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时序滤波对农作物遥感识别的影响
引用本文:张馨予,蔡志文,杨靖雅,王聪,魏浩东,胡琼,徐保东. 时序滤波对农作物遥感识别的影响[J]. 农业工程学报, 2022, 38(4): 215-224
作者姓名:张馨予  蔡志文  杨靖雅  王聪  魏浩东  胡琼  徐保东
作者单位:华中农业大学资源与环境学院/宏观农业研究院,武汉 430070;华中师范大学城市与环境科学学院,武汉 430079;华中农业大学资源与环境学院/宏观农业研究院,武汉 430070;中国科学院空天信息创新研究院/遥感科学国家重点实验室,北京 100101
基金项目:国家自然科学基金(42001303,41901380,42101391);国家重点研发计划(2019YFE0126700);中国科协青年人才托举工程项目(2020QNRC001);中央高校基本科研业务费专项基金(2662021JC013,CCNU20QN032)
摘    要:获取长时序且高质量遥感观测数据是捕捉不同农作物关键物候节律信息,进而获取高精度农作物空间分布信息的关键.受云雨天气影响,卫星遥感易产生低质量观测,其往往不参与或采用时序滤波处理后再用于农作物遥感识别.然而,时序滤波对于农作物遥感识别的影响机制尚未摸清,为高效且高精度农作物遥感制图带来了较大挑战.该研究基于HLS(Har...

关 键 词:农作物  遥感  识别  时序滤波  随机森林  MODIS  HLS
收稿时间:2021-10-18
修稿时间:2022-02-09

Impacts of temporal smoothing methods on crop type identification
Zhang Xinyu,Cai Zhiwen,Yang Jingy,Wang Cong,Wei Haodong,Hu Qiong,Xu Baodong. Impacts of temporal smoothing methods on crop type identification[J]. Transactions of the Chinese Society of Agricultural Engineering, 2022, 38(4): 215-224
Authors:Zhang Xinyu  Cai Zhiwen  Yang Jingy  Wang Cong  Wei Haodong  Hu Qiong  Xu Baodong
Affiliation:1. Macro Agriculture Research Institute, College of Resources and Environment, Huazhong Agricultural University, Wuhan 430070, China;;2. School of Urban and Environmental Sciences, Central China Normal University, Wuhan 430079, China;; 1. Macro Agriculture Research Institute, College of Resources and Environment, Huazhong Agricultural University, Wuhan 430070, China; 3. State Key Laboratory of Remote Sensing Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100101, China
Abstract:Abstract: Accurate crop type mapping depends mainly on the reliable acquisition of multi-temporal remote sensing data with high quality. Traditionally, some satellite observations can be easily affected by cloudy and rainy weather, thereby generating undesired images. These low-quality images can normally be excluded or reconstructed using the temporal filters for the remote sensing classification in practice. However, temporal filtering can also eliminate some useful information in the temporal trajectory of original images, leading to the uncertain identification of crop types. Meanwhile, the land cover mixtures within a pixel grid can pose a great influence on the performance of temporal filters, with the decrease in the spatial resolution of images. This study aims to comprehensively investigate the impacts of Savitzky-Golay (S-G) and Harmonic Analysis of Time Series (HANTS) filter on the crop type mapping over different spatial resolutions using the random forest classifier, Harmonized Landsat Sentinel-2 (HLS, 30 m), and Moderate-resolution Imaging Spectroradiometer (MODIS, 500 m) data. Specifically, six indices of time-series vegetation were selected to identify three crop types (soybeans, corn, and rice) in Heilongjiang Province in China. According to the derived maps of crop type, the temporal filtering posed a greater impact on the spatial distribution of crop classification in the decametric spatial resolution image (HLS) than that in MODIS. The evaluation results showed that the overall accuracy of the crop type maps derived by S-G and HANTS was reduced by 1.73 and 5.17 percentage points, compared with the original observations for decametric resolution images. By contrast, the overall accuracies were 84.73%, 85.51%, and 83.05% using the original, S-G, and HANTS observations over the low-resolution images, respectively, indicating no significant change in the crop type mapping before and after temporal filtering. Compared with the time-series vegetation indices over different crop types, both the intra- and inter-class differences of crop types changed significantly after temporal filtering in the decametric resolution images, indicating some great impacts on the accuracy of crop type mapping. Specifically, the inter-class difference between two similar crop types was incorrectly identified as the inherent noise by the temporal filtering. In this case, the temporal filtering had reduced the difference for the low accuracy of crop type mapping. For instance, the user''s accuracies of soybeans and corn were reduced by 4.60 and 8.77 percentage points, respectively, before and after the HANTS filter. The temporal filtering had improved the accuracy of crop type identification (e.g., the user''s accuracy of rice was improved after HANTS filter), because the significant intra-class difference of each crop type was further reduced in the time-series vegetation indices, compared with the observations without filtering. In terms of crop type mapping on the low-resolution images (i.e., MODIS), the temporal filtering posed no impacts on the accuracy of crop type identification, particularly for the larger effects of land cover mixtures in the pixel grid. Consequently, there were some impacts of temporal filtering on the performance of crop type mapping over different spatial scales. The finding can provide theoretical references and technical support for the spatial distribution of crop types.
Keywords:crops   remote sensing   identification   temporal filtering   random forest   MODIS   HLS
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