I'm looking for an example of convolution (applying a 2D filter to an image) using shared memory in CUDA. I checked the examples of the SDK, but apparently
convolutionTexture example does not use shared memory...
convolutionTexture example, in the SDK says:
/* * This sample implements the same algorithm as the convolutionSeparable * CUDA SDK sample, but without using the shared memory at all. * Instead, it uses textures in exactly the same way an OpenGL-based * implementation would do. * Refer to the "Performance" section of convolutionSeparable whitepaper. */
I'm trying to make a real-time application. And I will use the convolution (with different filters) in my project very often. (More than 100 times for each image.) I heard that the fastest memory access happens with shared memory. So, what if I use shared memory instead of this approach; would I have any performance advantage? What I mean by using the shared memory is: in the first time that kernel launchs; put the image to the
shared memory, then use it instead of the
texture afterwards ...
If you think I will have an performance advantage; how can I do so?