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Published byDeirdre Parks Modified over 9 years ago
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Parallel Edge Detection Daniel Dobkin Asaf Nitzan
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Introduction to Image Processing What are edges? Why do we need to find them? How do we find them? Motivation to parallelize this process OpenMP implementation We’ll talk about…
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2-D / 3-D array of pixels Color channels RGB – 3 channels Grayscale – 1 channel 1 byte per channel values of 0-255 What is an image?
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A closer look at pixels R = 225 G = 157 B = 168 R = 201 G = 120 B = 137
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Edges A sharp change in values of adjacent pixels Motivation to find edges A very basic feature in image processing
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First, convert image from RGB to Grayscale Convolve the image with a special 2-D operator A greater change in intensity indicates a more prominent edge Sobel operator: Finding Edges
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21722144 213132 2432 Finding Edges - Example For Sobel x filter: -617 For Sobel y filter: -669
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Large amount of computations 800 x 600 pixels = 480,000 pixels 5.5 million additions, 2 million multiplications Especially when it comes to real-time video… 24 fps = 11.5 million pixels 132 million additions, 48 million multiplications… Motivation to Parallelize
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Processors access same shared memory Each processor performs the region of image assigned to him Reduced communication - There is no need to broadcast the pixels of the image to all other processors openMP
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A B C D openMP Implementation A B C D Master thread Parallel task – Sobel filtering fork join Multithreading Master thread forks a number of threads which execute code in parallel Original Image
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Load Image from Main memory Allocate memory to new image Set number of threads #pragma omp parallel for \ shared(inputImage, outputImage, width, height)\ private(StartPixel, NumOfThreads, Rank, xPixel, yPixel) for each Pixel in region Convert RGB value to greyscale Compute gradient using Sobel filter Store result in filtered image Join all threads Store new image to disk Pseudocode
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openMP Implementation A B C D Original Image Processor 1 Processor 2 Processor 3 Processor 4 Sobel A B C D Filtered Image Main Memory
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Speedup Graph Linear Speedup due to low communication cost http://www.cs.rit.edu/~ptt/courses/4003-531/
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