Automatized recognition of urban vegetation and water bodies by Jilin-1А satellite images

Pub Date : 2021-01-01 DOI:10.15407/knit2021.04.042
A. L. Makarov, Dnipropetrovsk Ukraine Yangel Yuzhnoye State Design Office, K. Belousov, D. N. Svinarenko, V. S. Khoroshylov, D. Mozgovoy, V. M. Popel', Dnipro Ukraine Yuzhnoye State Design Office
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Abstract

The results of testing the developed techniques for automatized recognition of vegetation and water bodies on the urban territory by multispectral images from the Jilin-1А satellite are given.The research included automatized recognition of vegetation and water bodies on the selected observation territory based on images with super high spatial resolution in the visual and infrared range and consequent comparison of the obtained results with the results of visual decoding. The obtained results of processing the images from the Jilin-1А satellite in accordance with the proposed techniques confirmed the sufficiently high accuracy of automatized edge enhancement of recognized objects as compared to the results of interactive visual recognition of these images. Different test areas provided a good separation of vegetation and water types with the same thresholding customization. The accuracy of automatized classification of vegetation and water bodies (without considering the standard errors) for different test areas was within 81...92%, and values of kappa-coefficient were within 0.68 to 0.85. Comparison of normalized index images received from Jilin-1А and Sentinel-2A satellites showed slight discordance in NDVI values and significant discordances for NDWI and MNDWI that are caused by the usage of different spectral channels (SWIR and NIR). These discordances can be sufficiently reduced when using correction coefficients.Analysis of the influence of output image resolution reduction (from 10 to 8 bit) and subsequent informational compressing (JPEG lossy and JPEG2000 lossless) on results of automatized recognition of vegetation and water bodies confirmed the validity and efficiency of these techniques. The volume of saved and transmitted files significantly decreased (in 80…100 times) with a slight reduction of classification accuracy (by 1...2 %). The proposed techniques make it possible to increase significantly the efficiency and probability of renewing maps of big cities and to reduce financial expenditures as compared to the traditional ground GPS-surveying and aerosurveying. The high-level automatization of image processing and minimization of necessary calculations (as compared to techniques that use complex classifiers and neural networks) allow to implement the developed technique as a geographic information web service that satisfies the needs of a wide circle of government services and commercial structures and can be useful for megalopolis population and tourists.
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利用Jilin-1А卫星图像自动识别城市植被和水体
给出了利用Jilin-1А卫星多光谱图像对所开发的城市植被水体自动识别技术进行测试的结果。研究基于超高空间分辨率的可见光和红外影像,对选定观测区域内的植被和水体进行自动识别,并与视觉解码结果进行对比。根据所提出的技术对Jilin-1А卫星图像进行处理的结果证实,与对这些图像进行交互式视觉识别的结果相比,识别目标的自动化边缘增强具有足够高的精度。不同的测试区域提供了良好的植被和水类型的分离,具有相同的阈值定制。不同试验区植被和水体自动分类精度(不考虑标准误差)在81…92%, kappa系数在0.68 ~ 0.85之间。通过Jilin-1А和Sentinel-2A卫星的归一化指数图像对比发现,由于使用不同的光谱通道(SWIR和NIR), NDVI值略有差异,NDWI和MNDWI值存在显著差异。当使用校正系数时,这些不一致可以充分减少。分析了输出图像分辨率降低(从10位降至8位)和随后的信息压缩(JPEG有损和JPEG2000无损)对植被和水体自动识别结果的影响,验证了这些技术的有效性和高效性。保存和传输文件的数量显著减少(80…100倍),分类精度略有降低(1…2%)。与传统的地面gps测量和航空测量相比,拟议的技术可以大大提高更新大城市地图的效率和可能性,并减少财政支出。图像处理的高度自动化和必要计算的最小化(与使用复杂分类器和神经网络的技术相比)允许将开发的技术实现为地理信息网络服务,满足广泛的政府服务和商业结构的需要,并可对特大城市人口和游客有用。
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