Skip to content
#

sift-features

Here are 44 public repositories matching this topic...

Lab Experiments under Lab component of CSE3018 - Content-based Image and Video Retrieval course at Vellore Institute of Technology, Chennai

  • Updated Jun 28, 2021
  • MATLAB

stereo vision: estimate 3D vision depending on information extracted from 2D-images. 1)Feature extract, using SIFT algorithm. 2)Matching, using KNN algorithm. 3)Compute "Fundamental Matrix", using RANSAC algorithm. 4)Reconstruction. 5)Triangulation. 6)Pose disambiguation. 7)Rectification. 8)Disparity Computing.

  • Updated Jun 23, 2022
  • Python

Coin identification and recognition systems may drammatically enhance the extended operation of vending machines, pay phone systems and coin counting machines. The primary purpose of this project is to develop a detector capable of finding and classifying Euro coins in images purely relying on Computer Vision based frameworks.

  • Updated Jan 11, 2022
  • C++

Improve this page

Add a description, image, and links to the sift-features topic page so that developers can more easily learn about it.

Curate this topic

Add this topic to your repo

To associate your repository with the sift-features topic, visit your repo's landing page and select "manage topics."

Learn more