project endeavors to achieve multiclass semantic segmentation of sandstone images. Through deep learning techniques, it seeks to uncover microstructural features across various geological classifications.
Kvasir dataset - segmentation
Research project @ NECSTCamp NL2.
🧠💻 USeS-BPCA: U-Net Semantic Segmentation BPCA Pooling
discusses deep learning models for segmenting MRI images, specifically the UNET model for Brain Tumor Segmentation
Deep-Learning-Based Segmentation of Small Extracellular Vesicles in Transmission Electron Microscopy Images
Tensorflow implementation of UNet on surgical Instrument dataset from laparoscopic videos
A tiny version of original U-Net architecture was used to detect vehicles with segmentation vehicle classes: car, trailer, bus, rider, motorcycle, truck.
Dental segmentation for adults. Many dentists find it difficult to analyze dental panoramic images for adults. One of the difficulties that dentists suffer from is the difficulty in determining the extent and root of the teeth, which affects the decisions of doctors in many cases that include dental implants, tooth extraction, or other problems.
Implementation of UNET++ for CAC Scoring using Tensorflow
Dermatologists suffer from the difficulty of locating cancerous and malignant skin lesions, which causes many problems during the process of removing the tumor, which leads to the return of the tumor again. In determining the location of the tumor and its spread and determining the area that must be removed accurately.
People with pulmonary disease often have a high opacity, which makes segmentation of the lung from chest X-rays more difficult. In this study, I propose a methodology to improve the performance of the U-NET structure so that it is able to extract the features and spatial characteristics of the X-ray images of the chest region.
MRI style transfer from T1 to T2 and vice versa using CycleGAN(TensorFlow Implementation)
Medical Image Segmentation using U-Net.
A simple U-Net implementation for custom dataset. Just create required folders and place the images and then start training.
Repo to maintain the codebase for the CNN model capable of retrieving cloud optical thicknesses (COT).
Add a description, image, and links to the unet-keras topic page so that developers can more easily learn about it.
To associate your repository with the unet-keras topic, visit your repo's landing page and select "manage topics."