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M2H-Net: A Reconstruction Method For Hyperspectral Remotely Sensed Imagery

机译:M2H-net:高光谱传感图像的重建方法

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摘要

Hyperspectral remote sensing can get spatially and spectrally continuous data simultaneously. However, the imaging equipment is usually expensive and complex, along with the low spatial resolution. In recent years, reconstruction of hyperspectral image by deep learning from the widely used low-cost, high spatial resolution RGB camera, has attracted extensive attention in many fields. However, most research is limited to three bands in the range of 400-700 nm, which greatly restrains its application in remote sensing. In this study, a more suitable for remote sensing multispectral to hyperspectral network (M2H-Net) is proposed, which can take many bands as input and output hyperspectral images with any number of bands within a wider spectral range (380-2500 nm). Its characteristics include adding residual connection on U-Net to reduce vanishing gradients; adding convolution combinations with different kernel sizes (1 x 1 and 3 x 3) to balance the spectral and spatial relationships. It is applied on images from different platforms (UAVs and Satellites), different imaging modes (frame and pushbroom) and different spectral response functions (narrow and wide bandwidth), and the results show that: 1) it has a very high accuracy of hyperspectral image reconstruction. The mean relative absolute error (MRAE) and root mean squared error (RMSE) are between 0.039 and 0.074 and 0.010-0.016, respectively, which are 69.2% and 41.2% lower than those of U-Net; 2) it has high efficiency with fast convergence (about 40 epochs) and stable performance. Compared with many algorithms won in the new trends in image restoration and enhancement (NTIRE) competition, M2H-Net ranked 7th in accuracy, but took less time (0.44 s); 3) it has strong generalization ability. Using the pre-trained M2H-Nets to reconstruct Cubert S185 and GF-5 hyperspectral images in different locations, different times and complex scenes, high accuracy (MRAE = 0.072, RMSE = 0.011) can still be obtained. This method is more suitable for remote sensing to meet the needs of multiple bands, spectrum width and complex scenes, thus provides the possibility to generate the global coverage hyperspectral imagery by using the massive in-orbit or historical archived multispectral images, which will not only greatly save the R&D and investment on hyperspectral imaging equipment, but also conduct data collection with higher efficiency and lower complexity. Due to the ability to reconstruct hyperspectral images in specified bands on demand, M2H-Net is also of great value in hyperspectral image processing, such as data compression, storage and transmission, etc.
机译:高光谱遥感可以同时在空间和光谱连续数据。然而,成像设备通常昂贵且复杂,以及低空间分辨率。近年来,通过广泛使用的低成本,高空间分辨率RGB相机深度学习重建高光谱图像,在许多领域引起了广泛的关注。然而,大多数研究限于400-700nm范围内的三个频段,这极大地限制了其在遥感中的应用。在该研究中,提出了一种更适合于遥感多光谱到高光谱网络(M2H-NET)的更适合于遥感多光谱,这可以采用许多频带作为输入和输出高光谱图像,其中任何数量的频谱范围内(380-2500nm)。其特性包括在U-Net上添加残留连接以减少消失梯度;添加具有不同内核大小的卷积组合(1 x 1和3 x 3)以平衡光谱和空间关系。它适用于来自不同平台(UAV和卫星)的图像,不同的成像模式(帧和推动机)和不同的光谱响应函数(窄和宽带宽),结果表明:1)它具有非常高的高光谱精度影像重建。平均相对绝对误差(MRAE)和根均方误差(RMSE)分别为0.039%和0.074和0.010-0.016,比U-Net低69.2%和41.2%; 2)它具有高效率,快速收敛性(约40个时期)和稳定的性能。与许多算法相比,在图像恢复和增强(NTIRE)竞争中,M2H-净的准确性排名第7,但花了更少的时间(0.44秒); 3)它具有强烈的泛化能力。使用预先训练的M2H-网重建Cubert S185和GF-5高光谱图像在不同位置,不同的时间和复杂的场景,仍然可以获得高精度(MRAE = 0.072,RMSE = 0.011)。该方法更适合于遥感,以满足多个频带,频谱宽度和复杂场景的需求,从而提供了通过使用大规模的轨道或历史归档的多光谱图像来生成全局覆盖超光图象的可能性,这将不仅可以大大节省了研发和对高光谱成像设备的投资,而且还具有更高效率和较低复杂性的数据收集。由于能够在需求的指定频带中重建高光谱图像,M2H-NET在高光谱图像处理中也具有很大的值,例如数据压缩,存储和传输等。

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  • 作者单位

    Capital Normal Univ Coll Resource Environm & Tourism Beijing 100048 Peoples R China|Capital Normal Univ State Key Lab Incubat Base Urban Environm Proc & Beijing 100048 Peoples R China|Capital Normal Univ Key Lab 3D Informat Acquisit & Applicat MOE Beijing 100048 Peoples R China;

    Capital Normal Univ Coll Resource Environm & Tourism Beijing 100048 Peoples R China;

    Capital Normal Univ Coll Resource Environm & Tourism Beijing 100048 Peoples R China;

    Capital Normal Univ Coll Resource Environm & Tourism Beijing 100048 Peoples R China|Capital Normal Univ State Key Lab Incubat Base Urban Environm Proc & Beijing 100048 Peoples R China;

    Capital Normal Univ Coll Resource Environm & Tourism Beijing 100048 Peoples R China|Capital Normal Univ Key Lab 3D Informat Acquisit & Applicat MOE Beijing 100048 Peoples R China;

    Capital Normal Univ Coll Resource Environm & Tourism Beijing 100048 Peoples R China|Capital Normal Univ State Key Lab Incubat Base Urban Environm Proc & Beijing 100048 Peoples R China;

    Capital Normal Univ Coll Resource Environm & Tourism Beijing 100048 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hyperspectral; Reconstruction; Deep learning; M2H-Net; GF-5; Remote sensing;

    机译:高光谱;重建;深入学习;M2H-NET;GF-5;遥感;
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