Li Dongjie, Deng Haipeng, Yao Gang, Jiang Jicheng, Zhang Yubao
Heilongjiang Provincial Key Laboratory of Complex Intelligent System and Integration, Harbin University of Science and Technology, Harbin 150080, China.
Key Laboratory of Advanced Manufacturing and Intelligent Technology, Ministry of Education, Harbin University of Science and Technology, Harbin 150080, China.
Sensors (Basel). 2022 Sep 27;22(19):7325. doi: 10.3390/s22197325.
The gamma radiation environment is one of the harshest operating environments for image acquisition systems, and the captured images are heavily noisy. In this paper, we improve the multi-frame difference method for the characteristics of noise and add an edge detection algorithm to segment the noise region and extract the noise quantization information. A Gaussian mixture model of the gamma radiation noise is then established by performing a specific statistical analysis of the amplitude and quantity information of the noise. The established model is combined with the random walk algorithm to generate noise and achieve the prediction of image noise under different accumulated doses. Evaluated by objective similarity matching, there is no significant difference between the predicted image noise and the actual noise in subjective perception. The ratio of similarity-matched images in the sample from the predicted noise to the actual noise reaches 0.908. To further illustrate the spillover effect of this research, in the discussion session, we used the predicted image noise as the training set input to a deep residual network for denoising. The network model was able to achieve a good denoising effect. The results show that the prediction method proposed in this paper can accomplish the prediction of gamma radiation image noise, which is beneficial to the elimination of image noise in this environment.
伽马辐射环境是图像采集系统最恶劣的运行环境之一,所采集的图像噪声很大。在本文中,我们针对噪声特性改进了多帧差分法,并添加了一种边缘检测算法来分割噪声区域并提取噪声量化信息。然后,通过对噪声的幅度和数量信息进行特定的统计分析,建立伽马辐射噪声的高斯混合模型。将所建立的模型与随机游走算法相结合以生成噪声,并实现不同累积剂量下图像噪声的预测。通过客观相似度匹配评估,预测的图像噪声与实际噪声在主观感知上没有显著差异。预测噪声与实际噪声的样本中相似度匹配图像的比例达到0.908。为了进一步说明本研究的溢出效应,在讨论环节中,我们将预测的图像噪声作为训练集输入到一个深度残差网络进行去噪。该网络模型能够实现良好的去噪效果。结果表明,本文提出的预测方法能够完成伽马辐射图像噪声的预测,这有利于消除该环境下的图像噪声。