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Saliency Detection via Absorbing Markov Chain With Learnt Transition Probability

机译:通过吸收马尔可夫链和学习的转移概率进行显着性检测

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摘要

In this paper, we propose a bottom-up saliency model based on absorbing Markov chain (AMC). First, a sparsely connected graph is constructed to capture the local context information of each node. All image boundary nodes and other nodes are, respectively, treated as the absorbing nodes and transient nodes in the absorbing Markov chain. Then, the expected number of times from each transient node to all other transient nodes can be used to represent the saliency value of this node. The absorbed time depends on the weights on the path and their spatial coordinates, which are completely encoded in the transition probability matrix. Considering the importance of this matrix, we adopt different hierarchies of deep features extracted from fully convolutional networks and learn a transition probability matrix, which is called learnt transition probability matrix. Although the performance is significantly promoted, salient objects are not uniformly highlighted very well. To solve this problem, an angular embedding technique is investigated to refine the saliency results. Based on pairwise local orderings, which are produced by the saliency maps of AMC and boundary maps, we rearrange the global orderings (saliency value) of all nodes. Extensive experiments demonstrate that the proposed algorithm outperforms the state-of-the-art methods on six publicly available benchmark data sets.
机译:在本文中,我们提出了一个基于吸收马尔可夫链(AMC)的自下而上的显着性模型。首先,构造一个稀疏连接图以捕获每个节点的本地上下文信息。所有图像边界节点和其他节点分别被视为吸收马尔可夫链中的吸收节点和瞬态节点。然后,从每个暂态节点到所有其他暂态节点的预期次数可用于表示该节点的显着性值。吸收的时间取决于路径上的权重及其空间坐标,它们在过渡概率矩阵中已完全编码。考虑到该矩阵的重要性,我们采用了从完全卷积网络中提取的不同深度特征层次,并学习了一个转移概率矩阵,称为学习转移概率矩阵。尽管性能得到了显着提升,但是突出对象并不能很好地统一突出显示。为了解决这个问题,研究了一种角度嵌入技术以改善显着性结果。基于AMC的显着图和边界图生成的成对局部排序,我们重新排列所有节点的全局排序(显着值)。大量实验表明,在六个可公开获得的基准数据集上,该算法优于最新方法。

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