Unsupervised Co-segmentation of Complex Image Set via Bi-harmonic Distance Governed Multi-level Deformable Graph Clustering

Jizhou Ma, Shuai Li, A. Hao, Hong Qin
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引用次数: 3

Abstract

Despite the recent success of extensive co-segmentation studies, they still suffer from limitations in accommodating multiple-foreground, large-scale, high-variability image set, as well as their underlying capability for parallel implementation. To improve, this paper proposes a bi-harmonic distance governed flexible method for the robust coherent segmentation of the overlapping/similar contents co-existing in image group, which is independent of supervised learning and any other user-specified prior. The central idea is the novel integration of bi-harmonic distance metric design and multi-level deformable graph generation for multi-level clustering, which gives rise to a host of unique advantages: accommodating multiple-foreground images, respecting both local structures and global semantics of images, being more robust and accurate, and being convenient for parallel acceleration. Critical pipeline of our method involves intrinsic content-coherent measuring, super-pixel assisted bottom-up clustering, and multi-level deformable graph clustering based cross-image optimization. We conduct extensive experiments on the iCoseg benchmark and Oxford flower datasets, and make comprehensive evaluations to demonstrate the superiority of our method via comparison with state-of-the-art methods collected in the MSRC database.
基于双调和距离控制的多层次可变形图聚类的复图像集无监督共分割
尽管近年来广泛的共分割研究取得了成功,但它们在适应多前景、大规模、高可变性图像集以及并行实现的潜在能力方面仍然存在局限性。为了改进这一问题,本文提出了一种双谐波距离控制的灵活方法,用于图像组中共存的重叠/相似内容的鲁棒连贯分割,该方法独立于监督学习和任何其他用户指定的先验。该算法的核心思想是将双谐波距离度量设计和多级可变形图生成相结合,实现多级聚类,具有适应多前景图像、尊重图像的局部结构和全局语义、鲁棒性和准确性更高、便于并行加速等独特优势。该方法的关键流程包括内在内容相干测量、超像素辅助的自下而上聚类和基于多层次可变形图聚类的交叉图像优化。我们在iCoseg基准和牛津花数据集上进行了广泛的实验,并通过与MSRC数据库中收集的最先进的方法进行比较,进行了全面的评估,以证明我们的方法的优越性。
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