piQture: A quantum machine learning library for image processing.
-
Updated
Oct 31, 2024 - Python
piQture: A quantum machine learning library for image processing.
Implementation of Image encoding in FRQI image model and reconstructing the image from the Quantum states,
Plug-and-Play ADMM scheme based on an adaptive denoiser using the Schroedinger equation's solutions of quantum physics.
Bachelor's of Engineering final year project. Completed 2020
Signal and image denoising using quantum adaptive transformation.
Denoising by Quantum Interactive Patches
Deep Denoising by Quantum Interactive Patches. A deep neural network called DIVA unfolding a baseline adaptive denoising algorithm (De-QuIP), relying on the theory of quantum many-body physics.
Single image super resolution algorithm RED+ADMM+De-QuIP
Demos and tutorials using piQture and Qiskit
Q-SupCon integrates quantum principles into supervised contrastive learning, enhancing feature learning with minimal labeled data for efficient image classification, especially in medical applications.
By training and employing a machine learning model that identifies and corrects the noise in quantum processed images, this model can compensate for the noisiness caused by the machine and retrieve a processing result similar to that performed by a classical computer with higher efficiency
Module for fast encoding and decoding of images into quantum states using the FRQI and NEQR method
Add a description, image, and links to the quantum-image-processing topic page so that developers can more easily learn about it.
To associate your repository with the quantum-image-processing topic, visit your repo's landing page and select "manage topics."