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Am I binding the texture correctly?

I'm trying to come up with a way to do 2d layered texture fetching, but I'm using a GPU with compute capability 1.2. After a bit a research I found that the function tex2DLayered is not supported for devices with compute capability less than 2.X

My first thought was to just write a for loop around my kernel. On each iteration I'll copy the next layer to the device memory, bind it to the texture, run the kernel, unbind, then go to the next layer.

Unfortunately, I seem to be getting some unexpected results.

My theories right now are that I'm either:

A. Not binding the texture correctly.

B. Not unbinding/loading next layer correctly

C. What I'm trying to do isn't possible given my GPU.

Here's what I've got so far

// Define the texture type
texture<float,cudaTextureType2D,cudaReadModeElementType> texRef;

// Here's the kernel showing the texture fetch
__global__ void kernel_call(...) {
    ....
    if (iproj < nVoxels) {
    ...
        voxVal = tex2D(texRef,U2,V2);
    ...
    }

}

void main() {

...

    host_result = (float *)malloc(width*height*slice*sizeof(float));
    cudaMalloc((void**)&dev_result,width*height*slice*sizeof(float));

    cudaChannelFormatDesc channelDesc = cudaCreateChannelDesc<float>();

    cudaMallocPitch((void**)&dev_slice, &pitch, 
        (int)sliceWidth*sizeof(float), (int)sliceHeight);

    cudaMemcpy(dev_result, host_result, 
        width*height*slice*sizeof(float),cudaMemcpyHostToDevice);

    for (t=0; t<numSlices; t++) {

        cudaMemcpy2D(dev_slice,(int)sliceWidth*sizeof(float),
                &layeredData[(int)(sliceWidth*sliceHeight)*t],
                pitch,(int)sliceWidth*sizeof(float),
                sliceHeight,cudaMemcpyHostToDevice);

        cudaBindTexture2D( NULL, texRef,
            dev_slice,
            channelDesc, sliceWidth, sliceHeight,
            (int)sliceWidth*sizeof(float) );

            texRef.filterMode = cudaFilterModeLinear;
            texRef.addressMode[0] = cudaAddressModeClamp; 
            texRef.addressMode[1] = cudaAddressModeClamp;
            texRef.normalized = false;   

            ...
            kernel_call<<<blocksPerGrid, threadsPerBlock>>> (...);  
            ...


            cudaUnbindTexture(texRef);

    } // End slice loop 

    cudaMemcpy(host_result,dev_result, 
        width*height*slice*sizeof(float),cudaMemcpyDeviceToHost);

    // Copy out data
    for (idat=0; idat<width*height*slice; idat++) {
        vox[idat] = host_result[idat];
    }
} // End Main
share|improve this question
    
Do you really need copy all the slides from host to device at each iteration? –  pQB Nov 29 '11 at 10:22
    
Nope, I don't need to do that, thanks for pointing that out. I've corrected the code in the original post. –  greenlegacy Nov 30 '11 at 4:33
    
There are vars missing in your code. Where is layeredData defined? Although one might guess, where do you store the results?. cudaMemcpy(dev_result, host_result, ... seems pointless. –  pQB Nov 30 '11 at 8:53
    
Nevermind, I figured out my bug. Classic case of garbage in = garbage out. I had defined by function to accept float as an input for layeredData, but I was reading in a double. –  greenlegacy Dec 1 '11 at 5:12

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