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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Automatic building detection based on Purposive FastICA (PFICA) algorithm using monocular high resolution Google Earth images
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Automatic building detection based on Purposive FastICA (PFICA) algorithm using monocular high resolution Google Earth images

机译:使用单眼高分辨率Google Earth图像基于目的FastICA(PFICA)算法的自动建筑物检测

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摘要

This paper proposes an improved FastICA model named as Purposive FastICA (PFICA) with initializing by a simple color space transformation and a novel masking approach to automatically detect buildings from high resolution Google Earth imagery. ICA and FastICA algorithms are defined as Blind Source Separation (BSS) techniques for unmixing source signals using the reference data sets. In order to overcome the limitations of the ICA and FastICA algorithms and make them purposeful, we developed a novel method involving three main steps: 1-Improving the FastICA algorithm using Moore-Penrose pseudo inverse matrix model, 2-Automated seeding of the PFICA algorithm based on LUV color space and proposed simple rules to split image into three regions; shadow + vegetation, baresoil + roads and buildings, respectively, 3-Masking out the final building detection results from PFICA outputs utilizing the K-means clustering algorithm with two number of clusters and conducting simple morphological operations to remove noises. Evaluation of the results illustrates that buildings detected from dense and suburban districts with divers characteristics and color combinations using our proposed method have 88.6% and 85.5% overall pixel-based and object-based precision performances, respectively.
机译:本文提出了一种改进的FastICA模型,名为Purposive FastICA(PFICA),该模型通过简单的色彩空间转换和新颖的遮罩方法进行初始化,从而可以自动从高分辨率Google Earth图像中检测建筑物。 ICA和FastICA算法被定义为盲源分离(BSS)技术,用于使用参考数据集对源信号进行混合。为了克服ICA和FastICA算法的局限性并使其具有针对性,我们开发了一种新颖的方法,涉及三个主要步骤:1-使用Moore-Penrose伪逆矩阵模型改进FastICA算法; 2-PFICA算法的自动播种基于LUV色彩空间并提出了将图像分为三个区域的简单规则;分别使用阴影+植被,裸土+道路和建筑物,3-使用K-means聚类算法和两个数量的聚类,从PFICA输出中筛选出最终的建筑物检测结果,并进行简单的形态学运算以消除噪声。结果评估表明,使用我们提出的方法从密集和郊区具有多样化特征和颜色组合的建筑物中检测到的建筑物分别具有88.6%和85.5%的整体基于像素和基于对象的精度。

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