High-resolution synthesis/projection of images over a large field-of-view (FOV) is hindered by the restricted space-bandwidth-product (SBP) of wavefront modulators. We report a deep learning-enabled diffractive display design that is based on a jointly-trained pair of an electronic encoder and a diffractive optical decoder to synthesize/project super-resolved images using low-resolution wavefront modulators. The digital encoder, composed of a trained convolutional neural network (CNN), rapidly pre-processes the high-resolution images of interest so that their spatial information is encoded into low-resolution (LR) modulation patterns, projected via a low SBP wavefront modulator. The diffractive decoder processes this LR encoded information using thin transmissive layers that are structured using deep learning to all-optically synthesize and project super-resolved images at its output FOV. Our results indicate that this diffractive image display can achieve a super-resolution factor of ~4, demonstrating a ~16-fold increase in SBP. We also experimentally validate the success of this diffractive super-resolution display using 3D-printed diffractive decoders that operate at the THz spectrum. This diffractive image decoder can be scaled to operate at visible wavelengths and inspire the design of large FOV and high-resolution displays that are compact, low-power, and computationally efficient.
翻译:高分辨率合成/ 投射大型视野图像(FOV) 受到波端调制器限制的空间带宽产品(SBP) 的阻碍。 我们报告了一个深层的学习驱动式显示器设计,该设计以联合培训的电子编码器配对为基础,并使用低分辨率波头调调器来合成/预测超解图像。 数字编码器由经过训练的共振神经网络(CNN)组成,快速预处理高分辨率的感兴趣图像,以便其空间信息被编码成低分辨率(LR)的调制模式,通过低度SBP波面调制式调制模。 diffactive式解调器处理这一信息,使用低分辨率波前调调调调调调调制成的图像合成/预测/项目超解析成型图像,在输出FOVV(FV) 时,我们发现,这种高分辨率的高分辨率图像显示可以达到高分辨率的超分辨率分辨率, 高分辨率显示S- 4, 高分辨率的显示S- 递增的图像操作。