论文标题
POLSAR预处理和平衡方法对复杂值的神经网络细分任务的影响
Impact of PolSAR pre-processing and balancing methods on complex-valued neural networks segmentation tasks
论文作者
论文摘要
在本文中,我们使用复合物值神经网络(CVNN)研究了极化合成孔径(POLSAR)的语义分割。尽管相干矩阵被更广泛地用作CVNN的输入,但最近已证明Pauli向量是有效的替代方法。我们详尽地比较了六个模型体系结构的这两种方法,即三个复杂值及其各自的相等模型。因此,我们不仅要比较输入表示的影响,而且还比较了复杂的模型。然后,我们认为数据集拆分在训练和验证集之间产生高相关性,使任务饱和,从而实现了非常高的性能。因此,我们使用旨在减少这种效果的不同数据预处理技术,并以与以前相同的配置(输入表示和模型体系结构)重现结果。在看到每类的性能根据类别的出现高度不同之后,我们提出了两种方法来减少此差距并为所有输入表示,模型和数据集预处理执行结果。
In this paper, we investigated the semantic segmentation of Polarimetric Synthetic Aperture Radar (PolSAR) using Complex-Valued Neural Network (CVNN). Although the coherency matrix is more widely used as the input of CVNN, the Pauli vector has recently been shown to be a valid alternative. We exhaustively compare both methods for six model architectures, three complex-valued, and their respective real-equivalent models. We are comparing, therefore, not only the input representation impact but also the complex- against the real-valued models. We then argue that the dataset splitting produces a high correlation between training and validation sets, saturating the task and thus achieving very high performance. We, therefore, use a different data pre-processing technique designed to reduce this effect and reproduce the results with the same configurations as before (input representation and model architectures). After seeing that the performance per class is highly different according to class occurrences, we propose two methods for reducing this gap and performing the results for all input representations, models, and dataset pre-processing.