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EFFICIENT IMAGE SEGMENTATION FOR SEMANTIC OBJECT GENERATION 被引量:1
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作者 Chen Xiaotang Yu Yinglin (Dept. of Comm. & Info. Eng., South China Univ. of Technology, Guangzhou 510640) 《Journal of Electronics(China)》 2002年第4期420-425,共6页
This letter presents an efficient and simple image segmentation method for semantic object spatial segmentation. First, the image is filtered using contour-preserving filters. Then it is quasi-flat labeled. The small ... This letter presents an efficient and simple image segmentation method for semantic object spatial segmentation. First, the image is filtered using contour-preserving filters. Then it is quasi-flat labeled. The small regions near the contour are classified as uncertain regions and are eliminated by region growing and merging. Further region merging is used to reduce the region number. The simulation results show its efficiency and simplicity. It can preserve the semantic object shape while emphasize on the perceptual complex part of the object. So it conforms to the human visual perception very well. 展开更多
关键词 Image segmentation Semantic object Contour-preserving noise filtering Quasi-flat regions labeling region merging
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SOFT IMAGE SEGMENTATION BASED ON CENTER-FREE FUZZY CLUSTERING 被引量:2
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作者 马儒宁 朱燕 丁军娣 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI 2013年第1期67-76,共10页
Image segmentation remains one of the major challenges in image analysis.And soft image segmentation has been widely used due to its good effect.Fuzzy clustering algorithms are very popular in soft segmentation.A new ... Image segmentation remains one of the major challenges in image analysis.And soft image segmentation has been widely used due to its good effect.Fuzzy clustering algorithms are very popular in soft segmentation.A new soft image segmentation method based on center-free fuzzy clustering is proposed.The center-free fuzzy clustering is the modified version of the classical fuzzy C-means ( FCM ) clustering.Different from traditional fuzzy clustering , the center-free fuzzy clustering does not need to calculate the cluster center , so it can be applied to pairwise relational data.In the proposed method , the mean-shift method is chosen for initial segmentation firstly , then the center-free clustering is used to merge regions and the final segmented images are obtained at last.Experimental results show that the proposed method is better than other image segmentation methods based on traditional clustering. 展开更多
关键词 soft image segmentationl fuzzy clusteringl center-free clusteringI region merging
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Improved accuracy of superpixel segmentation by region merging method
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作者 Song ZHU Danhua CAO +1 位作者 Yubin WU Shixiong JIANG 《Frontiers of Optoelectronics》 EI CSCD 2016年第4期633-639,共7页
Superpixel as an important pre-processing technique has been successfully used in many vision applications. In this paper, we proposed a region merging method to improve superpixel segmentation accuracy with low compu... Superpixel as an important pre-processing technique has been successfully used in many vision applications. In this paper, we proposed a region merging method to improve superpixel segmentation accuracy with low computational cost. We first segmented the image into many accurate small regions, and then progressively agglomerated them until the desired region number was reached. The region merging weight was derived from a novel energy function, which encourages the superpixel with color consistency and similar size. Experimental results on the Berkeley BSDS500 data set showed that our region merging method can significantly improve the accuracy of superpixel segmentation. Moreover, the region merging method only need 50ms to process a 481x321 image on a single Intel i3 CPU at 2.5 GHz. 展开更多
关键词 image processing image segmentation super-pixels region merging
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Image segmentation method for coal particle size distribution analysis 被引量:5
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作者 Feiyan Bai Minqiang Fan +1 位作者 Hongli Yang Lianping Dong 《Particuology》 SCIE EI CAS CSCD 2021年第3期163-170,共8页
Particle size distribution is extremely important in the coal preparation industry.It is traditionally analysed by a manual screening method,which is relatively time-consuming and cannot immediately guide production.I... Particle size distribution is extremely important in the coal preparation industry.It is traditionally analysed by a manual screening method,which is relatively time-consuming and cannot immediately guide production.In this paper,an image segmentation method for images of coal particles is proposed.It employs the watershed algorithm,k-nearest neighbour algorithm,and convex shell method to achieve preliminary segmentation,merge small pieces with large pieces,and split adhered particles,respectively.Comparing the automated segmentation using this method with manual segmentation,it is found that the results are comparable.The size distributions obtained by the automated and manual segmentation methods are nearly identical,and the standard deviation is less than 3%,indicating good reliability.This automated image segmentation method provides a new approach for rapidly analysing the size distribution of coal particles with size fractions defined according to consumer requirements. 展开更多
关键词 Particle size distribution Image segmentation Watershed algorithm using gradient KNN algorithm region merging Convex shell
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