Liu Shenyi, Sun Yunxu, Liu Wei, Xiao FuChen, Song Haoyang
School of Electronics and Information Engineering, Harbin Institute of Technology, Shenzhen 518055, China.
Heliyon. 2023 Feb 1;9(2):e13357. doi: 10.1016/j.heliyon.2023.e13357. eCollection 2023 Feb.
Multimode fibers (MMF) have been extensively investigated for transmitting images. The transmitting images are distorted into speckle patterns by MMFs, which can be reconstructed by neural networks. We studied the information distribution of MMF speckle patterns for image reconstruction. The speckle patterns, segmented by three methods of segmentation, as Centering (1), Quartering (2) and Surrounding (3), are reconstructed into input images by Complex Artificial Neural Network (CANN). Experimental results show that only about one third of full speckle patterns is enough to reconstruct the original images. The quality of reconstructed image is related to the cropping method with different frequency components in speckle patterns, under the same cropped size, Centering segmentation has 4% performance improvement compared to Surrounding segmentation. Optimized segmentation will improve the quality of reconstructed images.
多模光纤(MMF)已被广泛研究用于传输图像。MMF会将传输的图像扭曲成散斑图案,而这些散斑图案可通过神经网络进行重建。我们研究了用于图像重建的MMF散斑图案的信息分布。通过三种分割方法(即居中分割(1)、四等分分割(2)和环绕分割(3))分割后的散斑图案,由复数人工神经网络(CANN)重建为输入图像。实验结果表明,仅约三分之一的完整散斑图案就足以重建原始图像。重建图像的质量与散斑图案中不同频率成分的裁剪方法有关,在相同裁剪尺寸下,居中分割与环绕分割相比性能提高了4%。优化分割将提高重建图像的质量。