文可, 姚焕玫, 黄以, 陈华权, 廖鹏任. 基于GEE的广西北部湾沿海水产养殖池塘遥感提取[J]. 农业工程学报, 2021, 37(12): 280-288. DOI: 10.11975/j.issn.1002-6819.2021.12.032
    引用本文: 文可, 姚焕玫, 黄以, 陈华权, 廖鹏任. 基于GEE的广西北部湾沿海水产养殖池塘遥感提取[J]. 农业工程学报, 2021, 37(12): 280-288. DOI: 10.11975/j.issn.1002-6819.2021.12.032
    Wen Ke, Yao Huanmei, Huang Yi, Chen Huaquan, Liao Pengren. Remote sensing image extraction for coastal aquaculture ponds in the Guangxi Beibu Gulf based on Google Earth Engine[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2021, 37(12): 280-288. DOI: 10.11975/j.issn.1002-6819.2021.12.032
    Citation: Wen Ke, Yao Huanmei, Huang Yi, Chen Huaquan, Liao Pengren. Remote sensing image extraction for coastal aquaculture ponds in the Guangxi Beibu Gulf based on Google Earth Engine[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2021, 37(12): 280-288. DOI: 10.11975/j.issn.1002-6819.2021.12.032

    基于GEE的广西北部湾沿海水产养殖池塘遥感提取

    Remote sensing image extraction for coastal aquaculture ponds in the Guangxi Beibu Gulf based on Google Earth Engine

    • 摘要: 沿海水产养殖池塘带来经济效益的同时,也会引起诸多环境问题,了解其空间分布对于海岸带的科学管理和渔业可持续发展具有重要意义。广西北部湾海岸带地形错综复杂,养殖池塘沿岸线散乱分布,导致传统遥感识别方法难以实现高精度提取。针对此问题,该研究提出一种基于Google Earth Engine(GEE)平台和全年Sentinel-1和Sentinel-2时序遥感数据的水产养殖池塘识别方法,结合多阈值分割和面向对象分类提取2019年广西北部湾海岸带的水产养殖池塘。结果表明:1)广西北部湾海岸带养殖池塘面积总计199.3 km2,遍布整个沿岸地区;识别结果总体精度达到0.921,Kappa系数为0.842;2)选取4个典型区域,对比该研究方法提取结果与Google高清影像目视解译结果,在规模化集聚型养殖区域中,识别结果占目视解译的面积比例达到90%以上,在排布密集的小型池塘区域面积占比也能达到80.76%;3)以时序遥感数据作为分类特征值,能够有效排除废弃池塘、水稻田和季节性水域。该方法在大范围复杂环境中仍具有良好性能,显著提高了水产养殖池塘遥感识别的精度,能够为海岸带生态环境的智能监控、养殖区域空间优化提供技术支持。

       

      Abstract: Abstract: Aquaculture ponds have expanded significantly with the increase of food demand under an ever-increasing population, especially in the coastal areas of China. However, a large number of aquaculture ponds have posed a great threat to the ecological environment, such as the destruction of coastal wetland, together with the water and soil pollution, although economic benefits have been gained during this time. Therefore, the spatial distribution of aquaculture ponds is of great significance for the scientific management of coastal zones and the sustainable development of fishery. There are many bays, lagoons, and coastal marshes in the Beibu Gulf of the Guangxi Zhuang Autonomous Region in China, particularly where the coastal terrain is more complex. Moreover, there is some competition between aquaculture land and other land-use types, leading to the fragmentation of aquaculture land patches. Furthermore, there is also limit utilization of traditional remote sensing to identify the aquaculture ponds in this area. In this study, taking the Beibu Gulf of Guangxi province in China as the study area, a new remote sensing identification was proposed using Google Earth Engine (GEE) platform and time-series remote sensing data. Firstly, all Sentinel-1 and Sentinel-2 remote sensing datasets were collected in 2019. The following classification eigenvalues were constructed that: 1) Inundation frequency (IF) was used to evaluate the water bodies at pixel scale. 2) The annual mean value of pixels SWIR2 and VH were calculated to eliminate the water identification error caused by building shadow and impervious water surface. 3) Image collection of NDWI time-series was integrated to calculate the mean value between 85%~95% in an ascending order at the pixel level, particularly for better identification of dikes between ponds. The optimal segmentation threshold was then determined to extract the aquaculture ponds using a large number of training books. Finally, the object-oriented method was used to screen out the objects for better classification effects. The segmentation was also carried out again to improve the recognition. The results showed that the total area of aquaculture ponds was 199.3km2, covering the entire coastal area. Furthermore, the overall accuracy of identification was 0.921, and the Kappa coefficient was 0.842. Four regions were selected as examples to visually interpret the aquaculture ponds using the Google high-resolution images, thereby further evaluating the validity of identification. The identified area accounted for more than 90% of the area of visual interpretation in the large-scale concentrated aquaculture ponds, while 80.76% of the area of densely arranged small ponds, compared with the visual interpretation. The obtained values were closer to the actual aquaculture surface area. It infers that the temporal remote sensing data can widely be expected to serve as the classification characteristic value, while effectively exclude the abandoned ponds, paddy fields, and seasonal waters. A better performance was achieved in a large-scale complex environment, particularly on higher efficiency of remote sensing identification and extraction of aquaculture ponds. This finding can provide sound technical support to the AI monitoring the ecological environment and spatial optimization of coastal areas in modern aquaculture.

       

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