Single-Image-Super-Resolution (SISR) is a classical computer vision problem that has benefited from the recent advancements in deep learning methods, especially the advancements of convolutional neural networks (CNN). Although state-of-the-art methods improve the performance of SISR on several datasets, direct application of these networks for practical use is still an issue due to heavy computational load. For this purpose, recently, researchers have focused on more efficient and high-performing network structures. Information multi-distilling network (IMDN) is one of the highly efficient SISR networks with high performance and low computational load. IMDN achieves this efficiency with various mechanisms such as Intermediate Information Collection (IIC), working in a global setting, Progressive Refinement Module (PRM), and Contrast Aware Channel Attention (CCA), employed in a local setting. These mechanisms, however, do not equally contribute to the efficiency and performance of IMDN. In this work, we propose the Global Progressive Refinement Module (GPRM) as a less parameter-demanding alternative to the IIC module for feature aggregation. To further decrease the number of parameters and floating point operations persecond (FLOPS), we also propose Grouped Information Distilling Blocks (GIDB). Using the proposed structures, we design an efficient SISR network called IMDeception. Experiments reveal that the proposed network performs on par with state-of-the-art models despite having a limited number of parameters and FLOPS. Furthermore, using grouped convolutions as a building block of GIDB increases room for further optimization during deployment. To show its potential, the proposed model was deployed on NVIDIA Jetson Xavier AGX and it has been shown that it can run in real-time on this edge device
翻译:单一图像分辨率(SISR)是一个古老的计算机视觉问题,它得益于最近深层学习方法的进步,特别是进化神经网络的进步。尽管最先进的方法改进了SISSR在若干数据集上的性能,但直接应用这些网络供实际使用仍然是一个问题,因为计算负荷过重。为此目的,研究人员最近侧重于效率更高、绩效高的网络结构。信息多流化网络(IMDN)是高性能和计算负荷低的高效率的SISSR网络之一。IMDN利用中间信息收集等各种机制提高这一效率,在全球环境下工作,进步再精度模块(PRM)和本地环境中使用的对声调关注(CCA)直接应用这些网络仍然是一个问题。然而,这些机制并不同样有助于IMDN的效率和效力。在这项工作中,我们提议全球进步智能智能智能模型(GMRMRM)作为II模块的更低标度替代工具之一。IMDR-RMA在配置地组内部配置期间,进一步降低SIRA的定位值和SIR网络的运行。我们提议的SLA的升级结构显示SBR-SL的运行。