Alejandro Coca-Castro, M. A. Zaraza-Aguilera, Yilsey T. Benavides-Miranda, Yeimy Montilla-Montilla, Heidy B. Posada-Fandiño, Angie L. Avendaño-Gomez, Hernando A. Hernández-Hamon, Sonia C. Garzón-Martinez, Carlos A. Franco-Prieto
{"title":"评估谷歌地球引擎平台上的分类算法,用于从高分辨率图像识别和检测农村和城市周边建筑的变化","authors":"Alejandro Coca-Castro, M. A. Zaraza-Aguilera, Yilsey T. Benavides-Miranda, Yeimy Montilla-Montilla, Heidy B. Posada-Fandiño, Angie L. Avendaño-Gomez, Hernando A. Hernández-Hamon, Sonia C. Garzón-Martinez, Carlos A. Franco-Prieto","doi":"10.4995/RAET.2021.15026","DOIUrl":null,"url":null,"abstract":"Building change detection based on remote sensing imagery is a key task for land management and planning e.g., detection of illegal settlements, updating land records and disaster response. Under the post- classification comparison approach, this research aimed to evaluate the feasibility of several classification algorithms to identify and capture buildings and their change between two time steps using very-high resolution images (<1 m/pixel) across rural areas and urban/rural perimeter boundaries. Through an App implemented on the Google Earth Engine (GEE) platform, we selected two study areas in Colombia with different images and input data. In total, eight traditional classification algorithms, three unsupervised (K-means, X-Means y Cascade K-Means) and five supervised (Random Forest, Support Vector Machine, Naive Bayes, GMO maximum Entropy and Minimum distance) available at GEE were trained. Additionally, a deep neural network named Feature Pyramid Networks (FPN) was added and trained using a pre-trained model, EfficientNetB3 model. Three evaluation zones per study area were proposed to quantify the performance of the algorithms through the Intersection over Union (IoU) metric. This metric, with a range between 0 and 1, represents the degree of overlapping between two regions, where the higher agreement the higher IoU values. The results indicate that the models configured with the FPN network have the best performance followed by the traditional supervised algorithms. The performance differences were specific to the study area. For the rural area, the best FPN configuration obtained an IoU averaged for both time steps of 0.4, being this four times higher than the best supervised model, Support Vector Machines using a linear kernel with an average IoU of 0.1. Regarding the setting of urban/rural perimeter boundaries, this difference was less marked, having an average IoU of 0.53 in comparison to 0.38 obtained by the best supervised classification model, in this case Random Forest. 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引用次数: 2
摘要
基于遥感图像的建筑变化检测是土地管理和规划的一项关键任务,例如,检测非法定居点、更新土地记录和灾害应对。在分类后比较方法下,本研究旨在评估几种分类算法的可行性,以识别和捕捉建筑物及其在两个时间步长之间的变化,使用跨越农村地区和城市/农村周边边界的超高分辨率图像(<1米/像素)。通过在谷歌地球引擎(GEE)平台上实现的应用程序,我们选择了哥伦比亚的两个具有不同图像和输入数据的研究区域。总共训练了GEE可用的八种传统分类算法,三种无监督(K-means、X-means y Cascade K-means)和五种有监督(随机森林、支持向量机、朴素贝叶斯、GMO最大熵和最小距离)。此外,添加了一个名为特征金字塔网络(FPN)的深度神经网络,并使用预先训练的模型EfficientNetB3模型进行训练。每个研究区域提出了三个评估区域,通过并集交集(IoU)度量来量化算法的性能。该度量的范围在0和1之间,表示两个区域之间的重叠程度,其中一致性越高,IoU值就越高。结果表明,采用FPN网络配置的模型具有最好的性能,其次是传统的监督算法。性能差异是研究领域特有的。对于农村地区,最佳FPN配置获得了两个时间步长的平均IoU为0.4,这是使用平均IoU值为0.1的线性内核的最佳监督模型支持向量机的四倍。关于城市/农村周边边界的设置,这种差异不那么明显,与最佳监督分类模型(在本例中为随机森林)获得的0.38相比,平均IoU为0.53。该结果与从云计算平台跟踪建筑区域动态的机构相关,用于在其他情况下对类似平台中的分类器进行未来评估。
Evaluación de algoritmos de clasificación en la plataforma Google Earth Engine para la identificación y detección de cambios de construcciones rurales y periurbanas a partir de imágenes de alta resolución
Building change detection based on remote sensing imagery is a key task for land management and planning e.g., detection of illegal settlements, updating land records and disaster response. Under the post- classification comparison approach, this research aimed to evaluate the feasibility of several classification algorithms to identify and capture buildings and their change between two time steps using very-high resolution images (<1 m/pixel) across rural areas and urban/rural perimeter boundaries. Through an App implemented on the Google Earth Engine (GEE) platform, we selected two study areas in Colombia with different images and input data. In total, eight traditional classification algorithms, three unsupervised (K-means, X-Means y Cascade K-Means) and five supervised (Random Forest, Support Vector Machine, Naive Bayes, GMO maximum Entropy and Minimum distance) available at GEE were trained. Additionally, a deep neural network named Feature Pyramid Networks (FPN) was added and trained using a pre-trained model, EfficientNetB3 model. Three evaluation zones per study area were proposed to quantify the performance of the algorithms through the Intersection over Union (IoU) metric. This metric, with a range between 0 and 1, represents the degree of overlapping between two regions, where the higher agreement the higher IoU values. The results indicate that the models configured with the FPN network have the best performance followed by the traditional supervised algorithms. The performance differences were specific to the study area. For the rural area, the best FPN configuration obtained an IoU averaged for both time steps of 0.4, being this four times higher than the best supervised model, Support Vector Machines using a linear kernel with an average IoU of 0.1. Regarding the setting of urban/rural perimeter boundaries, this difference was less marked, having an average IoU of 0.53 in comparison to 0.38 obtained by the best supervised classification model, in this case Random Forest. The results are relevant for institutions tracking the dynamics of building areas from cloud computing platfo future assessments of classifiers in likewise platforms in other contexts.