SemiContour: A Semi-supervised Learning Approach for Contour Detection.

Zizhao Zhang, Fuyong Xing, Xiaoshuang Shi, Lin Yang
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引用次数: 0

Abstract

Supervised contour detection methods usually require many labeled training images to obtain satisfactory performance. However, a large set of annotated data might be unavailable or extremely labor intensive. In this paper, we investigate the usage of semi-supervised learning (SSL) to obtain competitive detection accuracy with very limited training data (three labeled images). Specifically, we propose a semi-supervised structured ensemble learning approach for contour detection built on structured random forests (SRF). To allow SRF to be applicable to unlabeled data, we present an effective sparse representation approach to capture inherent structure in image patches by finding a compact and discriminative low-dimensional subspace representation in an unsupervised manner, enabling the incorporation of abundant unlabeled patches with their estimated structured labels to help SRF perform better node splitting. We re-examine the role of sparsity and propose a novel and fast sparse coding algorithm to boost the overall learning efficiency. To the best of our knowledge, this is the first attempt to apply SSL for contour detection. Extensive experiments on the BSDS500 segmentation dataset and the NYU Depth dataset demonstrate the superiority of the proposed method.

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Abstract Image

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半轮廓:轮廓检测的半监督学习方法
有监督的轮廓检测方法通常需要许多标注过的训练图像才能获得令人满意的性能。然而,大量的标注数据可能无法获得,或者需要耗费大量人力物力。在本文中,我们研究了如何利用半监督学习(SSL),在训练数据非常有限(三张标注图像)的情况下获得具有竞争力的检测精度。具体来说,我们提出了一种基于结构化随机森林(SRF)的轮廓检测半监督结构化集合学习方法。为了让 SRF 适用于无标记数据,我们提出了一种有效的稀疏表示方法,通过以无监督的方式找到紧凑且具有判别能力的低维子空间表示来捕捉图像补丁中的固有结构,从而将丰富的无标记补丁与其估计的结构化标签结合起来,帮助 SRF 执行更好的节点分割。我们重新审视了稀疏性的作用,并提出了一种新颖、快速的稀疏编码算法,以提高整体学习效率。据我们所知,这是首次尝试将 SSL 应用于轮廓检测。在 BSDS500 分割数据集和纽约大学深度数据集上的广泛实验证明了所提方法的优越性。
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CiteScore
43.50
自引率
0.00%
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