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首页> 外文期刊>Applied Artificial Intelligence >Land Usage Identification with Fusion of Thepade SBTC and Sauvola Thresholding Features of Aerial Images Using Ensemble of Machine Learning Algorithms
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Land Usage Identification with Fusion of Thepade SBTC and Sauvola Thresholding Features of Aerial Images Using Ensemble of Machine Learning Algorithms

机译:使用机器学习算法的集合融合,使用机器学习算法融合的土地使用识别和空中图像的Sauvola阈值特征

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摘要

Detecting the appropriate usage of a piece of land is known as Land Usage Mining. The key resource to detect the Land Usages is aerial Images. The advancement in technology in form of satellites, drones, unmanned aerial vehicles do capture the tons of wide land cover images. Aerial images are used for various purposes alias getting an overview to put up the settlement by making construction, extracting mineral deposits, disaster mitigation planning, disaster recovery, and surveillance. Automated land usage identification with help of modern machine learning algorithms may be a great boon to mankind. Different feature extraction methods are being explored to represent aerial image content in the signature form, these features are mainly taken as a global or local content description of the image. Feature Level Fusion of both the global and the local content description features may give a more accurate capability for identification of land usage. The paper proposes feature level fusion of global features extracted using Thepade's Sorted Block Truncation Coding (Thepade SBTC) and local features extracted using Sauvola Thresholding for land usage identification. Consideration of more than one Machine Learning classifiers as an ensemble has proven better than individual Machine Learning classifiers. Thepade SBTC is explored in aerial image feature extraction with nine variations as TSBTC 2-ary, TSBTC 3-ary, TSBTC 4-ary, TSBTC 5-ary, TSBTC 6-ary, TSBTC 7-ary, TSBTC 8-ary, TSBTC 9-ary, and TSBTC 10-ary. The experimentation is done on UC Land Merced Dataset having 2100 images spread across 21 land usage types. Here the land usage identification accuracy, Matthews Correlation Coefficient (MCC), and F Measure have shown better performance in TSBTC 10-ary global feature extraction method. Further, the TSBTC 10-ary global features are concatenated with Sauvola thresholding-based local features for feature level fusion, which show the performance improvement of the proposed land usage identification technique. Also, the ensembles of machine learning algorithms are deployed for performance assessment along with the individual nine machine learning algorithms for the proposed land usage identification technique. The majority voting-based ensemble of 'IB1+ Random Forest+ Simple Logistic+ SMO+ KStar' has resulted in better accuracy of land usage identification.
机译:检测到一块土地的适当使用被称为土地使用挖掘。检测土地使用的关键资源是空中图像。技术方面的卫星形式,无人驾驶,无人驾驶飞行器的形式确实捕获了宽陆覆盖图像的吨。航空图像用于各种目的别名概述,通过制造建筑,提取矿物沉积物,减灾计划,灾难恢复和监测来施加沉降。随着现代机器学习算法的帮助,自动化土地使用识别可能是人类的伟大福音。正在探索不同的特征提取方法以代表签名形式中的空中图像内容,这些特征主要被视为图像的全局或本地内容描述。全局和本地内容描述特征的特征级别融合可以给出更准确的土地使用能力。本文提出了使用ThePade的排序块截断编码(ThePade SBTC)提取的全局特征的特征级别融合和使用Sauvola阈值识别提取的本地特征。考虑到多个机器学习分类器作为集合,已被证明比单独的机器学习分类器更好。 ThePade SBTC在空中图像特征提取中探讨,九个变体为Tsbtc 2-Ary,Tsbtc 3-Ary,Tsbtc 4-Ary,Tsbtc 5-Ary,Tsbtc 6-Ary,Tsbtc 7-Ary,Tsbtc 8-Ary,Tsbtc 9 - 和TSBTC 10-ARY。该实验是在UC土地梅德德数据集上完成,具有2100张图像,跨越21种土地使用类型。这里的土地使用识别准确性,马修斯相关系数(MCC)和F度量在TSBTC 10-ARY全局特征提取方法中表现出更好的性能。此外,TSBTC 10-ARY全局功能与Sauvola阈值的本地特征衔接,用于特征级融合,表明了所提出的土地使用识别技术的性能提高。此外,部署了机器学习算法的集合,用于性能评估以及所提出的土地使用识别技术的各个九种机器学习算法。 'IB1 +随机林+简单逻辑+ SMO + KSTAR的大多数投票合奏已导致土地使用识别的更好准确性。

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