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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Multiple instance subspace learning via partial random projection tree for local reflection symmetry in natural images
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Multiple instance subspace learning via partial random projection tree for local reflection symmetry in natural images

机译:通过局部随机投影树进行多实例子空间学习以获取自然图像中的局部反射对称性

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摘要

Local reflection symmetry detection in nature images is a quite important but challenging task in computer vision. The main obstacle is both the scales and the orientations of symmetric structure are unknown. The multiple instance learning (MIL) framework sheds lights onto this task owing to its capability to well accommodate the unknown scales and orientations of the symmetric structures. However, to differentiate symmetry vs non-symmetry remains to face extreme confusions caused by clutters scenes and ambiguous object structures. In this paper, we propose a novel multiple instance learning framework for local reflection symmetry detection, named multiple instance subspace learning (MISL), which instead learns a group of models respectively on well partitioned subspaces. To obtain such subspaces, we propose an efficient dividing strategy under MIL setting, named partial random projection tree (PRPT), by taking advantage of the fact that each sample (bag) is represented by the proposed symmetry features computed at specific scale and orientation combinations (instances). Encouraging experimental results on two datasets demonstrate that the proposed local reflection symmetry detection method outperforms current state-of-the-arts. (C) 2015 Elsevier Ltd. All rights reserved.
机译:自然图像中的局部反射对称检测是计算机视觉中一项非常重要但具有挑战性的任务。主要障碍是尺度和对称结构的方向都是未知的。多实例学习(MIL)框架由于能够很好地适应对称结构的未知尺度和方向而为该任务提供了亮点。但是,区分对称与非对称仍然要面对由混乱场景和模棱两可的对象结构引起的极端混乱。在本文中,我们提出了一种新颖的用于局部反射对称检测的多实例学习框架,称为多实例子空间学习(MISL),它分别在划分良好的子空间上学习一组模型。为了获得这样的子空间,我们利用MIL设置下的有效划分策略,即部分随机投影树(PRPT),利用了以下事实:每个样本(包)都由以特定比例和方向组合计算出的拟议对称特征表示(实例)。在两个数据集上令人鼓舞的实验结果表明,所提出的局部反射对称性检测方法优于当前的最新技术。 (C)2015 Elsevier Ltd.保留所有权利。

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