Region Proposal Generation: A Hierarchical Merging Similarity-Based Algorithm

M. Taghizadeh, A. Chalechale
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引用次数: 3

Abstract

This paper presents a hierarchical algorithm using region merging with the aim of achieving a powerful pool of regions for solving computer vision problems. An image is first represented by a graph where each node in the graph is a superpixel. A variety of features is extracted of each region, which is next merged to neighbor regions according to the new algorithm. The proposed algorithm combines adjacent regions based on a similarity metric and a threshold parameter. By applying different amounts for the threshold, a wide range of regions is acquired. The algorithm successfully provides accurate regions while can be represented through the bounding box and segmented candidates. To extensively evaluate, the effectiveness of features and the combination of them are analyzed on MSRC and VOC2012 Segmentation dataset. The achieved results are shown a great improvement at overlapping in comparison to segmentation algorithms. Also, it outperforms previous region proposal algorithms, especially it leads to a relatively great recall at higher overlaps (≥ 0.6).
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区域提议生成:一种基于层次合并相似度的算法
本文提出了一种利用区域合并的分层算法,目的是获得一个强大的区域池来解决计算机视觉问题。图像首先由图表示,图中的每个节点都是一个超像素。每个区域提取各种特征,然后根据新算法将其合并到相邻区域。该算法基于相似度度量和阈值参数组合相邻区域。通过应用不同的阈值,可以获得大范围的区域。该算法成功地提供了精确的区域,同时可以通过边界框和分割的候选区域来表示。为了广泛评估,在MSRC和VOC2012分割数据集上分析了特征及其组合的有效性。与分割算法相比,所获得的结果在重叠方面有很大的改进。此外,它优于以前的区域建议算法,特别是在较高的重叠(≥0.6)下具有相对较高的召回率。
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