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Classification of Agricultural Sites Using Time-Series of High-Resolution Dual-Polarisation TerraSAR – X Spotlight Images

机译:使用时间系列的高分辨率双极化实体 - X Spotlight图像分类

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Increasing demands for lasting and environmentally conscious use of natural resources together with a cost effective and restrictive use of fertilizers and pesticides require the employment of new technologies in agriculture. The prelim-inary results presented here consist in the automatic land use classification of agri-cultural fields based on multi-temporal TerraSAR-X images in dual polarization obtained in the high resolution Spotlight mode of the satellite. The classified data in turn can be used to enhance and validate existing models on ground water quality as a function of agricultural usage and soil treatment. Within the past years in-vestigations have been carried out on the usefulness of ENVISAT ASAR dual po-larimetric data for environmental mapping in the same area, which show some deficiencies mainly because of the spatial resolution of the data, which was too coarse for many cultivations and could not reflect agricultural treatments (irriga-tion, fertilization, soil and plant treatment) sufficiently. However, the ENVISAT investigations showed that a proper selection of images out of a time series accord-ing to the crop-calendar of that region is beneficial and gives in general more accu-rate results than using all of the images. This is due to the fact that some fields are covered by different types of crops during the year and such sequence is often hard to model because it is usually governed by phenologic, ecologic, and economic reasons. The latter might be influenced either from sudden change of global or na-tional economic constraints (e.g., oil prize, taxes, and subsidies), by strategies of individual farmers, or both. In this paper, results obtained from multi-temporal classifications of TerraSAR-X image pairs (HH and VV) covering a whole season (11 images from March to November) are presented. Even though the temporal grid was irregular (revisit time was nine times 22 days and once 44 days) in every month at least one pair was available. The investigations and results are based on standard pixel based Maximum Likelihood classification techniques, which how-ever are amended by the use of regional crop calendar conditions and rules to ac-count for seasonal variations of specific cultivations with respect to permanent crops. Results obtained have been compared to ground truth, which has been car-ried out in-situ to the satellite measurements. It can be shown that even when not using all images of the year, but only those which are indicated by the crop-calendar or those which show high loadings using Factor Analysis a considerable classification accuracy of more than 90% can be achieved. Besides, the crop-calendar, which has been set-up using ground observations can be verified or sometimes improved by this method. The accuracy obtained, can be improved by different types of pre-processing (i.e., filtering) as is demonstrated. Some remain-ing discrepancies for some species can be explained by investigating the structural behaviour of the plants on ground as compared to close range photos being taken during ground truth. As could be demonstrated the use of time-series of images from TerraSAR-X despite of frequent cloud cover offers an excellent tool for mon-itoring crops and serve as indicator for the estimation of the amount of fertilizers used within that area. Using this information, farmers could improve their efforts in establishing good agricultural practice, as being claimed by recent legal and en-vironmental jurisdiction. In future work the validity of this work, which is limited by the small amount of training and control fields will be extended and also other modem classification techniques applied, such as support vector machine.
机译:增加了持久的需求和环保意识的利用自然资源具有成本效益和限制使用化肥在一起,农药需要在农业新技术的就业。在预赛 - inary结果这里介绍的包括基于在卫星的高分辨率聚光灯模式获得双极化多时间的TerraSAR-X图像农业文化领域的自动土地利用分类。反过来,分类数据可以用来提高和验证地面水质现有车型作为农业使用和土壤处理的功能。在过去的几年内,vestigations已对ENVISAT ASAR双宝lar​​imetric数据,在同一地区,这显示出一些不足之处,主要是因为数据的空间分辨率,这是太粗糙了许多环境映射的有效性进行栽培和不能反映农业处理(irriga-重刑,施肥,土壤和植物处理)充分。然而,ENVISAT调查显示,图像的正确选择了时间序列雅阁荷兰国际集团于该地区的作物日历是有益的,并给出普遍比较ACCU-率的结果比使用的所有图像。这是由于某些字段是由不同类型作物的年内覆盖,这样的序列通常很难模型,因为它通常是由物候,生态和经济原因制约。后者可能无论是从全球还是NA-周志武经济约束(例如,油奖金,税收和补贴)的突然变化的影响,农民个人,或两者的策略。在本文中,从结果的TerraSAR-X的图像对(HH和VV)覆盖整个季节(从3月11日的图像至十一月)呈现的多时分类获得。尽管时间网格不规则(重访时间是九次22天,一旦44天)每个月至少有一对是可用的。调查结果和基于标准的基于像素的最大似然分类技术,它如何有史以来通过利用区域作物日历条件和规则,以交流计数特定耕作的季节性变化相对于多年生作物修正。得到的结果相比,已基本事实,这一直是汽车里德原位出到卫星测量。可以看出,即使不使用一年的所有图像,但只有那些被作物日历指示或那些显示采用因子分析的90%以上,相当的分类精度高载荷可以实现的。此外,作物日历,已建立使用地面观测可以验证或有时通过该方法改善。所获得的精确度,可以通过不同类型的预处理的(即,过滤),为证明得到提高。一些仍然-ING对某些物种的差异可以通过比地面实况中混入近距离照片调查地面植物的结构特性来解释。由于可以证明使用时间序列从TerraSAR-X卫星图像的,尽管经常云层密布报价为周一itoring作物一个极好的工具,并作为该区域内使用化肥量的估计指标。利用这些信息,农民可以提高建立良好的农业实践自己的努力,通过最近的法律和连接vironmental司法管辖区要求。在今后的工作这项工作中,这是由训练和控制字段的少量有限的有效性将被扩展,并且还应用于其它调制解调器分类技术,诸如支持向量机。

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