论文标题
使用残留特征注意深神经网络的远程感知图像的多图像超级分辨率
Multi-image Super Resolution of Remotely Sensed Images using Residual Feature Attention Deep Neural Networks
论文作者
论文摘要
卷积神经网络(CNN)始终被证明是图像超分辨率(SR)的最新结果,这代表了遥感领域的出色机会,可以从捕获的数据中提取更多信息和知识。但是,到目前为止,文献上发表的大多数作品都集中在单像超分辨率问题上。目前,基于卫星的遥感平台提供了巨大的数据可用性,具有高时间分辨率和低空间分辨率。在这种情况下,提出的研究提出了一个新型的残留注意模型(RAMS),该模型有效地应对多图像超分辨率任务,同时利用空间和时间相关性来结合多个图像。我们通过3D卷积介绍了视觉特征注意的机理,以获取多个低分辨率图像的意识数据融合和信息提取,从而超越了卷积操作的局部区域的限制。此外,我们的表示学习网络具有多个具有相同场景的输入,可以广泛使用nt虫的残差连接,以使流动冗余的低频信号,并将计算集中在更重要的高频组件上。针对单形或多图像超分辨率的其他可用解决方案进行的广泛的实验和评估表明,拟议的基于学习的深度解决方案可以被视为用于遥感应用程序的多图像超级分辨率的最先进的解决方案。
Convolutional Neural Networks (CNNs) have been consistently proved state-of-the-art results in image Super-Resolution (SR), representing an exceptional opportunity for the remote sensing field to extract further information and knowledge from captured data. However, most of the works published in the literature have been focusing on the Single-Image Super-Resolution problem so far. At present, satellite based remote sensing platforms offer huge data availability with high temporal resolution and low spatial resolution. In this context, the presented research proposes a novel residual attention model (RAMS) that efficiently tackles the multi-image super-resolution task, simultaneously exploiting spatial and temporal correlations to combine multiple images. We introduce the mechanism of visual feature attention with 3D convolutions in order to obtain an aware data fusion and information extraction of the multiple low-resolution images, transcending limitations of the local region of convolutional operations. Moreover, having multiple inputs with the same scene, our representation learning network makes extensive use of nestled residual connections to let flow redundant low-frequency signals and focus the computation on more important high-frequency components. Extensive experimentation and evaluations against other available solutions, either for single or multi-image super-resolution, have demonstrated that the proposed deep learning-based solution can be considered state-of-the-art for Multi-Image Super-Resolution for remote sensing applications.