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视觉显著性与知觉组织相结合的高分影像居民地提取方法
by
陈一祥;秦昆;张晔;袁媛
in
Cognitive ability
/ Field theory
/ High resolution
/ Image resolution
/ Mental task performance
/ Remote sensing
/ Residential areas
/ Salience
/ Visual system
/ Wavelet transforms
/ 小波变换
/ 居民地提取
/ 数据场
/ 知觉组织
/ 视觉显著性
/ 高分辨率遥感影像
2017
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视觉显著性与知觉组织相结合的高分影像居民地提取方法
by
陈一祥;秦昆;张晔;袁媛
in
Cognitive ability
/ Field theory
/ High resolution
/ Image resolution
/ Mental task performance
/ Remote sensing
/ Residential areas
/ Salience
/ Visual system
/ Wavelet transforms
/ 小波变换
/ 居民地提取
/ 数据场
/ 知觉组织
/ 视觉显著性
/ 高分辨率遥感影像
2017
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Journal Article
视觉显著性与知觉组织相结合的高分影像居民地提取方法
2017
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Overview
受人类视觉认知机制的启发,提出了一种利用视觉显著性与知觉组织相结合的高分辨率遥感影像居民地提取方法。首先利用认知物理学中的数据场构建居民地的视觉显著性模型,并通过自适应阈值法实现候选居民地的自动提取,然后利用多尺度小波变换的高频特征实现居民地的知觉组织,最后通过集合交运算提取同时满足这两种视觉机制的居民地。通过ZY-3和Quickbird两种高分传感器的影像数据集进行居民地提取试验,验证了该方法的有效性。
Publisher
Surveying and Mapping Press,南京邮电大学地理与生物信息学院,江苏南京210023,安徽省智慧城市与地理国情监测重点实验室,安徽合肥230031%武汉大学遥感信息工程学院,湖北武汉,430079%南京邮电大学地理与生物信息学院,江苏南京,210023
Subject
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