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Comparative Analysis of Artificial Neural Network and XGBoost Algorithm for PolSAR Image Classification

机译:人工神经网络与XGBoost算法的比较分析Polsar图像分类

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Image classification has become an important area of research in remote sensing. In this paper, the algorithms Artificial Neural Network (ANN) and Extreme Gradient Boosting (XGBoost) are used to classify compact polarimetric (CP) RISAT-1 cFRS mode data for land cover categorisation over Mumbai region. After preprocessing, Raney decomposition technique was applied to obtain the R, G, B channels of the image. Hyperparameter tuning of ANN was also performed to get the optimal parameters for the classification. Comparative analysis showed that both the algorithms showed almost equal performance on the data in terms of accuracy. However, there was only 1% of the increment found in both the train and test the accuracy of XGBoost classifier. ANN method required tuning, and thus it requires more time for computation while XGBoost algorithm works well without any tuning and thus, XGBoost outperforms the image classification task for CP RISAT-1 data than ANN.
机译:图像分类已成为遥感中的重要研究领域。在本文中,算法人工神经网络(ANN)和极端梯度升压(XGBoost)用于对孟买区域进行分类的Compact Polarimetric(CP)Risat-1 CFR模式数据。在预处理之后,应用Raney分解技术以获得图像的R,G,B信道。还执行了ANN的HyperParameter调整以获得分类的最佳参数。比较分析表明,在准确性方面,算法两种算法在数据上表现出几乎相等的性能。但是,火车中只有1%的增量,并测试XGBoost分类器的准确性。 ANN方法所需调谐,因此它需要更多的时间来计算,而XGBoost算法运行良好,而且XGBoost优于CP Risat-1数据的图像分类任务而不是ANN。

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