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基于U-Net神经网络的CALIPSO产品漏检层次分类

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首先利用二维假设检验(2D-MHT)算法,实现了基于云-气溶胶激光雷达和红外探测者卫星(CALIPS O)探测的高精度层次检测。然后基于U-Net神经网络,以退偏比、色比、后向散射系数和纬度等为输入,构建云和气溶胶分类模型,对2D-MHT算法多检测的大气层次,即CALIPSO官方产品漏检层次进行云和气溶胶分类。为了保证与CALIPSO官方产品分类的空间分布一致性,本研究以长期的CALIPSO官方分类产品为参考对模型进行训练。独立验证实验结果表明,本研究构建的分类模型与CALIPSO官方产品的分类总体相似度可达90%。将本研究分类后结果(即同时包含CALIPSO成功检测与漏检层次)与Radar-Lidar联合观测进行比较。结果表明,本研究可以有效识别由于信噪比低而被官方算法丢失的云层信息,陆地和海洋区域CALIPSO云底探测误差分别减少约21%和25%。
Classification of Missed Layers in CALIPSO Products Based on U-Net Neural Network
Objective Clouds and aerosols play a crucial role in the Earth's atmospheric system,significantly impacting the Earth's radiation balance,water cycle,and air quality.Space-borne lidar serves as a unique tool for the vertical simultaneous detection of aerosols and clouds,providing the advantage of all-weather operation.The cloud-aerosol lidar and infrared pathfinder satellite observations(CALIPSO)satellite represents the most notable example of this technology.However,due to its low signal-to-noise ratio,traditional lidar layer detection algorithms based on slope and threshold often miss optically thin layers of clouds and aerosols.Therefore,we propose a U-Net neural network classification model based on a two-dimensional hypothesis testing layer detection algorithm(2DMHT-UNet)to achieve high-precision detection and classification of these missed layers.Methods We initially employ a two-dimensional hypothesis testing(2D-MHT)algorithm for high-precision layer detection of CALIPSO observations.Subsequently,we construct a cloud and aerosol classification model based on the U-Net neural network,using RGB inputs of optical signals such as depolarization ratio,color ratio,and backscatter coefficient.This model aims to categorize atmospheric layers detected by the 2D-MHT but missed by official CALIPSO products.To ensure spatial consistency with CALIPSO products,we use long-term CALIPSO official classification products(VFM)as the training set,validating model performance with independent samples.Furthermore,we compare the combined classification results of 2DMHT-UNet(including both successfully detected and missed layers by CALIPSO)with Radar-Lidar joint observation products for validation.Results and Discussions The model,trained using CALIPSO VFM official products as ground truth and validated for accuracy based on independent samples from one month,indicates a classification consistency of 89.4%(land)and 90.2%(sea),with accuracy above 88%for both day and night(Fig.2,Fig.3 and Table 2).Comparative results based on Radar-Lidar joint observations demonstrate that the model effectively identifies cloud information missed by CALIPSO VFM official products due to low signal-to-noise ratio,reducing the relative error in cloud base detection by 21%(land)and 25%(sea)(Fig.6).Conclusions The results demonstrate the excellent performance of 2DMHT-UNet in classifying atmospheric layers undetected by the CALIPSO official product.The 2DMHT-UNet algorithm significantly improves CALIPSO's ability to detect boundary layer clouds,especially over land.However,due to the similarity in properties between marine aerosols and thin water clouds,accurately distinguishing between them remains challenging and may lead to misclassifications.Future efforts involve further optimizing the model to enhance classification accuracy and adding more validation experiments for aerosols based on airborne observations.

atmospheric opticslayer classificationspace-borne lidarundetected layerU-Net neural network

耿亿霖、臧琳、毛飞跃、徐维维、龚威

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武汉大学遥感信息工程学院,湖北武汉 430079

武汉大学中国南极测绘研究中心,湖北 武汉 430079

极地环境监测与公共治理教育部重点实验室(武汉大学),湖北武汉 430079

武汉大学电子信息学院,湖北武汉 430079

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大气光学 层次分类 星载激光雷达 未检测层次 U-Net神经网络

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(24)