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基于改进空间引力模型的农作区遥感影像亚像元定位
引用本文:吴尚蓉,刘 佳,杨 鹏. 基于改进空间引力模型的农作区遥感影像亚像元定位[J]. 农业工程学报, 2013, 29(1): 151-157
作者姓名:吴尚蓉  刘 佳  杨 鹏
作者单位:1. 中北大学电子测试技术国家重点实验室,太原 030051;2. 中国农业科学院农业资源与农业区划研究所,北京 1000813. 农业部农业信息技术重点实验室,北京 100081;2. 中国农业科学院农业资源与农业区划研究所,北京 1000813. 农业部农业信息技术重点实验室,北京 100081
基金项目:国家重大科技专项(E0201/1112);国家自然科学基金项目(41171328)
摘    要:针对空间引力模型在遥感影像亚像元定位中存在的不足,该文提出了一种基于改进空间引力模型的农作区遥感影像亚像元定位方法。研究首先分析了原始空间引力模型运行速度慢、定位精度低的原因。然后,分别改进了空间引力模型的初始化算法和优化算法,改进后的初始化算法使亚像元更具空间相关性;改进后的优化算法在初始化的基础上显著提高了模型的运行速度和定位精度。最后,以吉林省镇赉县农作区SPOT-5影像为例,在原图像空间分辨率退化4倍的尺度下进行遥感影像亚像元定位试验。结果表明,改进模型与原始模型相比亚像元定位精度提高了6.67个百分点,运行速度提高了10.69倍。因此,改进空间引力模型在地物类别相对复杂的农作区遥感影像亚像元定位中,可以更好的突破空间分辨率的限制,为确保农作物种植面积提取、区域产量遥感估测提供有力支撑。

关 键 词:遥感  模型  优化  亚像元定位  硬分类  分辨率  农作区
收稿时间:2012-08-15
修稿时间:2012-12-26

Sub-pixel mapping in farming area remote sensing image based on improved spatial gravity model
Wu Shangrong,Liu Jia and Yang Peng. Sub-pixel mapping in farming area remote sensing image based on improved spatial gravity model[J]. Transactions of the Chinese Society of Agricultural Engineering, 2013, 29(1): 151-157
Authors:Wu Shangrong  Liu Jia  Yang Peng
Affiliation:2,3(1.National Key Laboratory for Electronic Measurement Technology,North University of China,Taiyuan 030051,China;2.Institute of Agricultural Resources and Regional Planning,Chinese Academy of Agricultural Sciences,Beijing 100081,China;3.Key Laboratory of Agri-informatics,Ministry of Agriculture,Beijing 100081,China)
Abstract:Abstract: Due to the limitation of the sensor spatial resolution and the complexity and diversity of objects, mixed image pixels generally exist in remote sensing images. Pixel unmixing can only get the composition ratio of each endmember in the pixel, rather than the spatial distribution of each endmember. Sub-pixel mapping was proposed to solve above-mentioned problem. Spatial gravity model is an iterative solution of sub-pixel mapping which is based on the sub-pixel scale, the spatial correlation is expressed by gravitational relationship between sub-pixels and neighboring mixed pixels. This model does not require complicated parameters and its calculation is relatively simple, so it has the advantages of iterative solution and has the potential to improve mapping accuracy and speed. From the discussion above, this paper proposes a sub-pixel mapping method based on improved spatial gravity model for farming area remote sensing image. Firstly, this paper analyses the initialization algorithm and optimization algorithm of original spatial gravity model. The original initialization algorithm uses random assignment, which affects the calculation accuracy of neighboring mixed pixel gravity values, decreases the mapping accuracy, increases the number of iterations of the whole model, and decreases the overall speed of the model; Based on original initialization algorithm, the original optimization algorithm also affect the model accuracy and speed to a certain extent. Secondly, this paper improves the initialization algorithm and optimization algorithm of spatial gravity model. Improved initialization algorithm enables the model to combine the advantages of direct solution and iterative solution, after initialization data have more spatial correlation, the initialization accuracy and speed are improved compared with random assignment; Improved optimization algorithm optimizes data on the basis of initialization, greatly reduces the number of iterations and improves the speed. Lastly, this model was used to analyses the farming area remote sensing image in Zhenlai county, Jilin province, and a remote sensing image sub-pixel mapping experiment was conducted with the original image spatial resolution degraded by four times. Every 4×4 pixel value in original SPOT-5 remote sensing image was averaged once according to weight to make the spatial resolution degrade from 10 to 40 m, and the original spatial gravity model and improved model was used to map the degraded image sub-pixel. The results indicate that compared with the original one, the improved model can improve the precision of sub-pixel mapping by 6.67% and increase the operation speed by 10.69 times. Therefore, the improved model can break through the limits of spatial resolution in remote sensing image of farming area with relatively complex objects, and effectively bolster the precision of the crop planting area extraction and remote sensing-based regional yield estimation.
Keywords:remote sensing   models   optimization   sub-pixel mapping   hard classification   resolution   farmland
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