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Generalizing Deep Models for Overhead Image Segmentation Through Getis-Ord Gi* Pooling

机译:通过Getis-Ord Gi *汇集概括了开销图像分割的深层模型

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That most deep learning models are purely data driven is both a strength and a weakness. Given sufficient training data, the optimal model for a particular problem can be learned. However, this is usually not the case and so instead the model is either learned from scratch from a limited amount of training data or pre-trained on a different problem and then fine-tuned. Both of these situations are potentially suboptimal and limit the generalizability of the model. Inspired by this, we investigate methods to inform or guide deep learning models for geospatial image analysis to increase their performance when a limited amount of training data is available or when they are applied to scenarios other than which they were trained on. In particular, we exploit the fact that there are certain fundamental rules as to how things are distributed on the surface of the Earth and these rules do not vary substantially between locations. Based on this, we develop a novel feature pooling method for convolutional neural networks using Getis-Ord Gi* analysis from geostatistics. Experimental results show our proposed pooling function has significantly better generalization performance compared to a standard data-driven approach when applied to overhead image segmentation.
机译:最深入的学习模型纯粹是数据驱动的是强度和弱点。鉴于足够的训练数据,可以学习特定问题的最佳模型。但是,这通常不是这种情况,因此,模型从划痕从有限的培训数据中学习或者在不同的问题上预先训练,然后进行微调。这两种情况都可能是次优和限制模型的概转性。灵感来自于此,我们调查了通知或指导地理空间图像分析的深度学习模型的方法,以提高它们在有限的培训数据或应用于他们培训的场景时的性能。特别是,我们利用了一些基本规则,以及如何在地球表面上分布的基本规则,这些规则不会在地点之间大幅度变化。基于此,我们使用Getis Ord GI *分析来开发一种用于卷积神经网络的新型特征汇集方法,从地统计数据分析。实验结果表明,与应用于开销图像分割时的标准数据驱动方法相比,我们所提出的汇集功能具有更好的泛化性能。

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