利用高分二号高分辨率影像提取茶园

Yunzhi Chen, Jinhan Lin, Yankui Yang, Xiaoqin Wang
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Secondly, spectral enhancement was carried on multi-spectral bands.Difference between two vegetation indexes, namely, normalized difference vegetation index and modified normalized difference vegetation index was calculated and named as DNDVI. In DNDVI image, the brightness difference between tea plantation and background was improved and shadowed area in either index image was reduced. Thirdly, gray level co-occurrence matrix (GLCM), Gabor filter, local binary patterns (LBP) extraction, and method combined LBP and Gabor was carried on pan image to construct texture features. Among eight common features based GLCM, contrast, dissimilarity, entropy, variance, tea plantation area was darker. In homogeneity and angular second moment, this phenomena is just the opposite. In mean and correlation, there was no obvious difference between target tea plantation and background. So the gray level co-occurrence texture (GLCT) subtract sum of second two features from sum of the first four feature was used as final GLCM feature, and window size for GLCM set to be 15 was preferred. Multi-scale and multidirectional Gabor texture with max frequency set to be 1HZ was derived. For LBP, the operator LBP16, 2 with rotation invariance was tested to be the best. Finally, five schemes combine these spectral and textural features as inputs of classifier were evaluated in term of classification accuracy. Six categories including tea plantation, forest, roads, water, build-up, bare soil, shadows were classified by support vector machine. The result showed that overall accuracy range from 75.55% to 89.11%, Kappa coefficient range from 0.613 to 0.843, for plantation, user accuracy range from 84.95% to 100%, producer accuracy range from 53.29% to 91.53%. Gaofen-2 show its capacity to map the tea plantation area accurately. 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引用次数: 0

摘要

茶是中国最受欢迎的饮料。茶园的空间分布信息为地方政府管理提供了依据。选取乌龙茶名产地安溪县中西部面积99.77km2的蓝田县作为研究区域,利用2015年1月22日获取的中国高分二号高分辨率卫星影像,对茶园提取方法进行研究。为了构建最佳特征进行分类,首先在不同原始光谱波段组合上计算最优指数因子(OIF),并选择OIF最大的特征;其次,对多光谱波段进行光谱增强。计算归一化植被指数和修正归一化植被指数两个植被指数之间的差值,并命名为DNDVI。在DNDVI图像中,改善了茶园与背景的亮度差,减小了两种指数图像的阴影面积。第三,对pan图像进行灰度共生矩阵(GLCM)、Gabor滤波、局部二值模式(LBP)提取以及LBP和Gabor相结合的方法来构建纹理特征;在基于GLCM的8个常见特征中,对比度、差异性、熵、方差、茶园面积偏暗。在均匀性和角秒矩中,这种现象正好相反。在平均值和相关系数上,目标茶园与背景茶园之间无明显差异。因此,将灰度共生纹理(GLCT)从前四个特征的和中减去后两个特征的和作为最终的GLCM特征,并将GLCM的窗口大小设置为15。导出了最大频率为1HZ的多尺度多向Gabor纹理。对于LBP,具有旋转不变性的算子lbp16,2被证明是最好的。最后,结合光谱特征和纹理特征作为分类器的输入,对5种方案的分类精度进行了评价。通过支持向量机将茶园、森林、道路、水、堆积、裸土、阴影等6个类别进行分类。结果表明:总体正确率为75.55% ~ 89.11%,Kappa系数为0.613 ~ 0.843,人工林用户正确率为84.95% ~ 100%,生产者正确率为53.29% ~ 91.53%。高分二号显示了其准确绘制茶园面积的能力。同时利用光谱和纹理特征的方案比仅利用光谱的方案性能要好得多。band1、band3、band4、DNDVI、LBP_Gabor方案组合优于其他方案,总体准确率和Kappa系数最高。高分辨率图像的纹理特征有助于提高图像的精度,如何构建合适的纹理特征和融合不同的纹理特征值得进一步研究。本文提出的采茶方法适用于国家行政层面的采茶。
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Extraction of tea plantation with high resolution Gaofen-2 image
Tea is the most popular drink in China. The spatial distribution information of tea plantation is useful for local government management. Lantian Country, with an area of 99.77km2, located in the midwest of Anxi County, which is famous for Oolong Tea, was chosen as study area, and image from Chinese high resolution satellite Gaofen-2 acquired on Jan 22, 2015 was used to study the method of tea plantations extraction. In order to construct best features for classification, optimum index factor (OIF) were firstly calculated on different original spectral bands combinations and the one with max OIF was chosen. Secondly, spectral enhancement was carried on multi-spectral bands.Difference between two vegetation indexes, namely, normalized difference vegetation index and modified normalized difference vegetation index was calculated and named as DNDVI. In DNDVI image, the brightness difference between tea plantation and background was improved and shadowed area in either index image was reduced. Thirdly, gray level co-occurrence matrix (GLCM), Gabor filter, local binary patterns (LBP) extraction, and method combined LBP and Gabor was carried on pan image to construct texture features. Among eight common features based GLCM, contrast, dissimilarity, entropy, variance, tea plantation area was darker. In homogeneity and angular second moment, this phenomena is just the opposite. In mean and correlation, there was no obvious difference between target tea plantation and background. So the gray level co-occurrence texture (GLCT) subtract sum of second two features from sum of the first four feature was used as final GLCM feature, and window size for GLCM set to be 15 was preferred. Multi-scale and multidirectional Gabor texture with max frequency set to be 1HZ was derived. For LBP, the operator LBP16, 2 with rotation invariance was tested to be the best. Finally, five schemes combine these spectral and textural features as inputs of classifier were evaluated in term of classification accuracy. Six categories including tea plantation, forest, roads, water, build-up, bare soil, shadows were classified by support vector machine. The result showed that overall accuracy range from 75.55% to 89.11%, Kappa coefficient range from 0.613 to 0.843, for plantation, user accuracy range from 84.95% to 100%, producer accuracy range from 53.29% to 91.53%. Gaofen-2 show its capacity to map the tea plantation area accurately. Schemes utilized spectral and textural features together perform much better than that utilized spectral only. The scheme combination of band1, band 3, ban4, DNDVI, LBP_Gabor outperformed other Scheme, with the highest overall accuracy and Kappa coefficient. The textures feature of high resolution image helps to improve the accuracy, and the way to construct suitable texture feature and merge different texture feature deserved study more. The proposed method to extract tea plantation is applicable at administrative level of country.
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