Gaussian multiple instance learning approach for mapping the slums of the world using very high resolution imagery

Ranga Raju Vatsavai
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引用次数: 36

Abstract

In this paper, we present a computationally efficient algorithm based on multiple instance learning for mapping informal settlements (slums) using very high-resolution remote sensing imagery. From remote sensing perspective, informal settlements share unique spatial characteristics that distinguish them from other urban structures like industrial, commercial, and formal residential settlements. However, regular pattern recognition and machine learning methods, which are predominantly single-instance or per-pixel classifiers, often fail to accurately map the informal settlements as they do not capture the complex spatial patterns. To overcome these limitations we employed a multiple instance based machine learning approach, where groups of contiguous pixels (image patches) are modeled as generated by a Gaussian distribution. We have conducted several experiments on very high-resolution satellite imagery, representing four unique geographic regions across the world. Our method showed consistent improvement in accurately identifying informal settlements.
高斯多实例学习方法用于使用非常高分辨率的图像绘制世界贫民窟
在本文中,我们提出了一种基于多实例学习的计算效率高的算法,用于利用高分辨率遥感图像绘制非正式住区(贫民窟)。从遥感角度来看,非正式住区具有独特的空间特征,使其区别于工业、商业和正式住区等其他城市结构。然而,常规的模式识别和机器学习方法,主要是单实例或逐像素分类器,往往不能准确地绘制非正式住区,因为它们不能捕捉复杂的空间模式。为了克服这些限制,我们采用了基于多实例的机器学习方法,其中连续像素组(图像补丁)由高斯分布生成。我们在非常高分辨率的卫星图像上进行了几次实验,代表了世界上四个独特的地理区域。我们的方法在准确识别非正式定居点方面显示出持续的改进。
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