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Deep Convolutional networks with superpixel segmentation for hyperspectral image classification

机译:高光谱图像分类具有超顶旋装分割的深卷积网络

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To combat the well-known Hughes phenomenon occurred in hyperspectral classification, most of the previous works adopt dimensionality reduction or manifold learning technique before supervised learning. While in this paper, we propose a different scheme: First, we design a pixel-wise classifier based on Convolutional Neural Network that could directly mapping observed spectrum to class distribution. Then, we conduct superpixel segmentation on the prediction map that learned by previous model and output the final classification results by spatial and spectral factors jointly. Varied from other deep learning method, our classification framework learns and infers spectrum efficiently via deep hierarchy with convolutional and pooling layers, thus forming a direct relationship between high-order data and class distribution. Moreover, superpixel segmentation helps further boost the accuracy of the classification by combining the spatial information. In experimental studies, multiple hyperspectral datasets with various context and spatial resolution are used to validate the proposed method. The experimental results show that the proposed method is efficient and competitive in practical uses.
机译:为了打击众所周知的Hughes现象在高光谱分类中发生,最多的作品在监督学习之前采用维度减少或多方学习技术。虽然在本文中,我们提出了一种不同的方案:首先,我们设计一种基于卷积神经网络的像素-Wise分类器,可以将观察到的频谱直接映射到类分布。然后,我们对先前模型学习的预测映射进行Superpixel分段,并共同地通过空间和光谱因子输出最终分类结果。从其他深度学习方法中变化,我们的分类框架通过卷积和池层的深层次结构高效地学习和infers频谱,从而在高阶数据和类分布之间形成直接关系。此外,SuperPixel分割有助于通过组合空间信息来进一步提高分类的准确性。在实验研究中,使用具有各种上下文和空间分辨率的多个高光谱数据集来验证所提出的方法。实验结果表明,该方法在实际用途中是有效且竞争的。

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