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引用次数: 3

摘要

无监督视频对象分割是一个具有挑战性的问题,因为它涉及大量的数据和对象的外观可能会随着时间的推移而发生显著变化。本文提出了一种自下而上的目标分割和运动分割相结合的方法,该方法使用一种新的图形模型,该模型被表述为条件随机场(CRF)模型中的推理。该模型将目标标记和轨迹聚类结合在一个统一的概率框架中。CRF包含表示图像像素类标号的二值变量和表示轨迹聚类正确性的二值变量,融合了密集的局部交互和稀疏的全局约束。提出了一种基于坐标上升式过程的优化方案来解决推理问题。我们通过比较其他视频和运动分割算法来评估我们提出的框架。我们的方法在最先进的基准数据集上实现了改进的性能。
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Video segmentation with joint object and trajectory labeling
Unsupervised video object segmentation is a challenging problem because it involves a large amount of data and object appearance may significantly change over time. In this paper, we propose a bottom-up approach for the combination of object segmentation and motion segmentation using a novel graphical model, which is formulated as inference in a conditional random field (CRF) model. This model combines object labeling and trajectory clustering in a unified probabilistic framework. The CRF contains binary variables representing the class labels of image pixels as well as binary variables indicating the correctness of trajectory clustering, which integrates dense local interaction and sparse global constraint. An optimization scheme based on a coordinate ascent style procedure is proposed to solve the inference problem. We evaluate our proposed framework by comparing it to other video and motion segmentation algorithms. Our method achieves improved performance on state-of-the-art benchmark datasets.
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