吸收马尔可夫链的显著性检测

Bowen Jiang, L. Zhang, Huchuan Lu, Chuan Yang, Ming-Hsuan Yang
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引用次数: 585

摘要

本文利用吸收马尔可夫链的方法,在图像图模型上实现显著性检测。我们共同考虑显著目标与背景的外观差异和空间分布。选取虚边界节点作为马尔可夫链中的吸收节点,计算每个暂态节点到边界吸收节点的吸收时间。瞬态节点的吸收时间衡量其与所有吸收节点的全局相似度,因此当吸收时间作为度量时,可以一致地将显著目标从背景中分离出来。由于瞬态节点到吸收节点的时间依赖于路径上的权值及其空间距离,因此图像中心的背景区域可能比较突出。我们进一步利用遍历马尔可夫链中的平衡分布来减少远程平滑背景区的吸收时间。在四个基准数据集上进行的大量实验表明,该方法相对于最先进的方法具有鲁棒性和效率。
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Saliency Detection via Absorbing Markov Chain
In this paper, we formulate saliency detection via absorbing Markov chain on an image graph model. We jointly consider the appearance divergence and spatial distribution of salient objects and the background. The virtual boundary nodes are chosen as the absorbing nodes in a Markov chain and the absorbed time from each transient node to boundary absorbing nodes is computed. The absorbed time of transient node measures its global similarity with all absorbing nodes, and thus salient objects can be consistently separated from the background when the absorbed time is used as a metric. Since the time from transient node to absorbing nodes relies on the weights on the path and their spatial distance, the background region on the center of image may be salient. We further exploit the equilibrium distribution in an ergodic Markov chain to reduce the absorbed time in the long-range smooth background regions. Extensive experiments on four benchmark datasets demonstrate robustness and efficiency of the proposed method against the state-of-the-art methods.
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