基于颜色聚类分析的建筑物自动提取加速

Masakazu Iwai, Takuya Futagami, N. Hayasaka, T. Onoye
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引用次数: 1

摘要

在本文中,我们改进了自动建筑物提取方法,该方法使用变分推理高斯混合模型进行颜色聚类,提高了其计算速度。改进的方法通过应用颜色聚类减少了分辨率降低的图像的计算时间。通过对106幅风景图像的实验,改进后的方法提取建筑物的速度比传统方法提高了86.54%。此外,改进的方法通过使用减少的图像防止过度聚类,显著提高了1.8%或更多的提取精度,也减少了颜色的数量。关键词:景物图像,建筑提取,GrabCut,加速
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acceleration of Automatic Building Extraction via Color-Clustering Analysis
In this paper, we improve upon the automatic building extraction method, which uses a variational inference Gaussian mixture model for performing color clustering, by accelerating its computational speed. The improved method decreases the computational time using an image with reduced resolution upon applying color clustering. According to our experiment, in which we used 106 scenery images, the improved method could extract buildings at a rate 86.54% faster than that of the conventional methods. Furthermore, the improved method significantly increased the extraction accuracy by 1.8% or more by preventing overclustering using the reduced image, which also had a reduced number of the colors. key words: scenery image, building extraction, GrabCut, acceleration
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