Title
GPU-based iterative relative fuzzy connectedness image segmentation
Abstract
This paper presents a parallel algorithm for the top of the line among the fuzzy connectedness algorithm family, namely the iterative relative fuzzy connectedness (IRFC) segmentation method. The algorithm of IRFC, realized via image foresting transform (IFT), is implemented by using NVIDIA's compute unified device architecture (CUDA) platform for segmenting large medical image data sets. In the IRFC algorithm, there are two major computational tasks: (i) computing the fuzzy affinity relations, and (ii) computing the fuzzy connectedness relations and tracking labels for objects of interest. Both tasks are implemented as CUDA kernels, and a substantial improvement in speed for both tasks is achieved. Our experiments based on three data sets of small, medium, and large data size demonstrate the efficiency of the parallel algorithm, which achieves a speed-up factor of 2.4x, 17.0x, and 42.7x, correspondingly, for the three data sets on the NVIDIA Tesla C1060 over the implementation of the algorithm in CPU.
Year
DOI
Venue
2012
10.1117/12.911794
Proceedings of SPIE
Keywords
Field
DocType
Image segmentation,fuzzy connectedness,graph-based methods,GPU implementations
Computer vision,Data set,Parallel algorithm,CUDA,Computer science,Segmentation,Fuzzy logic,Image processing,Image segmentation,Fuzzy connectedness,Artificial intelligence
Conference
Volume
ISSN
Citations 
8316
0277-786X
1
PageRank 
References 
Authors
0.38
12
6
Name
Order
Citations
PageRank
Ying Zhuge134120.08
Jayaram K. Udupa22481322.29
Krzysztof Ciesielski329629.71
Alexandre X. Falcão41877132.30
Paulo A. V. Vechiatto Miranda531326.26
Robert W. Miller631.48