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Fully conv-deconv network for unsupervised spectral-spatial feature extraction of hyperspectral imagery via residual learning

机译:完全conv-deconv网络,用于通过残差学习对高光谱图像进行无监督的光谱空间特征提取

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摘要

Supervised approaches classify input data using a set of representative samples for each class, known as training samples. The collection of such samples are expensive and time-demanding. Hence, unsupervised feature learning, which has a quick access to arbitrary amount of unlabeled data, is conceptually of high interest. In this paper, we propose a novel network architecture, fully Conv-Deconv network with residual learning, for unsupervised spectral-spatial feature learning of hyperspectral images, which is able to be trained in an end-to-end manner. Specifically, our network is based on the so-called encoder-decoder paradigm, i.e., the input 3D hyperspectral patch is first transformed into a typically lower-dimensional space via a convolutional sub-network (encoder), and then expanded to reproduce the initial data by a deconvolutional sub-network (decoder). Experimental results on the Pavia University hyperspectral data set demonstrate competitive performance obtained by the proposed methodology compared to other studied approaches.
机译:监督方法使用一组代表每个类别的代表性样本对输入数据进行分类,称为训练样本。这种样品的收集是昂贵且费时的。因此,从概念上讲,可以快速访问任意数量的未标记数据的无监督特征学习。在本文中,我们提出了一种新颖的网络架构,具有残差学习功能的完全Conv-Deconv网络,用于无监督的高光谱图像光谱空间特征学习,并且可以端到端的方式对其进行训练。具体来说,我们的网络基于所谓的编码器-解码器范例,即,首先通过卷积子网(编码器)将输入的3D高光谱斑块转换为通常为低维空间,然后进行扩展以重现初始反卷积子网(解码器)处理数据。帕维亚大学高光谱数据集上的实验结果表明,与其他研究方法相比,该方法论具有竞争优势。

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