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Region of Interest Generation in Dynamic Environments Using Local Entropy Fields

机译:动态环境中使用局部熵场生成感兴趣区域

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This paper presents a novel technique to generate regions of interest in image sequences containing independent motions. The technique uses a novel motion segmentation method to segment optical flow using a local entropies field. Local entropy values are computed for each optical flow vector and are collected as input for a two state Markov Random Field that is used to discriminate the motion boundaries. Local entropy values are highly informative cues on the amount of information contained in the vector's neighborhood. High values represent significative motion differences, low values express uniform motions. For each cluster a motion model is fitted and it is used to create a multiple hypothesis prediction for the following frame. Experiments have been performed on standard and outdoor datasets in order to show the validity of the proposed technique.
机译:本文提出了一种新技术,可以在包含独立运动的图像序列中生成目标区域。该技术使用一种新颖的运动分割方法,使用局部熵场对光流进行分割。为每个光流矢量计算局部熵值,并将其收集为用于区分运动边界的两种状态马尔可夫随机场的输入。局部熵值是向量邻域中包含的信息量的高度有用的线索。高值表示明显的运动差异,低值表示匀速运动。对于每个聚类,都拟合了一个运动模型,并使用该模型为下一帧创建了多个假设预测。为了证明所提出技术的有效性,已经对标准和室外数据集进行了实验。

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