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Contents

   



(Top)
 


1 Overview  





2 History  





3 Implementations, frameworks and libraries  





4 References  





5 External links  














OpenVX






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From Wikipedia, the free encyclopedia
 


OpenVX
Developer(s)Khronos Group
Stable release

1.3.1 / November 7, 2023; 7 months ago (2023-11-07)

Written inC
Operating systemCross-platform
PlatformCross-platform
TypeAPI
Websitewww.khronos.org/openvx/

OpenVX is an open, royalty-free standard for cross-platform acceleration of computer vision applications. It is designed by the Khronos Group to facilitate portable, optimized and power-efficient processing of methods for vision algorithms. This is aimed for embedded and real-time programs within computer vision and related scenarios. It uses a connected graph representation of operations.

Overview[edit]

OpenVX specifies a higher level of abstraction for programming computer vision use cases than compute frameworks such as OpenCL. The high level makes the programming easy and the underlying execution will be efficient on different computing architectures. This is done while having a consistent and portable vision acceleration API.

OpenVX is based on a connected graph of vision nodes that can execute the preferred chain of operations. It uses an opaque memory model, allowing to move image data between the host (CPU) memory and accelerator, such as GPU memory. As a result, the OpenVX implementation can optimize the execution through various techniques, such as acceleration on various processing unitsordedicated hardware. This architecture facilitates applications programmed in OpenVX on different systems with different power and performance, including battery-sensitive, vision-enabled, wearable displays.[1]

OpenVX is complementary to the open source vision library OpenCV. OpenVX in some applications offers a better optimized graph management than OpenCV.

History[edit]

Implementations, frameworks and libraries[edit]

References[edit]

  1. ^ Brill, Frank; Erukhimov, Victor; Giduthuru, Radha; Ramm, Stephen (2020). OpenVX Programming Guide. Elsevier.
  • ^ "Khronos Releases OpenVX 1.2 Specification for Cross-Platform Acceleration of Power-Efficient Vision". May 2017.
  • ^ "Khronos Releases Updated OpenVX Adopters Program". The Khronos Group. 2017-11-21. Retrieved 2017-12-06.
  • ^ "Khronos OpenVX Registry - The Khronos Group Inc". www.khronos.org. Retrieved 2019-08-05.
  • ^ "Khronos Releases OpenVX 1.3 Open Standard for Cross-Platform Vision and Machine Intelligence Acceleration". 22 October 2019.
  • External links[edit]


    Retrieved from "https://en.wikipedia.org/w/index.php?title=OpenVX&oldid=1221819050"

    Categories: 
    Application programming interfaces
    Cross-platform software
    Applied machine learning
     



    This page was last edited on 2 May 2024, at 04:41 (UTC).

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