Lin Shuyuan, Luo Hailing, Yan Yan, Xiao Guobao, Wang Hanzi
IEEE Trans Image Process. 2022;31:6605-6620. doi: 10.1109/TIP.2022.3214073. Epub 2022 Oct 26.
Recently, graph-based methods have been widely applied to model fitting. However, in these methods, association information is invariably lost when data points and model hypotheses are mapped to the graph domain. In this paper, we propose a novel model fitting method based on co-clustering on bipartite graphs (CBG) to estimate multiple model instances in data contaminated with outliers and noise. Model fitting is reformulated as a bipartite graph partition behavior. Specifically, we use a bipartite graph reduction technique to eliminate some insignificant vertices (outliers and invalid model hypotheses), thereby improving the reliability of the constructed bipartite graph and reducing the computational complexity. We then use a co-clustering algorithm to learn a structured optimal bipartite graph with exact connected components for partitioning that can directly estimate the model instances (i.e., post-processing steps are not required). The proposed method fully utilizes the duality of data points and model hypotheses on bipartite graphs, leading to superior fitting performance. Exhaustive experiments show that the proposed CBG method performs favorably when compared with several state-of-the-art fitting methods.
最近,基于图的方法已被广泛应用于模型拟合。然而,在这些方法中,当数据点和模型假设被映射到图域时,关联信息总是会丢失。在本文中,我们提出了一种基于二分图协同聚类(CBG)的新型模型拟合方法,用于估计受异常值和噪声污染的数据中的多个模型实例。模型拟合被重新表述为一种二分图划分行为。具体来说,我们使用二分图约简技术来消除一些无意义的顶点(异常值和无效的模型假设),从而提高所构建二分图的可靠性并降低计算复杂度。然后,我们使用一种协同聚类算法来学习一个具有精确连通分量的结构化最优二分图,用于划分,该划分可以直接估计模型实例(即不需要后处理步骤)。所提出的方法充分利用了二分图上数据点和模型假设的对偶性,从而带来卓越的拟合性能。详尽的实验表明,与几种最新的拟合方法相比,所提出的CBG方法表现良好。