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Object-based classification approach for greenhouse mapping using Landsat-8 imagery

机译:使用Landsat-8影像进行温室制图的基于对象的分类方法

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Suburban greenhouses with intensive agricultural productivity have increasingly influenced the daily diet and vegetable supply in Chinese cities. With their enormous input of fertilizers and pesticides, greenhouses have considerably changed the local soil quality and environmental risk factors. The ability to obtain timely and accurate information regarding the spatial distribution of greenhouses could make an important contribution to local agricultural management and soil protection. This paper attempts to present a practical framework for extracting suburban greenhouses, integrating remote sensing data from Landsat-8 and object-oriented classification. Inheritance classification was implemented, and various properties, including texture and neighborhood features in addition to spectral information, were investigated through the popular random forest technique for feature selection prior to SVM classification to improve the mapping accuracy. The results demonstrated that object-based classification incorporating non-spectral features yielded a significant improvement compared with the classification results obtained using only the spectral information in traditional per-pixel classification. Both the producer’s and user’s accuracy were higher than 85% for greenhouse identification. Although it remained a challenge to completely distinguish greenhouses from sparse plants, the final greenhouse map indicated that the proposed object-based classification scheme, providing multiple feature selections and multi-scale analysis, yielded worthwhile information when applied to a continuous series of the freely available Landsat-8 imagery data. Keywords: greenhouse, mapping, Landsat-8, object-based classification, feature selection, multi-scale DOI: 10.3965/j.ijabe.20160901.1414 Citation: Wu C F, Deng J S, Wang K, Ma L G, Tahmassebi A R S. Object-based classification approach for greenhouse mapping using Landsat-8 imagery. Int J Agric & Biol Eng, 2016; 9(1): 79-88.
机译:农业生产力高度集中的郊区温室日益影响着中国城市的日常饮食和蔬菜供应。由于大量使用化肥和农药,温室已经大大改变了当地的土壤质量和环境风险因素。及时获得有关温室空间分布的准确信息的能力可以为当地的农业管理和土壤保护做出重要贡献。本文试图提出一个实用的框架来提取郊区温室,整合Landsat-8的遥感数据和面向对象的分类。实现了继承分类,并且在SVM分类之前通过流行的随机森林技术对各种属性(包括光谱信息以及纹理和邻域特征)进行了研究,以进行特征选择,以提高映射精度。结果表明,与仅使用光谱信息进行传统每像素分类获得的分类结果相比,结合了非光谱特征的基于对象的分类产生了显着改善。生产者和使用者的温室识别准确率均高于85%。尽管将温室与稀疏植物区分开来仍然是一个挑战,但最终的温室图表明,所提出的基于对象的分类方案,提供了多种功能选择和多尺度分析,当应用于连续系列的免费提供时,便产生了有价值的信息。 Landsat-8影像数据。关键词:温室,制图,Landsat-8,基于对象的分类,特征选择,多尺度DOI:10.3965 / j.ijabe.20160901.1414引文:Wu CF,Deng JS,Wang K,Ma LG,Tahmassebi AR S. Object- Landsat-8影像的温室作图分类方法。国际农业与生物工程杂志,2016; 9(1):79-88。

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