Quarter sampling and three-quarter sampling are novel sensor concepts that enable the acquisition of higher resolution images without increasing the number of pixels. This is achieved by non-regularly covering parts of each pixel of a low-resolution sensor such that only one quadrant or three quadrants of the sensor area of each pixel is sensitive to light. Combining a properly designed mask and a high-quality reconstruction algorithm, a higher image quality can be achieved than using a low-resolution sensor and subsequent upsampling. For the latter case, the image quality can be further enhanced using super resolution algorithms such as the very deep super resolution network (VDSR). In this paper, we propose a novel end-to-end neural network to reconstruct high resolution images from non-regularly sampled sensor data. The network is a concatenation of a locally fully connected reconstruction network (LFCR) and a standard VDSR network. Altogether, using a three-quarter sampling sensor with our novel neural network layout, the image quality in terms of PSNR for the Urban100 dataset can be increased by 2.96 dB compared to the state-of-the-art approach. Compared to a low-resolution sensor with VDSR, a gain of 1.11 dB is achieved.
翻译:四分之一取样和四分之三取样是新颖的传感器概念,能够获取更高分辨率的图像,而不增加像素的数量。这是通过不定期地覆盖低分辨率传感器的每个像素部分来实现的,因此每个像素传感器的传感器区域只有一个象方或三个象方体对光敏感。结合一个设计得当的遮罩和高质量的重建算法,比使用一个低分辨率传感器和随后的抽查,可以达到更高的图像质量。对于后一种情况,使用非常深的超分辨率网络等超分辨率算法可以进一步提高图像质量。在本文件中,我们提议建立一个新型的端对端神经网络,从非常规抽样传感器数据中重建高分辨率图像。这个网络是一个完全连接的本地重建网络(LFCR)和一个标准的VDSR网络的组合。总的来说,使用一个带有我们新型神经网络布局的四分之三的取样传感器,城市100数据集(PSNR)的图像质量可以通过2.96 d-end-end Ne网络得到2.96 dB的图像质量来提高,而对比V-DRM-MA得到的低分辨率,比V-B得到1-M-M-D-B的频率方法得到的频率。