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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >An Efficient Scene-Break Detection Method Based on Linear Prediction With Bayesian Cost Functions
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An Efficient Scene-Break Detection Method Based on Linear Prediction With Bayesian Cost Functions

机译:基于贝叶斯成本函数的线性预测的高效场景破损检测方法

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摘要

This paper describes an efficient approach to scene-break detection, which can detect cuts, dissolves, and wipes reliably and effectively by means of temporally linear prediction models. In our algorithm, two linear prediction models are adopted to predict a current frame: one for dissolves, and the other for stationary scenes. The predicted frames, derived based on the two models, are compared with the original frames, and cuts and dissolves are then determined based on Bayesian cost functions. For the detection, our algorithm requires the setting of a single threshold only. In wipe detection, our linear prediction models are employed to detect areas of change between two successive frames. By accumulating the changed areas and the overlap of the changed areas over the successive frames, wipes of an arbitrary shape and direction are detected. Experimental results show that our algorithm can achieve a high level of precision even if a video contains object motion and camera motion. The detection time required to analyze a 38-min video is no more than several seconds.
机译:本文介绍了一种有效的场景中断检测方法,该方法可以通过时间线性预测模型可靠而有效地检测剪切,溶解和擦除。在我们的算法中,采用了两种线性预测模型来预测当前帧:一个用于溶解,另一个用于平稳场景。将基于两个模型得出的预测框架与原始框架进行比较,然后基于贝叶斯成本函数确定切割和溶解。对于检测,我们的算法仅需要设置单个阈值。在划像检测中,我们的线性预测模型用于检测两个连续帧之间的变化区域。通过累积变化的区域和变化的区域在连续帧上的重叠,检测到任意形状和方向的擦拭物。实验结果表明,即使视频包含物体运动和摄像机运动,我们的算法也可以实现较高的精度。分析38分钟的视频所需的检测时间不超过几秒钟。

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