首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ESTIMATION OF COTTON AND MAIZE CROP AREA IN PERAMBALUR DISTRICT OF TAMIL NADU USING MULTI-DATE SENTINEL-1A SAR DATA
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ESTIMATION OF COTTON AND MAIZE CROP AREA IN PERAMBALUR DISTRICT OF TAMIL NADU USING MULTI-DATE SENTINEL-1A SAR DATA

机译:泰米尔纳德邦的棉花和玉米作物区估算泰米尔纳德邦的棉花和玉米作物区使用多日哨兵-1A SAR数据

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Crop classification is a key issue for agricultural monitoring using remote sensing techniques. Synthetic Aperture Radar (SAR) data has an advantage in crop classification because of its all-weather imaging capabilities. The objective of this study was to investigate the capability of SAR data for estimation of cotton and maize area in Perambalur district of Tamil Nadu. The multi-temporal Sentinel-1 SAR data was acquired from 2nd September, 2017 to 24th January, 2018. Both the Vertical-Vertical (VV) and Vertical-Horizontal (VH) polarized data was used. Ground truth data collection was performed for cotton and maize during the vegetative, flowering and harvesting stages. Sixty per cent of the ground truth data were used for training and remaining forty per cent were utilized for validation. The temporal backscattering coefficient (σ0) for cotton and maize were extracted using the training datasets.. The mean backscattering values for cotton crop during the entire cropping period had a range from −11.729 dB to −8.827 dB and from −19.167 dB to −14.186 dB for VV and VH polarization respectively. For maize crop it ranged from −11.248 dB to −8.878 dB and from −19.043 dB to −14.753 dB for VV and VH polarized data respectively. The Spectral Angle Mapper (SAM) and Decision Tree classifier (DT) methods were adopted for cotton and maize area estimation. SAM classified 73259 and 51489 hectares (ha) as cotton and maize respectively in VV polarization. DT classified the area of 61501 and 64530 ha for cotton and maize respectively in VH polarization. The accuracy measures, such as overall accuracy, producer’s accuracy and user’s accuracy and kappa coefficient were estimated. SAM classifier exhibits the overall accuracy of 73.3% for VV Decision tree classifier reported the overall accuracy of 75.0% for VH. It is evident from the present study, that the multi-temporal Sentinel-1 SAR sensor can be well used for the discrimination of cotton and maize crops because of its high temporal resolution which captures the complete phenology of the crops during the cropping period.
机译:作物分类是利用遥感技术进行农业监测的关键问题。合成孔径雷达(SAR)数据由于其全天候成像能力而具有作物分类的优势。本研究的目的是研究SAR数据估算泰米尔纳德邦Perbamalur区棉花和玉米地区的数据。多时间的Sentinel-1 SAR数据从2017年9月2日到2018年1月24日收购。使用垂直垂直(VV)和垂直水平(VH)偏振数据。在营养,开花和收获阶段期间对棉花和玉米进行了地面真理数据收集。六十%的地面真理数据用于培训,剩余40%用于验证。使用训练数据集提取棉花和玉米的时间背散射系数(Σ0)。整个裁剪期间棉花作物的平均背散射值的范围为-11.729 dB至-8.827 dB,从-19.167 dB到-14.186分别为VV和VH偏振的DB。对于玉米作物,它分别从-11.248 dB到-8.878 dB到-11.8.878 dB,分别为-19.043 dB至-14.753 dB,分别为VV和VH偏振数据。采用棉花和玉米区域估计采用光谱角映射器(SAM)和决策树分类器(DT)方法。 SAM分类为73259和51489公顷(HA)分别为棉花和玉米在VV极化中。 DT分别在VH极化中分为棉花和玉米的面积61501和64530公顷。估计了总体准确性,生产者的准确性和用户准确性和κ系数的准确度措施。 SAM分类器展示VV决策树分类器73.3%的总精度报告了VH的总精度为75.0%。从本研究中明显看出,由于其高颞分辨率,可以很好地用于棉花和玉米作物的鉴别,这是捕获在种植期间的作物的完整候选的棉花和玉米作物。

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