


Need Team Members for Computer Vision Projects (Python, OpenCV)
I am developing 2 projects right now and need some team members to speed up the process and experiencing team work. Python, OpenCV, Numpy, SQL, Machine Learning, Git/Github knowledge is required. Please add me on Discord or send your CV and discord username to orhun868@gmail.com. If you have a LinkedIn account and a portfolio to show your project experience, please send those also. I will contact you as soon as possible :)
My CV is attached to this post and you can find me on https://www.linkedin.com/in/orhuneren/ and https://github.com/elymsyr/ .
Projects
- Iris Recognition System (https://github.com/elymsyr/iris-recognition):
I have forked a project for iris image analysis and recognition. I have add database control and am planning a performance optimization using Classifiers over keypoints (See https://openaccess.thecvf.com/content_CVPRW_2020/papers/w61/Papadaki_Match_or_No_Match_Keypoint_Filtering_Based_on_Matching_Probability_CVPRW_2020_paper.pdf).
Deadline: 1-2 months
Budget: No budget- Autonomous Vehicle Systems (https://github.com/elymsyr/autonomous-vehicle-simulation):
In autonomous car simulation project, I used City Car Gaming for a realistic simulation environment. Object tracking, bird's-eye view mapping and road line detection algorithms were implemented using OpenCV. I aim to obtain a cleaner bird's-eye view and work on autonomous driving features by training Vehicle Pose Estimation and Terrain Estimation models using KITTI databases or else.
Deadline: 2-3 months
Budget: 10-30 euros per month per person (In case of budget need)
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