1 research outputs found
High Performance Canny Edge Detector using Parallel Patterns for Scalability on Modern Multicore Processors
Canny Edge Detector (CED) is an edge detection operator commonly used by most
Image Feature Extraction (IFE) Algorithms and Image Processing Applications.
This operator involves the use of a multi-stage algorithm to detect edges in a
wide range of images. Edge detection is at the forefront of image processing
and hence, it is crucial to have at an up to scale level. Multicore Processors
have emerged as the next solution for tackling compute intensive tasks that
have a high demand for computational power. Having significant changes that
restructured the microprocessor industry, it is evident that the best way to
promote efficiency and improve performance is no longer by increasing the clock
speeds on traditional monolithic processors but by adopting and utilizing
Processors with Multicore architectures. In this paper we provide a high
performance implementation of Canny Edge Detector using parallel patterns for
improved performance and Scalability on Multicore Processors. The results show
significant improvements in overall performance and this proves that our
implementation using parallel patterns does not under utilize resources but
scales well for multicore processors.Comment: 8 Pages, 13 figures, 4 Sections, Algorithm listing, Mathematical
model