师春香, 瞿建华. 2002: 用神经网络方法对NOAA-AVHRR资料进行云客观分类. 气象学报, (2): 250-255. DOI: 10.11676/qxxb2002.031
引用本文: 师春香, 瞿建华. 2002: 用神经网络方法对NOAA-AVHRR资料进行云客观分类. 气象学报, (2): 250-255. DOI: 10.11676/qxxb2002.031
Shi Chunxiang, Qu Jianhua. 2002: CLOUD CLASSIFICATION FOR NOAA-AVHRR DATA BY USING A NEURAL NETWORK. Acta Meteorologica Sinica, (2): 250-255. DOI: 10.11676/qxxb2002.031
Citation: Shi Chunxiang, Qu Jianhua. 2002: CLOUD CLASSIFICATION FOR NOAA-AVHRR DATA BY USING A NEURAL NETWORK. Acta Meteorologica Sinica, (2): 250-255. DOI: 10.11676/qxxb2002.031

用神经网络方法对NOAA-AVHRR资料进行云客观分类

CLOUD CLASSIFICATION FOR NOAA-AVHRR DATA BY USING A NEURAL NETWORK

  • 摘要: 利用NOAA-AVHRR5个通道资料建立了6种云类以及陆地和水体的样本数据库,其中包括8×8象素样本和单象素样本。AVHRR的5个探测通道都位于大气窗区,吸收物质少,比较透明,可以比较准确地反映探测表面的性质。理论分析和试验结果表明:除了不同性质的云在5个通道中有不同的表现外,通道之间的差别也可用于云分类。在理论分析和试验的基础上,对8×8象素样本库提取了包括光谱特征、灰度特征、通道差特征、灰度统计量和灰度直方图统计量特征在内的80个特征,并利用逐步判别分析方法进行特征筛选,共选出20个特征,用神经网络方法对8种类型云和地表样本数据库分类,选择网络结构为20-40-15-4的B-P网络,利用3000多个样本进行神经网络训练,并用其余的3万多个独立样本数据进行检验,测试正确率达79%。类似地,对单象素样本数据,提取了包括光谱特征、灰度特征、通道差特征在内的20个特征,用神经网络方法对8种类型云和地表分类,选择网络结构为20-40-15-4的4层BP网络,利用2000多个样本进行神经网络训练,并用其余的2万多个独立样本数据进行检验,测试正确率达78%。设计并编写了实际云图客观云分类系统和软件,该系统输入为5个通道的AVHRR数据,可自动获取已?

     

    Abstract: Sample database of clouds, land and water was built based on NOAA-AVH RR 5-channel data which in-clude more than thirty thousand 8×8 pixel samples and more than twenty thousand single pixel samples. The five AVHRR channels are in the at mospheric windows which have a little absorptive mass and are rather trans-parent. They can show characters of detected surface well. Channel 1 (CH 1) is in the visible wave range, CH2 in the near infrared wave range, and CH3, CH4, CH5 are in the inf rared wave range. Theoretical analyses and experiments show t hat not only 5-channel dat a can be used to distinguish clouds, land and water, but also the difference between channels can do so. For example, CH4-CH5 can be used to distinguish water particle cloud and ice particle cloud because the big gest absorption difference between water particle and ice particle is near 12 L m. On the basis of theoretical analyses and experiments, 80 features were extracted from 5-channel AVHRR data for 8×8 pixel samples, which involve spectrum feature, gray feature, channel difference feature, the gray statistical feature and the gray histogram statistical feature. 20 features were selected by using the distinguishing analysis step-by-step method. Classification experiment of sample database was done by using neural net work method. We designed a neural network model with 20 inputs, 2 hidden layers and 4 out puts(20-40-15-4). More then three thousand samples selected randomly were used to train the neural net work model. The other independent samples were used to test. And we got at esting accuracy of 79%. Similarly, for single pixel samples, 20 features including spectrum feature, gray feature and channel difference feature were extracted from 5-channel AVHRR data. Classification ex periment of sample database was made by using neural net work method. We desig ned a neural net work model with 20 inputs, 2 hidden layers and 4 out puts(20-40-15-4). More than two thousand samples selected randomly were used to train the neural network model. The ot her independent samples were used to test. And we gota testing accuracy of 78%. Some different disposals were used to 8×8 pixel samples database and single pixel sample database.

     

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