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Regional Classification of Winter Wheat Using Remote Sensing Data in Southeastern Turkey

机译:土耳其东南部基于遥感的冬小麦区域分类

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Accurate and timely information about crop acreage estimation is important for agricultural management. In Turkey, wheat production is very important, and it is widely planted in Anatolia and in Southeastern Turkey. In this study, four different classification types were evaluated for wheat determination. As a study area, the region of Islahiye and Nurdagi counties of Gaziantep, Turkey was chosen. As satellite data, a Landsat 8 OLI image acquired on April 10, 2017 was used. The ground-truth points that were collected in surveying, and additionally field information taken from farmer registration system provided by local administrations were used as references. The application was done by classification of the satellite image using four different methods (Maximum Likelihood, Support Vector Machine, Condition-Based and Nearest Neighbor). After the results were obtained, the wheat classes obtained were transformed to vector format to overlay on the satellite image for visual analysis. The area of wheat class obtained from each method was presented and compared. The results were also evaluated by comparing with the data taken from Turkish Statistical Institute. All of the methods provided results close to the Turkish Statistical Institute records. Even the results were not significantly different from each other, wheat area determined using Support Vector Machine classification was better than others. The accuracy assessments were performed by calculating the total accuracy and KAPPA/KIA coefficient. The accuracy assessment analysis showed that the three supervised methods were better than the unsupervised one. As a future study, evaluation of these four classification methods using a multi-temporal dataset is planned.
机译:准确和及时的有关作物播种面积估计的信息对于农业管理非常重要。在土耳其,小麦的生产非常重要,在安纳托利亚和土耳其东南部广泛种植。在这项研究中,对四种不同的分类类型进行了小麦测定评估。作为研究区域,选择了土耳其加济安泰普的伊斯拉希耶县和努尔达吉县。使用2017年4月10日获取的Landsat 8 OLI图像作为卫星数据。在调查中收集的地面真相点,以及从地方政府提供的农民登记系统中获取的田间信息,均用作参考。通过使用四种不同的方法(最大似然法,支持向量机,基于条件的方法和最近邻居)对卫星图像进行分类来完成此应用程序。获得结果后,将获得的小麦类别转换为矢量格式,以覆盖在卫星图像上以进行可视化分析。介绍并比较了通过每种方法获得的小麦等级面积。还通过与土耳其统计研究所的数据进行比较来评估结果。所有方法提供的结果均接近土耳其统计局的记录。即使结果彼此之间也没有显着差异,使用支持向量机分类法确定的小麦面积也比其他地区要好。通过计算总精度和KAPPA / KIA系数进行精度评估。准确性评估分析表明,三种监督方法要优于无监督方法。作为未来的研究,计划使用多时间数据集对这四种分类方法进行评估。

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