Memory Efficient Multi-Scale Line Detector Architecture for Retinal Blood Vessel Segmentation
December 06, 2016 Β· Declared Dead Β· π 2016 Conference on Design and Architectures for Signal and Image Processing (DASIP)
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Authors
Hamza Bendaoudi, Farida Cheriet, J. M. Pierre Langlois
arXiv ID
1612.09524
Category
cs.CV: Computer Vision
Cross-listed
cs.AR
Citations
4
Venue
2016 Conference on Design and Architectures for Signal and Image Processing (DASIP)
Last Checked
4 months ago
Abstract
This paper presents a memory efficient architecture that implements the Multi-Scale Line Detector (MSLD) algorithm for real-time retinal blood vessel detection in fundus images on a Zynq FPGA. This implementation benefits from the FPGA parallelism to drastically reduce the memory requirements of the MSLD from two images to a few values. The architecture is optimized in terms of resource utilization by reusing the computations and optimizing the bit-width. The throughput is increased by designing fully pipelined functional units. The architecture is capable of achieving a comparable accuracy to its software implementation but 70x faster for low resolution images. For high resolution images, it achieves an acceleration by a factor of 323x.
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