Rek-Means: A k-Means Based Clustering Algorithm
نویسندگان
چکیده
In this paper we present a new clustering method based on k-means that has been implemented on a video surveillance system. Rekmeans does not require to specify in advance the number of clusters to search for and is more precise than k-means in clustering data coming from multiple Gaussian distributions with different co-variances, while maintaining real-time performance. Experiments on real and synthetic datasets are presented to measure the effectiveness and the performance of the proposed method.
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