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  • Deep Residual Convolutional Neural Network for Hyperspectral Image Super-Resolution

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    Accepted Manuscript (AM)
    Author(s)
    Wang, C
    Liu, Y
    Bai, X
    Tang, W
    Lei, P
    Zhou, J
    Griffith University Author(s)
    Zhou, Jun
    Year published
    2017
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    Abstract
    Hyperspectral image is very useful for many computer vision tasks, however it is often difficult to obtain high-resolution hyperspectral images using existing hyperspectral imaging techniques. In this paper, we propose a deep residual convolutional neural network to increase the spatial resolution of hyperspectral image. Our network consists of 18 convolution layers and requires only one low-resolution hyperspectral image as input. The super-resolution is achieved by minimizing the difference between the estimated image and the ground truth high resolution image. Besides the mean square error between these two images, we ...
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    Hyperspectral image is very useful for many computer vision tasks, however it is often difficult to obtain high-resolution hyperspectral images using existing hyperspectral imaging techniques. In this paper, we propose a deep residual convolutional neural network to increase the spatial resolution of hyperspectral image. Our network consists of 18 convolution layers and requires only one low-resolution hyperspectral image as input. The super-resolution is achieved by minimizing the difference between the estimated image and the ground truth high resolution image. Besides the mean square error between these two images, we introduce a loss function which calculates the angle between the estimated spectrum vector and the ground truth one to maintain the correctness of spectral reconstruction. In experiments on two public datasets we show that the proposed network delivers improved hyperspectral super-resolution result than several state-of-the-art methods.
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    Journal Title
    Lecture Notes in Computer Science
    Volume
    10668
    DOI
    https://doi.org/10.1007/978-3-319-71598-8_33
    Copyright Statement
    © 2017 Springer International Publishing AG. This is an electronic version of an article published in Lecture Notes In Computer Science (LNCS), volume 10668, pp 370-380, 2017. Lecture Notes In Computer Science (LNCS) is available online at: http://link.springer.com// with the open URL of your article.
    Subject
    Other information and computing sciences not elsewhere classified
    Publication URI
    http://hdl.handle.net/10072/370475
    Collection
    • Journal articles

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