Sentinel 1 Classification for Garlic Land Identification using Support Vector Machine

M. A. Agmalaro, I. S. Sitanggang, Mia Larisa Waskito
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引用次数: 5

Abstract

The high demand for garlic is not comparable with the results of domestic garlic production. Indonesian garlic needs fulfilled by imports up to 95% of national needs. The Ministry of Agriculture has a program of the cultivation of garlic in Sembalun, East Lombok, West Nusa Tenggara in order to realize garlic self-sufficiency. This study aims to identify the garlic land in Sembalun using the Sentinel 1A satellite image. The image consists of dual-polarization VV and VH values. Images were acquired in July and November 2019 for the area of Sembalun, East Lombok, West Nusa Tenggara Indonesia. Preprocessing data steps involve applying orbits, calibrations, speckle filters, terrain corrections, and linear to dB. Support vector machine algorithm is used to classify Sentinel 1A images. Hyper parameter tuning was done to get the best parameters which are regularization parameter (C) 10, gamma 1, and the RBF kernel. The classification model has accuracy of 76%, precision of 71% and recall of 89%.
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基于支持向量机的大蒜地Sentinel 1分类
对大蒜的高需求与国内大蒜生产的结果无法相提并论。进口大蒜满足了印尼国内大蒜需求量的95%。农业部在森巴伦、东龙目岛、西努沙登加拉有一个大蒜种植计划,以实现大蒜自给自足。本研究旨在利用Sentinel 1A卫星图像识别Sembalun的大蒜地。图像由双偏振VV和VH值组成。2019年7月和11月获得了印度尼西亚东龙目岛、西努沙登加拉岛Sembalun地区的图像。预处理数据步骤包括应用轨道、校准、散斑滤波器、地形校正和线性到dB。采用支持向量机算法对Sentinel 1A图像进行分类。通过超参数调优得到了正则化参数(C) 10、gamma 1和RBF核的最佳参数。该分类模型准确率为76%,精密度为71%,召回率为89%。
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