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Improving the resolution of UAV-based remote sensing data of water quality of Lake Hachiroko, Japan by neural networks

机译:神经网络改善日本湖湖滨河水质水质遥感数据的分辨率

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Remote sensing techniques for periodically collecting global data have been widely used for water quality monitoring. Satellites with a ground resolution of 10 to 30 m obtain information over broad areas, making it difficult to use them to evaluate local water quality. Methods for improving satellite data resolution al-low for water quality monitoring over both wide and local areas. However, previous studies have failed to target water bodies that undergo drastic changes; moreover, they have not sufficiently examined features contributing to resolution improvement. This study proposes a resolution improvement method using a neural network, which performs learning so that the output matches the high-resolution data when the target pixel and its surrounding pixels in the low-resolution data are input. Moreover, the band ratio of data obtained from an unmanned aerial vehicle was used in the learning process as an input feature. We investigated the (i) band ratio providing highly accurate resolution improvement and (ⅱ) application of a new resolution improvement method to the estimation of suspended solid conditions for water quality parameters. Finally, the proposed method was compared with the bicubic method for validation. The results indicate that the estimated map at the band ratio B/R in the resolution improvement data created via the proposed method can be used to greatly improve the resolution in areas with high levels of suspended solids, compared to the water quality estimation maps created using the bicubic method.
机译:定期收集全球数据的遥感技术已被广泛用于水质监测。地面分辨率为10至30米的卫星获取广泛区域的信息,使其难以使用它们来评估当地的水质。改进卫星数据分辨率Al-Low的方法,用于在广泛和局部区域进行水质监测。然而,以前的研究未能瞄准经历剧烈变化的水体;此外,他们没有充分检查有助于解决改进的特征。本研究提出了使用神经网络的分辨率改进方法,其执行学习,使得当输入目标像素及其周围的数据时,输出匹配高分辨率数据。此外,在学习过程中使用从无人航行车辆获得的数据的带比作为输入特征。我们研究了(i)频段比,提供了高度准确的分辨率改进和(Ⅱ)应用了一种新的分辨率改进方法,以估算水质参数的悬浮固体条件。最后,将所提出的方法与用于验证的双臂方法进行比较。结果表明,与使用使用的水质估计图相比,通过所提出的方法产生的分辨率改善数据中的估计图在通过所提出的方法产生的分辨率改进数据中的分辨率改进数据中的分辨率改进数据中的分辨率升高双臂方法。

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    《Oceanographic Literature Review》 |2021年第5期|1147-1148|共2页
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  • 入库时间 2022-08-19 02:27:28

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