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🪐 Astroinformatics
Projects related to astroinformatics, astronomical imaging and theories📚 IPCV MSc Coursework
All projects I did as a part of my MSc in IPCV from PPKE, UAM and UB.🩻 Medical Imaging
All of my projects in the field of medical imaging, including detection, semantic segmentation and classification.Stars
Emission tomography with gravitational lensing using Neural Radiance Fields (NeRF)
MATLAB code for my masters thesis in IPCV on tomographic imaging
Contributors: Tsaichen Lee, Yuchen Wang, Jiaming Lu
Final Project for Vision for Multiple or Moving Cameras, part of IPCV MSc coursework
Jupyter notebooks for IPCV coursework for the course Numerical Analysis I.
A set of codes in Python from a workshop on Deep Learning for Computer Vision
Empower users to conquer arachnophobia with this HoloLens2 app built in Unity, offering progressive exposure therapy in a holographic environment.
subhamshome / crop-and-weed-semantic-segmentation
Forked from hyeonyu1/crop-and-weed-semantic-segmentationA repository of some of the most used Explainable AI (XAI) methods - both white box and black box, along with evaluations
MATLAB repo of various inverse problems and image reconstruction methods, including parameter learning
Coursework for IPCV - Fundamental Tools for Deep Learning
A machine learning algorithm used to classify SDSS SkyServer DR14 data into 3 classes - galaxy, star and qso, based on various photometric and spectroscopic data
An SVM based algorithm to detect normal and abnormal heart rates by classifying murmurs made by heart signals
Optic disc segmentation in Drishti-GS using basic image processing algorithms
A collection of consecutively run python scripts to download images taken by the Hubble's Telescope
Comparative analysis of ML and DL algorithms on the popular Multi-class Weather Dataset (MWD) for multi-class weather classification.
A classical machine learning algorithm based binary classification on the famous Scania APS dataset
A lucid way to detect genuine and fake signatures based on global and local features of handwritten signatures
A simple yet efficient ML algorithm to detect deepfakes in image sequences