Performance analysis of Satellite Image Super Resolution using Deep Learning Techniques

G. Rohith, L. S. Kumar
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引用次数: 2

Abstract

Super-resolution has gained significant importance recently owing to its finer sampling image details. Deep learning algorithms have remarked as an entity for developing single image high-quality reconstruction. Super-resolution with Deep Learning algorithms has demonstrated state of the art approaches for reconstructing sharper and more accurate images. Satellite images are highly prone to lose minute details of the image when subjected to algorithmic modeling. Thus, it is necessary to preserve the details of image. In this paper, an attempt is made to incorporate the state of the art approaches for reconstructing the satellite images. This requires careful conditioning of validating parameters like bias value, weights, appropriate usage of filters and scaling factors. The existing super-resolution algorithms such as Bicubic interpolation, Super resolution convolutional neural network (SRCNN), fast Super resolution convolutional neural network (FSRCNN) and Deep Laplacian Pyramid (LapSRN) are simulated to reconstruct the satellite images obtained from benchmark data sets of Indian and International satellite sensors. An extensive quantitative and qualitative evaluation of the super-resolution algorithms shows that the Deep Laplacian Pyramid networks perform favorably against the other state-of-the-art methods exclusively for satellite images.
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基于深度学习技术的卫星图像超分辨率性能分析
超分辨率由于其更精细的采样图像细节,近年来获得了重要的意义。深度学习算法已经被认为是开发单幅图像高质量重建的一个实体。超分辨率与深度学习算法已经展示了重建更清晰,更准确的图像的最先进的方法。在进行算法建模时,卫星图像很容易丢失图像的微小细节。因此,有必要保留图像的细节。在本文中,试图结合最新的方法来重建卫星图像。这需要仔细调整验证参数,如偏置值,权重,适当使用过滤器和缩放因子。对现有的双三次插值、超分辨率卷积神经网络(SRCNN)、快速超分辨率卷积神经网络(FSRCNN)和深度拉普拉斯金字塔(LapSRN)等超分辨率算法进行了仿真,对印度和国际卫星传感器基准数据集获得的卫星图像进行了重构。对超分辨率算法的广泛定量和定性评估表明,深度拉普拉斯金字塔网络与其他最先进的卫星图像方法相比表现良好。
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