遥感图像中小目标分割的二级框架

Hailong Zhu, Hongzhi Sun
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引用次数: 1

摘要

利用计算机自动解译遥感图像中的小目标受到分辨率低和成像季节不确定性的严重限制,导致识别率低,泛化能力差。本文以黑龙江省二龙山库区为研究区,提出了一种基于显著性检测和霍夫变换的小目标识别二次分割框架。首先,计算特定小目标的显著性,寻找候选小目标;接下来,对受小尺寸约束的增强RSI进行霍夫变换,从其他物体中识别小物体,如公路碎片、河流碎片、房屋和农田等。小储层分割实验结果表明,该方法具有较高的鲁棒性和泛化能力,分类思想可应用于其他类型RSI小目标的自动判读过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A secondary framework for small targets segmentation In Remote Sensing Images
The automatic interpreting of small object using computer in Remote Sensing Image(RSI) is sharply limited by low resolution and the uncertainty of imaging season, leading to the results of low recognition rate and poor generalization ability. In this paper, the Erlongshan Reservoir region of Heilongjiang province is selected as research area, and a secondary segmentation framework is proposed for small objects recognition based on salience detection and Hough Transform. Firstly, the salience of particular small objects is calculated to find candidates of small objects. Next, the Hough Transform is performed on an enhanced RSI constrained by the size of small size to identify small objects from others, such as highway fragment, river fragment, house and farmland and so on. The experiments results regarding small reservoir segmentation show that the method has high robustness and generalization ability, and the idea of classification can be used to the automatic interpreting process of other kind of small objects of RSI.
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