Multi-dimension and multi-granularity segmentation of remote sensing image based on improved Otsu algorithm

Dongmei Huang, Jingqi Sun, Shuang Liu, Shoujue Xu, Suling Liang, Cong Li, Zhenhua Wang
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引用次数: 2

Abstract

An increasing number of unknown islands, an important resource for human development, is identified based on segmentation of remote sensing image. Different from traditional digital image, remote sensing image has significant characteristics, such as multi-band, multi-source, and multi-granularity. Thus, the segmentation theory based on traditional digital image is not suitable for remote sensing image. Here, the segmentation algorithm (Otsu), which is a common method for traditional digital image, was improved in two aspects: (1) Based on PCA and band fusion, the Otsu algorithm with one-dimensional image was extended to multi-dimensional ones; (2) By optimizing the threshold value, the Otsu algorithm for single feature extraction was extended to multi-granularity extraction. Taking the island segmentation from remote sensing image as an example, the improved Otsu algorithm was compared with the traditional Otsu: 1) Through using PCA algorithm, multi-band remote sensing image was reduced to effective 3–4 new bands; 2) Through different threshold settings, the objects in the remote sensing image are divided into different classes; 3) The improved Otsu algorithm reduces the computational complexity, taking the threshold value of 2 as an example, the time efficiency is improved by 42.15%.
基于改进Otsu算法的遥感图像多维多粒度分割
基于遥感影像分割的未知岛屿日益成为人类发展的重要资源。与传统数字图像不同,遥感图像具有多波段、多源、多粒度等显著特征。因此,基于传统数字图像的分割理论并不适用于遥感图像。本文对传统数字图像的常用分割方法Otsu算法进行了两方面的改进:(1)基于PCA和波段融合,将一维图像的Otsu算法扩展到多维图像;(2)通过优化阈值,将Otsu算法从单一特征提取扩展到多粒度提取。以遥感图像岛屿分割为例,将改进的Otsu算法与传统的Otsu算法进行比较:1)通过PCA算法将多波段遥感图像简化为有效的3-4个新波段;2)通过不同的阈值设置,将遥感图像中的目标划分为不同的类别;3)改进的Otsu算法降低了计算复杂度,以阈值为2为例,时间效率提高了42.15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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