Modern OpenGL bindings for C#.
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Updated
Aug 4, 2021 - C#
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Modern OpenGL bindings for C#.
AMD OpenVX Core -- a sub-module of amdovx-modules:
MIVisionX toolkit is a set of comprehensive computer vision and machine intelligence libraries, utilities, and applications bundled into a single toolkit. AMD MIVisionX also delivers a highly optimized open-source implementation of the Khronos OpenVX™ and OpenVX™ Extensions.
AMD OpenVX modules: such as, neural network inference, 360 video stitching, etc.
OpenVX Samples to use with any conformant implementation of OpenVX
MIVisionX toolkit is a comprehensive computer vision and machine intelligence libraries, utilities and applications bundled into a single toolkit.
OpenVX API and Extension Registry.
Radeon Performance Primitives (RPP) library is a comprehensive high performance computer vision library for AMD (CPU and GPU) with HIP and OpenCL back-ends.
MIVisionX toolkit is a set of comprehensive computer vision and machine intelligence libraries, utilities, and applications bundled into a single toolkit.
This project has scripts to set up, build and test installation of AMD ROCm MIVisionX
Tools to convert Caffe / NNEF / ONNX pre-trained neural net models to an OpenVX Graph
OpenVX for Raspberry Pi
MIVisionX Python Inference Analyzer uses pre-trained ONNX/NNEF/Caffe models to analyze inference results and summarize individual image results
OpenVX stack for RPI. Builds OpenCV 4.3.0, OpenVX-impl, and all OpenVX samples.
MIVisionX Infrastructure for Neural Net Training and Inference with Optimized Data Augmentation through RALI
A Compilation of all MIVisionX applications available open-source
MIVisionX Python Inference Application using pre-trained ONNX/NNEF/Caffe models
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Following layers need to be supported:
a. batchnorm
b. elementwise
c. concat
Support required for:
a. Squeezenet
b. DenseNet
c. Inception networks
d. ResNet
e. ShuffleNet