WU Yiquan, PAN Zhe. Fast Recursive Two-dimensional Maximum between-cluster Average Deviation Thresholding Algorithms[J]. Journal of Image and Graphics, 2009, 14(3): 471. DOI: 10.11834/jig.20090315.
Fast Recursive Two-dimensional Maximum between-cluster Average Deviation Thresholding Algorithms
Thresholding is one of the widely used and efficient techniques for image segmentation in digital image processing. Threshold selection is crucial to thresholding. The maximum between-cluster variance algorithm based on L2-Norm
which was proposed by Otsu
is one of the most famous methods. And the maximum between-cluster average deviation thresholding algorithm based on L1 -Norm is simpler and has good performance. The two-dimensional maximum between-cluster average deviation thresholding algorithm
which has high accuracy of segmentation and good resistance to noise
has better performance than the maximum between-cluster variance algorithm
but the two-dimensional algorithm requires a large amount of computation and is impractical in applications. In this paper
two fast recursive two-dimensional maximum between-cluster average deviation thresholding algorithms are proposed
whose computational complexities are only O(L2)
while the computational complexity of the original1 algorithm is O(L4) . Using those two recursive algorithms
the results and processing time of the two-dimensional maximum between-cluster average deviation thresholding algorithm are given
which are compared with the original algorithm. Experimental results show that both of those two recursive algorithms can greatly reduce the processing time
which is only 0.1% of that of the original algorithm. Currently the proposed algorithms have been used in automatic infrared target
vehicle license plate and fingerprint recognition system.