Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imagery

IF 0.9 Q4 REMOTE SENSING Journal of Geodetic Science Pub Date : 2020-01-01 DOI:10.1515/jogs-2020-0003
H. Tonbul, I. Colkesen, T. Kavzoglu
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引用次数: 12

Abstract

Abstract The poplar species in the forest ecosystems are one of the most valuable and beneficial species for the society and environment. Conventional methods require high cost, time and labor need, and the results obtained vary and are insu˚cient in terms of achieved accuracy level. Determination of poplar cultivated fields and mapping of their spatial sites play a vital role for decision-makers and planners to enhance the economic and ecological value of poplar trees. The study aims to map Poplar (P. deltoides) cultivated areas in Akyazi district of Sakarya, Turkey province using various combinations of the Sentinel-2A image bands. For this purpose, object-based classification based on multi-resolution segmentation algorithm was utilized to produce image objects and ensemble learning algorithms, namely, Adaboost (AdaB), Random Forest (RF), Rotation Forest (RotFor) and Canonical correlation forest (CCF) were applied to produce thematic maps. In order to analyze the effects of the spectral bands of the Sentinel-2A image on the object-based classification performance, three datasets consisting of different spectral band combinations (i.e. four 10 m bands, six 20 m bands and ten 10m pan-sharpened bands) were used. The results showed that the RotFor and CCF classifiers produced superior classification performances compared to the AdaB and RF classifiers for the band combinations regarded in this study. Moreover, it was found that determination of poplar tree class level accuracy reached to ~94% in terms of F-score. It was also observed that the inclusion of the six spectral bands at 20 m resolution resulted in a noteworthy increase in classification accuracy (up to 6%) compared to single 10m band combination.
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基于Sentinel-2A图像的基于对象的集成学习算法的杨树分类
摘要森林生态系统中的杨树物种是对社会和环境最有价值和有益的物种之一。传统方法成本高,耗时长,需要人工,所得结果参差不齐,准确度不高。杨树耕地的确定和空间立地的绘制对决策者和规划者提高杨树的经济和生态价值具有重要意义。该研究旨在利用Sentinel-2A图像波段的各种组合,绘制土耳其省Sakarya Akyazi地区的杨树(P. deltoides)种植区。为此,采用基于多分辨率分割算法的基于对象分类生成图像对象,采用集成学习算法,即Adaboost (AdaB)、Random Forest (RF)、Rotation Forest (RotFor)和Canonical correlation Forest (CCF)生成专题地图。为了分析Sentinel-2A图像的光谱波段对目标分类性能的影响,采用3个不同光谱波段组合的数据集(4个10m波段、6个20 m波段和10个10m波段)进行分类。结果表明,与AdaB和RF分类器相比,RotFor和CCF分类器在本研究中考虑的波段组合中具有更好的分类性能。此外,在F-score方面,杨树类水平测定的准确率可达~94%。还观察到,与单个10m波段组合相比,在20 m分辨率下包含6个光谱波段导致分类精度显著提高(高达6%)。
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来源期刊
Journal of Geodetic Science
Journal of Geodetic Science REMOTE SENSING-
CiteScore
1.90
自引率
7.70%
发文量
3
审稿时长
14 weeks
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