Tao XU, Song-min JIA, Guo-liang ZHANG. Salient subtle region accurate detection via cellular automata multi-scale optimization[J]. Optics and precision engineering, 2017, 25(5): 1312-1321.
DOI:
Tao XU, Song-min JIA, Guo-liang ZHANG. Salient subtle region accurate detection via cellular automata multi-scale optimization[J]. Optics and precision engineering, 2017, 25(5): 1312-1321. DOI: 10.3788/OPE.20172505.1312.
Salient subtle region accurate detection via cellular automata multi-scale optimization
Aiming at failure detection problems on subtle region caused by saliency differences of detected target in local region
under the framework of Bayesian theory
the author proposed a novel salient region detection method based on cellular automata multi-scale optimization. Firstly
the prior information about dark channel was integrated with regional contrast to separately construct original salient maps in five superpixel scale spaces on the same picture; and then the cellular automata was used to establish a dynamic updating mechanism and impact factor matrix and confidence matrix were applied to optimize influences of each cellular in next state. As a result
the saliency values of all cells will be renovated simultaneously according to the proposed updating rule
and five optimized salient maps were obtained; finally
under the framework of fusion algorithm in Bayesian theory
the final saliency map was obtained. The experiment on two standard image datasets with different complexity was conducted
and experimental result indicates that the performance of proposed algorithm is superior to other ten existing salient region detection algorithms both in visual effect and in objective quantitative comparison. Especially on the most challenging DUT-OMRON data base
the aggregative indicator
F
-measure value of proposed algorithm is 0.631 4
and mean absolute error (MAE) is 0.132 5 and ROC area under the curve (AUC) is 0.892 8
indicating that the algorithm has higher accuracy and robustness.
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references
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