Faculty of Applied Sciences of UCU (@ucuapps)

Top repositories

1

OpenGlue

Open Source Graph Neural Net Based Pipeline for Image Matching
Python
326
star
2

top-view-multi-person-tracking

This repo contains links to multi-person re-identification and tracking dataset in top view multi-camera environment.
Python
96
star
3

modelicagym

Modelica models integration with Open AI Gym
Python
72
star
4

single-view-autocalib

Single-View Auto-Calibration from Lens-Distorted Images of Urban Scenes. In WACV (2021)
MATLAB
37
star
5

WSMIS

Weakly Supervised Medical Images Segmentation
Python
30
star
6

computer-vision-course

Computer Vision course for CS bachelors in UCU (2019)
Jupyter Notebook
29
star
7

CoronaryArteryStenosisScoreClassification

CNN for Classification of Coronary Artery Stenosis Score inMPR Images.
Jupyter Notebook
28
star
8

LIDChallenge2020-NoPeopleAllowed

A 3rd place solution for LID Challenge at CVPR 2020 on Weakly Supervised Semantic Segmentation
Python
13
star
9

Robust-DL-pipeline-for-PVC-localization

Premature ventricular contraction(PVC) is among the most frequently occurring types of arrhythmias. Along with other cardiovascular diseases, it may easily cause hazardous health conditions, making PVC detection task extremely important in cardiac care. However, the long-term nature of monitoring, sophisticated morphological features, and patient variability makes the manual observation of PVC an impractical task. Existing approaches for automated PVC identification suffer from a range of disadvantages. These include domain-specific handcrafted features, usage of manually delineated R peaks locations, tested on a tiny sample of PVC beats(usually a small subset of MIT-BIH database). We address some of these drawbacks in proposed framework, which takes a raw ECG signal as an input and localizes R peaks of the PVC beats. It consists of two neural networks. The first one is an encoder-decoder architecture that localizes the R peak of both Normal and anomalous heartbeats. Provided R peaks positions, our CardioIncNet model, adopted for ECG signal data, does the delineation of healthy versus PVC bits. We have performed the extensive evaluation of our pipeline with both single- and cross-dataset paradigms on three public datasets. Our approach results in over 0.99 and 0.979 F1-measure on both single- and cross-dataset paradigms for R peaks localization task and above 0.96 and 0.85 F1 score for the PVC beats classification task.
Python
8
star
10

Modified-MaskFormer-for-Polyps-Segmentation

Mask Classification-based method for Polyps Segmentation and Detection (EndoCV 2022 challenge)
Python
3
star
11

Portfolio-APPS

Portfolio for APPS students
CSS
3
star
12

InkscapeBarrelDistortion

An Inkscape extension for lens distortion of objects
Python
3
star
13

BraTS2021_Challenge

1
star