Improving Remote Sensing Multiple Classification by Data and Ensemble Selection

IF 1 4区 地球科学 Q4 GEOGRAPHY, PHYSICAL Photogrammetric Engineering and Remote Sensing Pub Date : 2021-11-01 DOI:10.14358/pers.20-00071r3
S. Boukir, L. Guo, N. Chehata
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引用次数: 1

Abstract

In this article, margin theory is exploited to design better ensemble classifiers for remote sensing data. A semi-supervised version of the ensemble margin is at the core of this work. Some major challenges in ensemble learning are investigated using this paradigm in the difficult context of land cover classification: selecting the most informative instances to form an appropriate training set, and selecting the best ensemble members. The main contribution of this work lies in the explicit use of the ensemble margin as a decision method to select training data and base classifiers in an ensemble learning framework. The selection of training data is achieved through an innovative iterative guided bagging algorithm exploiting low-margin instances. The overall classification accuracy is improved by up to 3%, with more dramatic improvement in per-class accuracy (up to 12%). The selection of ensemble base classifiers is achieved by an ordering-based ensemble-selection algorithm relying on an original margin-based criterion that also targets low-margin instances. This method reduces the complexity (ensemble size under 30) but maintains performance.
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基于数据和集合选择的遥感多重分类改进
本文利用余量理论为遥感数据设计更好的集成分类器。半监督版本的集合边际是这项工作的核心。在土地覆盖分类的困难背景下,使用该范式研究了集成学习中的一些主要挑战:选择最具信息量的实例来形成适当的训练集,并选择最佳集成成员。这项工作的主要贡献在于明确使用集成裕度作为在集成学习框架中选择训练数据和基本分类器的决策方法。训练数据的选择是通过一种创新的迭代引导bagging算法来实现的,该算法利用了低边际实例。总体分类准确率提高了3%,每个类的准确率提高了12%。集成基分类器的选择是通过基于排序的集成选择算法来实现的,该算法依赖于原始的基于边缘的标准,该标准也针对低边际实例。这种方法降低了复杂性(集合大小小于30),但保持了性能。
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来源期刊
Photogrammetric Engineering and Remote Sensing
Photogrammetric Engineering and Remote Sensing 地学-成像科学与照相技术
CiteScore
1.70
自引率
15.40%
发文量
89
审稿时长
9 months
期刊介绍: Photogrammetric Engineering & Remote Sensing commonly referred to as PE&RS, is the official journal of imaging and geospatial information science and technology. Included in the journal on a regular basis are highlight articles such as the popular columns “Grids & Datums” and “Mapping Matters” and peer reviewed technical papers. We publish thousands of documents, reports, codes, and informational articles in and about the industries relating to Geospatial Sciences, Remote Sensing, Photogrammetry and other imaging sciences.
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