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对立色LBP模型的目标跟踪 被引量:6

Object tracking with opponent color LBP model
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摘要 目标表示方法对跟踪方法的鲁棒性有着重要影响。将对立色局部二值模式(OCLBP)纹理算子作为研究对象引入目标表示。通过分析不同颜色通道之间的相关性和OCLBP的10种纹理模式的表征能力,选择目标候选区域中具有OCLBP的7种主要模式的关键点的纹理直方图作为目标模型。最后将该目标表示方法嵌入到MeanShift框架中,进行目标跟踪。实验结果表明,提出的基于OCLBP主要模式的目标表示方法显著提高了Mean Shift目标跟踪方法的性能。 The target representation method of a tracked target has great influence on the robustness of the tracking algorithm. In this paper, we introduce a new texture feature called Opponent Color Local Binary Patterns (OCLBP). By analyzing the cor- relation among different color channels and all the ten texture patterns of the OCLBP, we select the texture histogram of the key points which correspond to only the seven major patterns of the OCLBP to represent the target candidate region. Finally, this mod- el is integrated into the mean shift framework for object tracking. The experimental results illustrate that the proposed major OCLBP patterns based method can significantly improve the performance of Mean Shift object tracking algorithm.
出处 《中国图象图形学报》 CSCD 北大核心 2012年第11期1418-1424,共7页 Journal of Image and Graphics
基金 国家自然科学基金项目(61003151) 中央高校基本科研业务费专项资金(QN2009091) 西北农林科技大学国际合作项目
关键词 目标跟踪 均值漂移 对立色局部二值模式 关键点 object tracking Mean Shift OCLBP key points
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参考文献14

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