Yu HongBo, Fang Qiang, Song QingHe, Montresor Silvio, Picart Pascal, Xia Haiting
Appl Opt. 2024 May 1;63(13):3557-3569. doi: 10.1364/AO.521701.
The speckle noise generated during digital holographic interferometry (DHI) is unavoidable and difficult to eliminate, thus reducing its accuracy. We propose a self-supervised deep-learning speckle denoising method using a cycle-consistent generative adversarial network to mitigate the effect of speckle noise. The proposed method integrates a 4-f optical speckle noise simulation module with a parameter generator. In addition, it uses an unpaired dataset for training to overcome the difficulty in obtaining noise-free images and paired data from experiments. The proposed method was tested on both simulated and experimental data, with results showing a 6.9% performance improvement compared with a conventional method and a 2.6% performance improvement compared with unsupervised deep learning in terms of the peak signal-to-noise ratio. Thus, the proposed method exhibits superior denoising performance and potential for DHI, being particularly suitable for processing large datasets.
数字全息干涉测量法(DHI)过程中产生的散斑噪声是不可避免且难以消除的,从而降低了其精度。我们提出了一种使用循环一致生成对抗网络的自监督深度学习散斑去噪方法,以减轻散斑噪声的影响。所提出的方法将一个4f光学散斑噪声模拟模块与一个参数生成器集成在一起。此外,它使用未配对的数据集进行训练,以克服从实验中获取无噪声图像和配对数据的困难。所提出的方法在模拟数据和实验数据上均进行了测试,结果表明,在峰值信噪比方面,与传统方法相比性能提高了6.9%,与无监督深度学习相比性能提高了2.6%。因此,所提出的方法在DHI中表现出卓越的去噪性能和潜力,特别适用于处理大型数据集。