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An iterative approach for obtaining multi-scale superpixels based on stochastic graph contraction operations

机译:一种基于随机图压缩操作的多尺度超像素迭代方法

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Superpixels have many applications in visual information processing, and can be used to reduce redundant information of an image, as well as the computational complexity of other expensive tasks (e.g., image segmentation). In this work, an iterative hierarchical stochastic graph contraction (IHSGC) method for multi-scale superpixels generation is proposed. A stochastic strategy is used to generate multi-scale superpixels, and each superpixel is represented by a hierarchical tree and describes an image patch at fine and coarse scales simultaneously. The proposed method consists of two main steps. The first step initializes the method based on a multi-channel unsupervised stochastic over-segmentation at the pixel level. The proposed over-segmentation scheme actually performs hierarchical stochastic clustering of visual features (i.e. pixels, image patches, and potentially can be applied to other visual features as well), while preserving the local spatial relationships across different scales. The second step consists of an iterative hierarchical stochastic graph contraction method. Coarser scales are generated by graph contractions until the desired number of superpixels is obtained. The experimental results based on the popular Berkeley segmentation databases BSDS300 and BSDS500 suggest that the proposed approach potentially can perform better than comparative state-of-the-art methods in terms of boundary recall and under-segmentation error. (C) 2018 Elsevier Ltd. All rights reserved.
机译:超像素在视觉信息处理中具有许多应用,并且可以用于减少图像的冗余信息以及其他昂贵任务的计算复杂性(例如,图像分割)。在这项工作中,提出了一种用于多尺度超像素生成的迭代层次随机图收缩(IHSGC)方法。随机策略用于生成多尺度超像素,每个超像素由层次树表示,并同时以精细和粗糙尺度描述图像块。所提出的方法包括两个主要步骤。第一步基于像素级别的多通道无监督随机过度细分来初始化该方法。所提出的过度分割方案实际上执行视觉特征(即,像素,图像斑块的分层随机聚类,并且可能还可以应用于其他视觉特征),同时保留不同尺度上的局部空间关系。第二步由迭代分层随机图收缩方法组成。通过图形收缩生成更粗的标度,直到获得所需数量的超像素。基于流行的Berkeley分割数据库BSDS300和BSDS500的实验结果表明,在边界召回和分割不足方面,所提出的方法的性能可能会优于最新技术。 (C)2018 Elsevier Ltd.保留所有权利。

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