Prototypes for GPGPU on Android, using OpenCL, OpenGL ES 2.0 shaders, or RenderScript.
-
Updated
Jan 10, 2015 - C
Prototypes for GPGPU on Android, using OpenCL, OpenGL ES 2.0 shaders, or RenderScript.
Creating and demonstrating hybrid images with OpenCV and Python3.
🖼️ Parallel Image Convolution, applying a blur filter to images. Written in C, optimized in three different ways: MPI, MPI & OpenMP and CUDA.
Various Small Projects on Various Subjects
Image processing in Python. Reading, converting to different formats, implementing filtering, convolving images, detecting edges, cropping and resizing images
This repository contains a solutions for the exercises in the "Math Concepts For Developers" course at SoftUni .
JavaScript image processing examples
The projects are a part of the course CSE-573 : Computer Vision and Image Processing, that I had taken up for Fall 2019 at the University at Buffalo.
Example of convolutional filters on images
Implementation of an efficient convolution between 3D tensors and 4D tensors.
Parallel image processing system with pipeline workers
This is an academic experiment comparing CPU and GPU performance using CUDA and OpenMP. It involves implementing three algorithms: Standard Deviation Calculation, Image Convolution, and Histogram-Based Data Structure, optimised for parallel execution to demonstrate performance improvements on different hardware architectures.
Comp3207
projects for the course of "Calcolo Distribuito e sistemi ad alte prestazioni" at Unipg (Università degli studi di Perugia) - 2019
image filters using convolution operations and mathematical kernels
Real-time comparison of FPS when using GPU vs CPU for image convolution on your machine.
Hybrid image generation from low- and high-pass filters utilising OpenIMAJ.
Implements various image processing techniques in Python, involving kernel convolutions and edge detection.
Add a description, image, and links to the image-convolution topic page so that developers can more easily learn about it.
To associate your repository with the image-convolution topic, visit your repo's landing page and select "manage topics."