用于图像聚类和分割的非对称和归一化切割

U. Damnjanovic, E. Izquierdo
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引用次数: 0

摘要

在过去的几年里,谱聚类已经成为一种强大的数据划分和分割模型。谱聚类技术利用特征值和特征向量的矩阵表示合适的图来表示原始数据。本文提出了一种新的光谱聚类方法:不对称切割。它允许从数据集中提取相关信息,只需在数据库上进行一次切割。该方法是为图像分类任务量身定制的,其中从包含未知数量的图像数据库中提取给定的图像类。本文的主要目的是表明,在给定的情况下,所提出的技术优于标准的光谱方法。将该算法与传统的归一化切割算法进行了比较
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Asymmetric and Normalized Cuts for Image Clustering and Segmentation
Over the last few years spectral clustering has emerged as a powerful model for data partitioning and segmentation. Spectral clustering techniques use eigenvalues and eigenvectors of the matrix representation of a suitable graph representing the original data. In this paper a new spectral clustering method is proposed: the asymmetric cut. It allows extraction of relevant information from a dataset by making just one cut over the database. The approach is tailored to the image classification task where a given image class is to be extracted from an image database containing an unknown number of classes. The main goal of this paper is to show that the proposed technique outperforms standard spectral methods under given circumstances. The technique is compared against the conventional and well-known normalized cut algorithm
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