The OpenCV OCL module contains a set of classes and functions that implement and accelerate OpenCV functionality on OpenCL compatible devices. OpenCL is a Khronos standard, implemented by a variety of devices (CPUs, GPUs, FPGAs, ARM), abstracting the exact hardware details, while enabling vendors to provide native implementation for maximal acceleration on their hardware. The standard enjoys wide industry support, and the end user of the module will enjoy the data parallelism benefits that the specific platform/hardware may be capable of, in a platform/hardware independent manner.
While in the future we hope to validate (and enable) the OCL module in all OpenCL capable devices, we currently develop and test on GPU devices only. This includes both discrete GPUs (NVidia, AMD), as well as integrated chips (AMD APU and Intel HD devices). Performance of any particular algorithm will depend on the particular platform characteristics and capabilities. However, currently, accuracy and mathematical correctness has been verified to be identical to that of the pure CPU implementation on all tested GPU devices and platforms (both Windows and Linux).
The OpenCV OCL module includes utility functions, low-level vision primitives, and high-level algorithms. The utility functions and low-level primitives provide a powerful infrastructure for developing fast vision algorithms taking advantage of OCL, whereas the high-level functionality (samples) includes some state-of-the-art algorithms (including LK Optical flow, and Face detection) ready to be used by the application developers. The module is also accompanied by an extensive performance and accuracy test suite.
The OpenCV OCL module is designed for ease of use and does not require any knowledge of OpenCL. At a minimum level, it can be viewed as a set of accelerators, that can take advantage of the high compute throughput that GPU/APU devices can provide. However, it can also be viewed as a starting point to really integrate the built-in functionality with your own custom OpenCL kernels, with or without modifying the source of OpenCV-OCL. Of course, knowledge of OpenCL will certainly help, however we hope that OpenCV-OCL module, and the kernels it contains in source code, can be very useful as a means of actually learning openCL. Such a knowledge would be necessary to further fine-tune any of the existing OpenCL kernels, or for extending the framework with new kernels. As of OpenCV 2.4.4, we introduce interoperability with OpenCL, enabling easy use of custom OpenCL kernels within the OpenCV framework.
To correctly run the OCL module, you need to have the OpenCL runtime provided by the device vendor, typically the device driver.
To enable OCL support, configure OpenCV using CMake with WITH_OPENCL=ON. When the flag is set and if OpenCL SDK is installed, the full-featured OpenCV OCL module is built. Otherwise, the module may be not built. If you have AMD’S FFT and BLAS library, you can select it with WITH_OPENCLAMDFFT=ON, WITH_OPENCLAMDBLAS=ON.
The ocl module can be found under the “modules” directory. In “modules/ocl/src” you can find the source code for the cpp class that wrap around the direct kernel invocation. The kernels themselves can be found in “modules/ocl/src/opencl”. Samples can be found under “samples/ocl”. Accuracy tests can be found in “modules/ocl/test”, and performance tests under “module/ocl/perf”.
Right now, the user can select OpenCL device by specifying the environment variable OPENCV_OPENCL_DEVICE. Variable format:
<Platform>:<CPU|GPU|ACCELERATOR|nothing=GPU/CPU>:<DeviceName or ID>
Note: Device ID range is: 0..9 (only one digit, 10 - it is a part of name)
'' = ':' = '::' = ':GPU|CPU:' 'AMD:GPU|CPU:' 'AMD::Tahiti' ':GPU:1' ':CPU:2'
Also the user can use cv::ocl::setDevice function (with cv::ocl::getOpenCLPlatforms and cv::ocl::getOpenCLDevices). This function initializes OpenCL runtime and setup the passed device as computing device.
In the current version, all the thread share the same context and device so the multi-devices are not supported. We will add this feature soon. If a function support 4-channel operator, it should support 3-channel operator as well, because All the 3-channel matrix(i.e. RGB image) are represented by 4-channel matrix in oclMat. It means 3-channel image have 4-channel space with the last channel unused. We provide a transparent interface to handle the difference between OpenCV Mat and oclMat.
In a heterogeneous device environment, there may be cost associated with data transfer. This would be the case, for example, when data needs to be moved from host memory (accessible to the CPU), to device memory (accessible to a discrete GPU). in the case of integrated graphics chips, there may be performance issues, relating to memory coherency between access from the GPU “part” of the integrated device, or the CPU “part.” For best performance, in either case, it is recommended that you do not introduce data transfers between CPU and the discrete GPU, except in the beginning and the end of the algorithmic pipeline.