APPLICATION OF SPOT6/7 SATELLITE IMAGERY FOR RICE FIELD MAPPING BASED ON TRANSFORMATIVE VEGETATION INDICES

Nirmawana Simarmata, Z. A. Nadzir, L. Agustina
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引用次数: 1

Abstract

Agriculture plays an essential role in national economic development. This fact made agricultural land one of the main unique production factors irreplaceable due to its importance in the agricultural business processes. However, a persistent problem of arable land conversion and land degradation have become more massive throughout the years. Meanwhile, the continuation of existing agricultural land and transformation into new agricultural land is inherently small. This research aimed to map agricultural land in sustainable agricultural development. Several transformative vegetation indices: NDVI, SAVI, and TSAVI, applied SPOT 6/7 satellite imagery in Lampung Province. Results show that the TSAVI value is the highest, with a 1.80 value, which indicates that this index value is very dense vegetation. Meanwhile, the NDVI index, which has a minimum value of -1.02, suggests that this index value is a non-vegetation object. However, high or low value does not indicate the rigorousness and Accuracy of an index. All three indices’ results are then overlaid with the satellite imagery classification process result. The accuracy result shows that the agricultural land has a maximum of 100% producer accuracy while the user accuracy value is 87.87%. Overall, for NDVI, the Accuracy was valued at 90.25%, which could be classified as a reasonable classification result. SAVI has a PA value of 97.85%, UA 85.20% and OA 86.63%, while the TSAVI Index has a PA value of 98.23%, UA 86.16% and OA 87.63%. This accuracy value indicates that the map has good results but judging from the magnitude of the highest accuracy value obtained from NDVI, it can be concluded that NDVI is the best index to determine paddy fieldsKeywords: Agricultural Land, SPOT 6/7, NDVI, SAVI, TSAVI.
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基于变换型植被指数的spot6/7卫星影像稻田制图应用
农业在国民经济发展中占有重要地位。由于在农业经营过程中的重要性,这一事实使农业用地成为不可替代的主要独特生产要素之一。然而,耕地转用和土地退化这一长期存在的问题多年来变得更加严重。同时,现有农用地的延续和向新农用地的转化本身就很小。本研究旨在绘制农业可持续发展中的农业用地图谱。几种变革性植被指数:NDVI、SAVI和TSAVI,应用SPOT 6/7卫星影像在楠蓬省进行。结果表明,TSAVI值最高,为1.80,表明该指数值植被密度较大。同时,NDVI指数最小值为-1.02,表明该指标值为非植被对象。但是,数值的高低并不表示该指标的严谨性和准确性。然后将所有三个指数的结果与卫星图像分类过程的结果叠加。精度结果表明,农用地生产者精度最高可达100%,用户精度最高可达87.87%。总体而言,对于NDVI,准确率为90.25%,可以归类为合理的分类结果。SAVI的PA值为97.85%,UA为85.20%,OA为86.63%;TSAVI指数的PA值为98.23%,UA为86.16%,OA为87.63%。从NDVI获得的最高精度值的大小来看,NDVI是确定水田的最佳指标。关键词:农业用地,SPOT 6/7, NDVI, SAVI, TSAVI。
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