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The Influence of Sampling Methods on Pixel-Wise Hyperspectral Image Classification with 3D Convolutional Neural Networks

机译:采样方法对3D卷积神经网络对像素高光谱图像分类的影响

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Supervised image classification is one of the essential techniques for generating semantic maps from remotely sensed images. The lack of labeled ground truth datasets, due to the inherent time effort and cost involved in collecting training samples, has led to the practice of training and validating new classifiers within a single image. In line with that, the dominant approach for the division of the available ground truth into disjoint training and test sets is random sampling. This paper discusses the problems that arise when this strategy is adopted in conjunction with spectral-spatial and pixel-wise classifiers such as 3D Convolutional Neural Networks (3D CNN). It is shown that a random sampling scheme leads to a violation of the independence assumption and to the illusion that global knowledge is extracted from the training set. To tackle this issue, two improved sampling strategies based on the Density-Based Clustering Algorithm (DBSCAN) are proposed. They minimize the violation of the train and test samples independence assumption and thus ensure an honest estimation of the generalization capabilities of the classifier.
机译:监督图像分类是用于从远程感测图像生成语义映射的基本技术之一。由于收集培训样本所涉及的固有时间和成本,因此缺乏标记的地面真理数据集导致培训和验证单个图像中的新分类器的做法。符合这一点,将可用的地面真相划分为不相交的培训和测试集的主导方法是随机采样。本文讨论了与诸如3D卷积神经网络(3D CNN)的光谱空间和像素明智的分类器一起采用时出现的问题(3D CNN)。结果表明,随机采样方案导致违反独立假设以及从训练集中提取全球知识的错觉。为了解决这个问题,提出了基于密度基聚类算法(DBSCAN)的两种改进的采样策略。它们最大限度地减少了火车和测试样本独立假设的侵犯,从而确保了分类器泛化能力的诚实估计。

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