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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Clustering in video data: Dealing with heterogeneous semantics of features
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Clustering in video data: Dealing with heterogeneous semantics of features

机译:视频数据中的聚类:处理特征的异构语义

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摘要

Unsupervised clustering is an important tool to analyze video data. Selection of an appropriate clustering scheme is governed by the suitability of the clusters it produces. It is difficult to formulate cluster suitability criteria for a domain where different feature attributes have different meanings. We propose a novel Clustering strategy, tailored towards the specific requirements Of Clustering in video data, Our clustering methodology decouples clustering along different feature components. Our scheme chooses the clustering model so as to meet the requirements of clustering in video data. The clusters obtained from our scheme reasonably model the homogeneous color regions in a video scene in both space and time. The space-time clusters obtained by our clustering methodology can be subsequently grouped together to compose meaningful objects. Experimental comparison of our results with existing clustering techniques clearly show that our scheme takes care of many of the problems with traditional clustering schemes applied to the heterogeneous feature space of video. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:无监督群集是分析视频数据的重要工具。选择合适的聚类方案取决于其产生的聚类的适用性。对于不同特征属性具有不同含义的域,很难制定聚类适合性标准。我们提出了一种新颖的聚类策略,针对视频数据中的聚类的特定需求量身定制,我们的聚类方法将聚类沿着不同的特征分量分离。我们的方案选择聚类模型以满足视频数据中聚类的要求。从我们的方案中获得的聚类可以合理地对视频场景中的时空均匀色彩区域进行建模。通过我们的聚类方法获得的时空聚类可以随后组合在一起以构成有意义的对象。实验结果与现有聚类技术的实验比较清楚地表明,我们的方案解决了应用于视频异类特征空间的传统聚类方案的许多问题。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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