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Object-based crop identification using multiple vegetation indices, textural features and crop phenology

机译:使用多种植被指数,纹理特征和作物物候特征的基于对象的作物识别

摘要

Crop identification on specific parcels and the assessment of soil management practices are important for agro-ecological studies, greenhouse gas modeling, and agrarian policy development. Traditional pixel-based analysis of remotely sensed data results in inaccurate identification of some crops due to pixel heterogeneity, mixed pixels, spectral similarity, and crop pattern variability. These problems can be overcome using object-based image analysis (OBIA) techniques, which incorporate new spectral, textural and hierarchical features after segmentation of imagery. We combined OBIA and decision tree (DT) algorithms to develop a methodology, named Object-based Crop Identification and Mapping (OCIM), for a multi-seasonal assessment of a large number of crop types and field status.In our approach, we explored several vegetation indices (VIs) and textural features derived from visible, near-infrared and short-wave infrared (SWIR) bands of ASTER satellite scenes collected during three distinct growing-season periods (mid-spring, early-summer and late-summer). OCIM was developed for 13 major crops cultivated in the agricultural area of Yolo County in California, USA. The model design was built in four different scenarios (combinations of three or two periods) by using two independent training and validation datasets and the best DTs resulted in an error rate of 9% for the three-period model and between 12 and 16% for the two-period models. Next, the selected DT was used for the thematic classification of the entire cropland area and mapping was then evaluated applying the confusion matrix method to the independent testing dataset that reported 79% overall accuracy. OCIM detected intra-class variations in most crops attributed to variability from local crop calendars, tree-orchard structures and land management operations. Spectral variables (based on VIs) contributed around 90% to the models, although textural variables were necessary to discriminate between most of the permanent crop-fields (orchards, vineyard, alfalfa and meadow). Features extracted from late-summer imagery contributed around 60% in classification model development, whereas mid-spring and early-summer imagery contributed around 30 and 10%, respectively. The Normalized Difference Vegetation Index (NDVI) was used to identify the main groups of crops based on the presence and vigor of green vegetation within the fields, contributing around 50% to the models. In addition, other VIs based on SWIR bands were also crucial to crop identification because of their potential to detect field properties like moisture, vegetation vigor, non-photosynthetic vegetation and bare soil. The OCIM method was built using interpretable rules based on physical properties of the crops studied and it was successful for object-based feature selection and crop identification.
机译:对特定地块的作物鉴定和土壤管理措施的评估对于农业生态研究,温室气体建模和农业政策制定至关重要。传统的基于像素的遥感数据分析会由于像素异质性,混合像素,光谱相似性和作物模式变异而导致对某些农作物的识别不准确。使用基于对象的图像分析(OBIA)技术可以克服这些问题,该技术在图像分割后合并了新的光谱,纹理和层次特征。我们将OBIA和决策树(DT)算法结合起来,开发了一种名为基于对象的作物识别和制图(OCIM)的方法,可以对多种作物类型和田间状况进行多季节评估。在三个不同的生长季节时期(春季,初夏和夏末)收集的ASTER卫星场景的可见,近红外和短波红外(SWIR)波段得出的几种植被指数(VI)和质地特征。 OCIM是为美国加利福尼亚州约洛县农业地区种植的13种主要农作物开发的。通过使用两个独立的训练和验证数据集,在四个不同的场景(三个或两个周期的组合)中构建了模型设计,最佳DT导致三周期模型的错误率为9%,而三周期模型的错误率为12%至16%两期模型。接下来,将选定的DT用于整个农田面积的主题分类,然后使用混淆矩阵方法对独立测试数据集进行评估,得出总体准确性为79%。 OCIM检测到大多数作物的类内差异归因于当地作物日历,果园结构和土地管理业务的差异。光谱变量(基于VIs)对模型的贡献约为90%,尽管要区分大多数永久性作物田(果园,葡萄园,苜蓿和草甸),必须使用纹理变量。从夏末图像中提取的特征在分类模型开发中贡献了约60%,而春夏和初夏图像分别贡献了约30%和10%。归一化植被指数(NDVI)用于根据田间绿色植被的存在和活力确定主要农作物,对模型的贡献约为50%。此外,其他基于SWIR波段的VI对作物鉴定也至关重要,因为它们具有检测田间特性(如水分,植被活力,非光合作用植被和裸露土壤)的潜力。 OCIM方法是根据研究的作物的物理特性使用可解释的规则构建的,并且成功用于基于对象的特征选择和作物识别。

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