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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.

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MIT licensed doc

Note

The published documentation is available at MIVisionX in an organized, easy-to-read format, with search and a table of contents. The documentation source files reside in the docs folder of this repository. As with all ROCm projects, the documentation is open source. For more information on contributing to the documentation, see Contribute to ROCm documentation.

MIVisionX toolkit is a set of comprehensive computer vision and machine intelligence libraries, utilities, and applications bundled into a single toolkit. AMD MIVisionX delivers highly optimized conformant open-source implementation of the Khronos OpenVX™ and OpenVX™ Extensions along with Convolution Neural Net Model Compiler & Optimizer supporting ONNX, and Khronos NNEF™ exchange formats. The toolkit allows for rapid prototyping and deployment of optimized computer vision and machine learning inference workloads on a wide range of computer hardware, including small embedded x86 CPUs, APUs, discrete GPUs, and heterogeneous servers.

Latest release

GitHub tag (latest SemVer)

AMD OpenVX™

AMD OpenVX™ is a highly optimized conformant open source implementation of the Khronos OpenVX™ 1.3 computer vision specification. It allows for rapid prototyping as well as fast execution on a wide range of computer hardware, including small embedded x86 CPUs and large workstation discrete GPUs.

Khronos OpenVX™ 1.0.1 conformant implementation is available in MIVisionX Lite

AMD OpenVX™ Extensions

The OpenVX framework provides a mechanism to add new vision functionality to OpenVX by vendors. This project has below listed OpenVX modules and utilities to extend amd_openvx, which contains the AMD OpenVX™ Core Engine.

  • amd_loomsl: AMD Loom stitching library for live 360 degree video applications
  • amd_media: AMD media extension module is for encode and decode applications
  • amd_migraphx: AMD MIGraphX extension integrates the AMD's MIGraphx into an OpenVX graph. This extension allows developers to combine the vision funcions in OpenVX with the MIGraphX and build an end-to-end application for inference.
  • amd_nn: OpenVX neural network module
  • amd_opencv: OpenVX module that implements a mechanism to access OpenCV functionality as OpenVX kernels
  • amd_rpp: OpenVX extension providing an interface to some of the ROCm Performance Primitives (RPP) functions. This extension enables rocAL to perform image augmentation.
  • amd_winml: AMD WinML extension will allow developers to import a pre-trained ONNX model into an OpenVX graph and add hundreds of different pre & post processing vision / generic / user-defined functions, available in OpenVX and OpenCV interop, to the input and output of the neural net model. This extension aims to help developers to build an end to end application for inference.

Applications

MIVisionX has several applications built on top of OpenVX modules. These applications can serve as excellent prototypes and samples for developers to build upon.

Neural network model compiler and optimizer

Neural net model compiler and optimizer converts pre-trained neural net models to MIVisionX runtime code for optimized inference.

Toolkit

MIVisionX Toolkit is a comprehensive set of helpful tools for neural net creation, development, training, and deployment. The Toolkit provides useful tools to design, develop, quantize, prune, retrain, and infer your neural network work in any framework. The Toolkit has been designed to help you deploy your work on any AMD or 3rd party hardware, from embedded to servers.

MIVisionX toolkit provides tools for accomplishing your tasks throughout the whole neural net life-cycle, from creating a model to deploying them for your target platforms.

Utilities

  • loom_shell: an interpreter to prototype 360 degree video stitching applications using a script
  • mv_deploy: consists of a model-compiler and necessary header/.cpp files which are required to run inference for a specific NeuralNet model
  • RunCL: command-line utility to build, execute, and debug OpenCL programs
  • RunVX: command-line utility to execute OpenVX graph described in GDF text file

Prerequisites

Hardware

Important

Some modules in MIVisionX can be built for CPU ONLY. To take advantage of Advanced Features And Modules we recommend using AMD GPUs or AMD APUs.

Operating Systems

Linux

  • Ubuntu - 22.04 / 24.04
  • RedHat - 8 / 9
  • SLES - 15-SP5

Windows

  • Windows 10 / 11

macOS

  • macOS - Ventura 13 / Sonoma 14 / Sequoia 15

Compiler

  • AMD Clang++ Version 18.0.0 or later - installed with ROCm

Note

AMD Clang++ is the preferred compiler, users can change this with the CMAKE_CXX_COMPILER variable

Libraries

  • CMake - Version 3.10 and above
    sudo apt install cmake
  • Half-precision floating-point(half) library - Version 1.12.0
    sudo apt install half
  • MIOpen
    sudo apt install miopen-hip-dev
  • MIGraphX
    sudo apt install migraphx-dev
  • RPP
    sudo apt install rpp-dev
  • OpenCV - Version 3.X/4.X
    sudo apt install libopencv-dev
  • OpenMP
    sudo apt install libomp-dev
    
  • pkg-config
    sudo apt install pkg-config
  • FFmpeg - Version 4.4.2 and above
    sudo apt install ffmpeg libavcodec-dev libavformat-dev libavutil-dev libswscale-dev

Important

  • On Ubuntu 22.04 - Additional package required: libstdc++-12-dev
sudo apt install libstdc++-12-dev

Note

All package installs are shown with the apt package manager. Use the appropriate package manager for your operating system.

Installation instructions

Linux

The installation process uses the following steps:

Important

Use either package install or source install as described below.

Package install

Install MIVisionX runtime, development, and test packages.

  • Runtime package - mivisionx only provides the dynamic libraries and executables
  • Development package - mivisionx-dev/mivisionx-devel provides the libraries, executables, header files, and samples
  • Test package - mivisionx-test provides ctest to verify installation
Ubuntu
sudo apt-get install mivisionx mivisionx-dev mivisionx-test
CentOS / RedHat
sudo yum install mivisionx mivisionx-devel mivisionx-test
SLES
sudo zypper install mivisionx mivisionx-devel mivisionx-test

Important

  • Package install supports HIP backend. For OpenCL backend build from source.
  • RedHat/SLES requires OpenCV & FFMPEG development packages manually installed

Source install

Prerequisites setup script

For your convenience, we provide the setup script, MIVisionX-setup.py, which installs all required dependencies.

python MIVisionX-setup.py --directory [setup directory - optional (default:~/)]
                          --opencv    [OpenCV Version - optional (default for non Ubuntu:4.6.0)]
                          --ffmpeg    [FFMPEG Installation - optional (default:ON) [options:ON/OFF]]
                          --amd_rpp   [MIVisionX VX RPP Dependency Install - optional (default:ON) [options:ON/OFF]]
                          --neural_net[MIVisionX Neural Net Dependency Install - optional (default:ON) [options:ON/OFF]]
                          --inference [MIVisionX Inference Dependency Install - optional (default:ON) [options:ON/OFF]]
                          --developer [Setup Developer Options - optional (default:OFF) [options:ON/OFF]]
                          --reinstall [Remove previous setup and reinstall (default:OFF)[options:ON/OFF]]
                          --backend   [MIVisionX Dependency Backend - optional (default:HIP) [options:HIP/OCL/CPU]]
                          --rocm_path [ROCm Installation Path - optional (default:/opt/rocm ROCm Installation Required)]

Note

  • Install ROCm before running the setup script
  • This script only needs to be executed once
  • ROCm upgrade requires the setup script rerun
Using MIVisionX-setup.py
  • Clone MIVisionX git repository

    git clone https://github.com/ROCm/MIVisionX.git

Important

MIVisionX has support for two GPU backends: OPENCL and HIP

  • Instructions for building MIVisionX with the HIP GPU backend (default backend):

    • run the setup script to install all the dependencies required by the HIP GPU backend:
    cd MIVisionX
    python MIVisionX-setup.py
    • run the below commands to build MIVisionX with the HIP GPU backend:
    mkdir build-hip
    cd build-hip
    cmake ../
    make -j8
    sudo make install
    make test
  • Instructions for building MIVisionX with OPENCL GPU backend

Windows

  • Windows SDK
  • Visual Studio 2019 or later
  • Install the latest AMD drivers
  • Install OpenCL SDK
  • Install OpenCV 4.6.0
    • Set OpenCV_DIR environment variable to OpenCV/build folder
    • Add %OpenCV_DIR%\x64\vc14\bin or %OpenCV_DIR%\x64\vc15\bin to your PATH

Using Visual Studio

  • Use MIVisionX.sln to build for x64 platform

Important

Some modules in MIVisionX are only supported on Linux

macOS

macOS build instructions

Important

macOS only supports MIVisionX CPU backend on x86 processors

Verify installation

Linux / macOS

  • The installer will copy
    • Executables into /opt/rocm/bin
    • Libraries into /opt/rocm/lib
    • Header files into /opt/rocm/include/mivisionx
    • Apps, & Samples folder into /opt/rocm/share/mivisionx
    • Documents folder into /opt/rocm/share/doc/mivisionx
    • Model Compiler, and Toolkit folder into /opt/rocm/libexec/mivisionx

Verify with sample application

Canny Edge Detection

export PATH=$PATH:/opt/rocm/bin
export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/opt/rocm/lib
runvx /opt/rocm/share/mivisionx/samples/gdf/canny.gdf

Note

  • More samples are available here
  • For macOS use export DYLD_LIBRARY_PATH=$DYLD_LIBRARY_PATH:/opt/rocm/lib

Verify with mivisionx-test package

Test package will install ctest module to test MIVisionX. Follow below steps to test packge install

mkdir mivisionx-test && cd mivisionx-test
cmake /opt/rocm/share/mivisionx/test/
ctest -VV

Windows

  • MIVisionX.sln builds the libraries & executables in the folder MIVisionX/x64

  • Use RunVX to test the build

    ./runvx.exe ADD_PATH_TO/MIVisionX/samples/gdf/skintonedetect.gdf

Docker

MIVisionX provides developers with docker images for Ubuntu 22.04. Using docker images developers can quickly prototype and build applications without having to be locked into a single system setup or lose valuable time figuring out the dependencies of the underlying software.

Docker files to build MIVisionX containers and suggested workflow are available

MIVisionX docker

Documentation

Run the steps below to build documentation locally.

  • sphinx documentation
cd docs
pip3 install -r sphinx/requirements.txt
python3 -m sphinx -T -E -b html -d _build/doctrees -D language=en . _build/html
  • Doxygen
doxygen .Doxyfile

Technical support

Please email [email protected] for questions, and feedback on MIVisionX.

Please submit your feature requests, and bug reports on the GitHub issues page.

Release notes

Latest release version

GitHub tag (latest SemVer)

Changelog

Review all notable changes with the latest release

Tested configurations

  • Windows 10 / 11
  • Linux distribution
    • Ubuntu - 22.04 / 24.04
    • RHEL - 8 / 9
    • SLES - 15-SP5
  • ROCm: 6.3.0
  • RPP - 1.9.0.60300
  • miopen-hip - 3.2.0.60300
  • migraphx - 2.11.0.60300
  • OpenCV - 4.6
  • FFMPEG - n4.4.2
  • Dependencies for all the above packages
  • MIVisionX Setup Script - V3.8.1

Known issues

  • MIVisionX Package install in RHEL/SLES requires manual OpenCV and FFMPEG development packages installed

MIVisionX dependency map

HIP Backend

Docker Image: sudo docker build -f docker/ubuntu20/{DOCKER_LEVEL_FILE_NAME}.dockerfile -t {mivisionx-level-NUMBER} .

  • #c5f015 new component added to the level
  • #1589F0 existing component from the previous level
Build Level MIVisionX Dependencies Modules Libraries and Executables Docker Tag
Level_1 cmake
gcc
g++
amd_openvx
utilities
#c5f015 libopenvx.so - OpenVX™ Lib - CPU
#c5f015 libvxu.so - OpenVX™ immediate node Lib - CPU
#c5f015 runvx - OpenVX™ Graph Executor - CPU with Display OFF
Docker Image Version (tag latest semver)
Level_2 ROCm HIP
+Level 1
amd_openvx
amd_openvx_extensions
utilities
#c5f015 libopenvx.so - OpenVX™ Lib - CPU/GPU
#c5f015 libvxu.so - OpenVX™ immediate node Lib - CPU/GPU
#c5f015 runvx - OpenVX™ Graph Executor - Display OFF
Docker Image Version (tag latest semver)
Level_3 OpenCV
FFMPEG
+Level 2
amd_openvx
amd_openvx_extensions
utilities
#1589F0 libopenvx.so - OpenVX™ Lib
#1589F0 libvxu.so - OpenVX™ immediate node Lib
#c5f015 libvx_amd_media.so - OpenVX™ Media Extension
#c5f015 libvx_opencv.so - OpenVX™ OpenCV InterOp Extension
#c5f015 mv_compile - Neural Net Model Compile
#c5f015 runvx - OpenVX™ Graph Executor - Display ON
Docker Image Version (tag latest semver)
Level_4 MIOpen
MIGraphX
+Level 3
amd_openvx
amd_openvx_extensions
utilities
#1589F0 libopenvx.so - OpenVX™ Lib
#1589F0 libvxu.so - OpenVX™ immediate node Lib
#1589F0 libvx_amd_media.so - OpenVX™ Media Extension
#1589F0 libvx_opencv.so - OpenVX™ OpenCV InterOp Extension
#1589F0 mv_compile - Neural Net Model Compile
#1589F0 runvx - OpenVX™ Graph Executor - Display ON
#c5f015 libvx_amd_migraphx.so - OpenVX™ MIGraphX Extension
#c5f015 libvx_nn.so - OpenVX™ Neural Net Extension
Docker Image Version (tag latest semver)
Level_5 AMD_RPP
+Level 4
amd_openvx
amd_openvx_extensions
utilities
#1589F0 libopenvx.so - OpenVX™ Lib
#1589F0 libvxu.so - OpenVX™ immediate node Lib
#1589F0 libvx_amd_media.so - OpenVX™ Media Extension
#1589F0 libvx_opencv.so - OpenVX™ OpenCV InterOp Extension
#1589F0 mv_compile - Neural Net Model Compile
#1589F0 runvx - OpenVX™ Graph Executor - Display ON
#1589F0 libvx_nn.so - OpenVX™ Neural Net Extension
#c5f015 libvx_rpp.so - OpenVX™ RPP Extension
Docker Image Version (tag latest semver)

Important

OpenVX and the OpenVX logo are trademarks of the Khronos Group Inc.