基于光学测量信息的遥感图像目标检测算法研究

Yuhan Wang
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引用次数: 0

摘要

近年来,成像侦察或对地观测的遥感信息分析已成为重要的技术手段,光学rsi因其能够获取目标特征的详细信息的特点,被广泛应用于军事情报侦察、智能交通监控等领域的目标检测(TD)与识别。对于获取的海量rsi,如何从大场景图像中获取感兴趣的目标区域并提取目标特征,从而支持TD的应用和识别仍然是一个重要的研究课题。本文的主要目的是研究基于光学测量信息的rsi的TD算法。本文研究了一种结合前景特征和背景先验知识的显著性特征分析方法,计算边界概率测度相似度和聚类生成背景显著性图,引入特征权值约束聚类生成前景显著性图,并指导加权融合得到背景显著性图后的船舶目标显著性图。实验验证表明,该方法准确率≥94%,召回率≥91%,能够有效消除云干扰下船舶区域获取困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Remote Sensing Image Target Detection Algorithm Based on Optical Measurement Information
In recent years, remote sensing information analysis of imaging reconnaissance or earth observation has become an important technical means, and optical RSIs are widely used for target detection (TD) and identification in military intelligence reconnaissance, intelligent traffic monitoring and other fields because of their characteristics of obtaining detailed information of target features. For the acquired massive RSIs, how to obtain the target area of interest and extract the target features from the large scene images, so as to support the application of TD and recognition is still an important research topic. The main objective of this paper is to investigate the TD algorithm of RSIs based on optical measurement information. In this paper, a saliency feature analysis method combining foreground features and background a priori knowledge is investigated, which calculates the boundary probability measure similarity and clusters to generate the background saliency map, introduces the feature weight constraint clustering to generate the foreground saliency map, and guides the weighted fusion to obtain the ship target saliency map after the background saliency map. The experimental demonstration shows that the accuracy of this method is ≥94% and the recall rate is ≥91%, which can effectively eliminate the difficulty of acquiring the ship area when the cloud interference.
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