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On the Optimal Design of Convolutional Neural Networks for Earth Observation Data Analysis by Maximization of Information Extraction

机译:关于地球观测数据分析卷积神经网络的最优设计通过最大化提取

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Although deep learning architectures are nowadays used in several research fields where automatized investigation of large scale datasets is required, the intrinsic mechanisms of deep learning networks are not fully understood yet. In this paper, a new approach for characterizing how information is processed within convolutional neural networks (CNNs) is introduced. Taking advantage of an analysis based on information theory, we are able to derive an index that is associated with the degree of maximum information extraction a CNN can obtain under ideal circumstances as a function of its hyperparameters setup and of the data to be explored. Experimental results on remote sensing datasets show the robustness of our approach. The outcomes of our analysis can be used to optimize the design of CNNs and maximize the information that can be obtained for the considered problem.
机译:尽管现在在需要自动调查大规模数据集的自动调查的几个研究领域时,但深度学习网络的内在机制尚未完全理解。在本文中,介绍了一种新方法,用于表征信息如何在卷积神经网络(CNNS)中处理。利用基于信息理论的分析,我们能够推导出与最大信息提取程度相关联的索引,CNN在理想情况下可以获得作为其超参数设置和要探索的数据的函数。遥感数据集上的实验结果显示了我们方法的鲁棒性。我们的分析结果可用于优化CNN的设计并最大化可以获得所考虑的问题的信息。

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