Ghost imaging (GI) has been paid attention gradually because of its lens-less imaging capability, turbulence-free imaging and high detection sensitivity. However, low image quality and slow imaging speed restrict the application process of GI. In this paper, we propose a improved GI method based on Denoising Convolutional Neural Networks (DnCNN). Inspired by the corresponding between input (noisy image) and output (residual image) in DnCNN, we construct the mapping between speckles sequence and the corresponding noise distribution in GI through training. Then, the same speckles sequence is employed to illuminate unknown targets, and a de-noising target image will be obtained. The proposed method can be regarded as a general method for GI. Under two sampling rates, extensive experiments are carried out to compare with traditional GI method (basic correlation and compressed sensing) and DnCNN method on three data sets. Moreover, we set up a physical GI experiment system to verify the proposed method. The results show that the proposed method achieves promising performance.
翻译:幽灵成像(GI)因其无镜头成像能力、无气流成像和高探测灵敏度而逐渐得到注意,然而,低图像质量和慢成像速度限制了GI的应用过程。在本文件中,我们建议采用基于Denoising Convolutional神经网络(DnCNN)的改进的GI方法。受DnCNN输入(噪音成像)和输出(后成像)之间对应法的启发,我们通过培训在斑点成像序列和GI中相应的噪音分布之间建立了绘图。然后,同样的斑点序列被用来照亮未知的目标,并且将获得一个解除注意的目标图像。提议的方法可以被视为GI的一般方法。在两种取样率下,进行广泛的实验,以比较传统的GI方法(基本相关性和压缩感测)和DnCNN方法的三个数据集。此外,我们建立了一个物理GI实验系统,以核实拟议的方法。结果显示,拟议的方法取得了良好的效果。