Paper
15 November 2007 Adaptive K-means clustering algorithm
Hailin Chen, Xiuqing Wu, Junhua Hu
Author Affiliations +
Proceedings Volume 6788, MIPPR 2007: Pattern Recognition and Computer Vision; 67882A (2007) https://doi.org/10.1117/12.750002
Event: International Symposium on Multispectral Image Processing and Pattern Recognition, 2007, Wuhan, China
Abstract
Clustering is a fundamental problem for a great variety fields such as pattern recognition, computer vision. A popular technique for clustering is based on K-means. However, it suffers from the four main disadvantages. Firstly, it is slow and scales poorly on the time. Secondly, it is often impractical to expect a user to specify the number of clusters. Thirdly, it may find worse local optima. Lastly, its performance heavily depends on the initial clustering centers. To overcome the above four disadvantages simultaneously, an effectively adaptive K-means clustering algorithm (AKM) is proposed in this paper. The AKM estimates the correct number of clusters and obtains the initial centers by the segmentation of the norm histogram in the linear normed space consisting of the data set, and then performs the local improvement heuristic algorithm for K-means clustering in order to avoid the local optima. Moreover, the kd-tree is used to store the data set for improving the speed. The AKM was tested on the synthetic data sets and the real images. The experimental results demonstrate the AKM outperforms the existing methods.
© (2007) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Hailin Chen, Xiuqing Wu, and Junhua Hu "Adaptive K-means clustering algorithm", Proc. SPIE 6788, MIPPR 2007: Pattern Recognition and Computer Vision, 67882A (15 November 2007); https://doi.org/10.1117/12.750002
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Cited by 7 scholarly publications.
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KEYWORDS
Data centers

Image segmentation

Error analysis

Detection and tracking algorithms

Neodymium

Pattern recognition

Picosecond phenomena

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