Climate change has been a common interest and the forefront of crucial political discussion and decision-making for many years. Shallow clouds play a significant role in understanding the Earth's climate, but they are challenging to interpret and represent in a climate model. By classifying these cloud structures, there is a better possibility of understanding the physical structures of the clouds, which would improve the climate model generation, resulting in a better prediction of climate change or forecasting weather update. Clouds organise in many forms, which makes it challenging to build traditional rule-based algorithms to separate cloud features. In this paper, classification of cloud organization patterns was performed using a new scaled-up version of Convolutional Neural Network (CNN) named as EfficientNet as the encoder and UNet as decoder where they worked as feature extractor and reconstructor of fine grained feature map and was used as a classifier, which will help experts to understand how clouds will shape the future climate. By using a segmentation model in a classification task, it was shown that with a good encoder alongside UNet, it is possible to obtain good performance from this dataset. Dice coefficient has been used for the final evaluation metric, which gave the score of 66.26\% and 66.02\% for public and private (test set) leaderboard on Kaggle competition respectively.
翻译:多年来,浅云在理解地球气候方面发挥着重大作用,但很难在气候模型中进行解释和代表。通过对这些云结构进行分类,人们更有可能了解云体的物理结构,从而改善气候模型的生成,从而更好地预测气候变化或预报天气最新情况。云层以多种形式组织起来,这就对建立传统的基于规则的算法以区分云层特征提出了挑战。在本文中,云层组织模式的分类使用新的扩展版的革命神经网络(CNN)进行,称为高效网络,称为编码器和UNet,作为解码器。通过对这些云体结构进行分类,这些云体的结构将改善气候模型的生成,从而改善气候模型的生成,从而更好地预测气候变化或预报天气更新。云层以多种形式组织起来,从而对建立传统的基于规则的算法,将云层特性分开。在UNet中,利用一个良好的编码器对云层组织模式进行分类,就可以从这一数据集中取得良好的性能。Kaicestregal 和Unical logal 等66 标准分别用来进行最后评分数的Dicestal 和66 和Kestleglegal 。