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Assessing wheat residue cover with hyperspectral remote sensing

机译:利用高光谱遥感评估小麦残留量

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Hyperspectral remote sensing can aid in discriminating crop residue owing to the ability of narrow bands to capture the unique absorption feature of soil and residue. The present study was carried out to find out the suitable narrow spectral bands and hyper-spectral indices for discriminating wheat residue (stubble and burnt). Ground spectra of wheat residue and the adjoining soil were collected using the ASD fieldspecTM spectroradiometer. The best spectral range was derived using the Stepwise Discriminating Analysis (SDA). 'F'statistics from one-way ANOVA was used to find out the best index for discriminating wheat residue from soil. EOl-Hyperion data over Anand-Borsad region of Gujarat state in India was acquired free of cost from USGS earth explorer website to apply the field based result over the Hyperion scene. Spectral Angle Mapper (SAM) classification scheme was used to generate the wheat residue cover over the Hyperion scene. Among the hyperspectral indices evaluated for this study the Cellulose Absorption Index (CAI) was found to be the best and hence CAI was used to classify the Hyperion scene for discriminating crop residue in field and also the burnt wheat residue. Results indicated that the wave bands at 10 nm width in the SWIR spectral region specifically from 1500-1700nm and 1900 to 2300nm are most suitable for wheat residue discrimination. The SAM classification technique is suitable for classifying the wheat residues with an overall accuracy of around 80 % whereas classification based on CAI could be used successfully to identify both wheat stubble and the burnt residues. This study concluded that wheat residue can be mapped for a large area with an accuracy of 80 % using the space borne hyperspectral data with.
机译:由于窄带能够捕获土壤和残留物的独特吸收特征,因此高光谱遥感可以帮助区分农作物残留物。进行本研究是为了找出合适的窄光谱带和高光谱指数来区分小麦残渣(发茬和烧焦)。使用ASD fieldspecTM光谱仪收集了小麦残留物和邻近土壤的地面光谱。使用逐步鉴别分析(SDA)得出最佳光谱范围。使用单向方差分析的“ F”统计量找出区分小麦残留物的最佳指标。可从USGS地球资源管理器网站免费获取印度古吉拉特邦Anand-Borsad地区的EOl-Hyperion数据,以将基于现场的结果应用于Hyperion场景。光谱角映射器(SAM)分类方案用于生成Hyperion场景上的小麦残渣覆盖。在这项研究评估的高光谱指数中,纤维素吸收指数(CAI)被认为是最好的,因此CAI被用来对Hyperion场景进行分类,以区分田间作物残渣和烧过的小麦残渣。结果表明,SWIR光谱区域中10nm宽度处的波段,特别是从1500-1700nm和1900至2300nm,最适合于小麦残留物的鉴别。 SAM分类技术适用于以80%左右的整体准确度对小麦残渣进行分类,而基于CAI的分类可以成功地用于识别麦茬和残渣。这项研究得出的结论是,利用星载高光谱数据,可以将小麦残留物以80%的精度绘制在大面积上。

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