期刊文献+

基于关键帧提取的最近特征线(NFL)聚类算法的镜头检索方法 被引量:9

Key-Frame ExtractionBased Improved Nearest Feature Line(NFL) Classification Algorithm
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摘要 提出了一种新的聚类方法来支持基于图像或镜头例子的检索 .这种方法以最近特征线 (Nearest FeatureL ine,NFL)聚类方法为基础 ,并根据最近特征线方法的特征 ,将基于特征空间拐点的关键帧提取过程与聚类方法作为一个整体统一考虑 ,从而使得最近特征线方法性能达到最优 .实验结果表明 ,我们的基于关键帧提取的最近特征线方法与传统的最近特征线方法、最近邻法以及最近中心法相比较 。 Query by image or video examples is a convenient and effective way to search in video database. This paper proposes a new scheme to support such searches. The main contribution of the proposed scheme lies in considering both the feature extraction and distance computation in feature space together. The distance definition in this paper is a new metric named as Nearest Feature Line (NFL), and the feature to represent a video shot is key frames. So the break point based key frames extraction is combined with the NFL method to achieve a better performance. Experimental results have shown that the combined method achieves superior performance than the traditional NFL, and other classification methods such as Nearest Neighbor (NN) and Nearest Center (NC).
出处 《计算机学报》 EI CSCD 北大核心 2000年第12期1292-1296,共5页 Chinese Journal of Computers
关键词 最近特征线 关键帧提取 颜色直方图 聚类算法 content based retrieval, Nearest Feature Line(NFL), key frame extraction, color histog
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参考文献6

  • 1Li S Z,IEEE Transactions Speed Audio Processing,2000年,8卷,5期,619页
  • 2Li S Z,IEEE Trans Neural Networks,1999年,10卷,2期,439页
  • 3Zhang H J,Pattern Recognition,1997年,30卷,4期,643页
  • 4Zhong D,Proceeding of the Int Conference on Image Processing,1997年,1卷,21页
  • 5Deng Y,Proceedings of the International Conference on Image Processing,1997年,2卷,13页
  • 6Yeung M M,Proceeding of the International Conference on ImageProcessing,1995年,1卷,338页

同被引文献93

  • 1彭宇新,Ngo Chong-Wah,肖建国.一种基于二分图最优匹配的镜头检索方法[J].电子学报,2004,32(7):1135-1139. 被引量:13
  • 2胡荣,罗庆云.kNN算法在文本分类中的改进[J].南华大学学报(自然科学版),2005,19(3):78-80. 被引量:4
  • 3曹建荣,蔡安妮.基于相关反馈的视频检索算法[J].吉林大学学报(信息科学版),2006,24(2):138-143. 被引量:1
  • 4方勇,戚飞虎,冉鑫.基于窗帧差的镜头边界系数模型及其应用[J].电子学报,2006,34(5):810-816. 被引量:6
  • 5SEBASTIANI F. Machine Learning in Automated Text Categorization[ J]. ACM Computing Surveys,2002,34( 1 ) :1 -47.
  • 6Lknson R W, Hngston P. Using the Cosine measure in a neural network for document retrieval. Proceedings of the ACM SIGIR Conference on Research and Development in Information Retrieval, Chicago, Illinois, USA, ACM, 1991, 202 -210.
  • 7Rui Y, Huang T S. Relevance feedback: a power tool for interactive content-based image retrieval. IEEE Transactions on Circuits and Systems for Video Technology, 1998, 8(5) :644-655.
  • 8Cox I J, Miller M L, Minka T P, PaPathoms T V, Yianilos P N. PicHunter: Bayesian relevance feedback for image retrieval. Proceedings of the International Conference on Pattern Recognition, 1996,3:362-369.
  • 9Vasconcelos N, Lippman A. Bayesian relevance feedback for content-based image retrieval. Proceedings of IEEE Workshop on Content-Based Access to Image and Video Libraries, South Carolina,2000,63-67.
  • 10Munesawang P, Ling G. Adaptive video indexing and automatic/semi-automatic relevance feedback. IEEE Transactions on Circuits and Systems for Video Technology,2005, 15 ( 8 ) : 1032-1046.

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