Author Affiliations
Abstract
1 Instrument Science and Technology, Harbin Institute of Technology, Harbin 150001, China
2 Research Center of Laser Fusion, China Academy of Engineering Physics, Mianyang 621900, China
The laser-induced damage detection images used in high-power laser facilities have a dark background, few textures with sparse and small-sized damage sites, and slight degradation caused by slight defocus and optical diffraction, which make the image superresolution (SR) reconstruction challenging. We propose a non-blind SR reconstruction method by using an exquisite mixing of high-, intermediate-, and low-frequency information at each stage of pixel reconstruction based on UNet. We simplify the channel attention mechanism and activation function to focus on the useful channels and keep the global information in the features. We pay more attention on the damage area in the loss function of our end-to-end deep neural network. For constructing a high-low resolution image pairs data set, we precisely measure the point spread function (PSF) of a low-resolution imaging system by using a Bernoulli calibration pattern; the influence of different distance and lateral position on PSFs is also considered. A high-resolution camera is used to acquire the ground-truth images, which is used to create a low-resolution image pairs data set by convolving with the measured PSFs. Trained on the data set, our network has achieved better results, which proves the effectiveness of our method.
laser-induced damage image superresolution image segmentation 
Chinese Optics Letters
2024, 22(4): 041701
Author Affiliations
Abstract
1 School of Instrumentation Science and Engineering, Harbin Institute of Technology, Harbin, China
2 Research Center of Laser Fusion, China Academy of Engineering Physics, Mianyang, China
Segmenting dark-field images of laser-induced damage on large-aperture optics in high-power laser facilities is challenged by complicated damage morphology, uneven illumination and stray light interference. Fully supervised semantic segmentation algorithms have achieved state-of-the-art performance but rely on a large number of pixel-level labels, which are time-consuming and labor-consuming to produce. LayerCAM, an advanced weakly supervised semantic segmentation algorithm, can generate pixel-accurate results using only image-level labels, but its scattered and partially underactivated class activation regions degrade segmentation performance. In this paper, we propose a weakly supervised semantic segmentation method, continuous gradient class activation mapping (CAM) and its nonlinear multiscale fusion (continuous gradient fusion CAM). The method redesigns backpropagating gradients and nonlinearly activates multiscale fused heatmaps to generate more fine-grained class activation maps with an appropriate activation degree for different damage site sizes. Experiments on our dataset show that the proposed method can achieve segmentation performance comparable to that of fully supervised algorithms.
class activation maps laser-induced damage semantic segmentation weakly supervised learning 
High Power Laser Science and Engineering
2024, 12(1): 010000e4
于守银 1,2,*刘国东 1,2武义堂 1,2翟琦 1,2
作者单位
摘要
1 先进制造技术山西省重点实验室, 山西 太原 030051
2 中北大学机械工程学院, 山西 太原 000351
激光微织构加工在当前微织构加工中有很大优势, 然而大多数研究都是关于微凹坑的形成。采用纳秒光纤激光器在304不锈钢表面制备微凹/凸织构, 研究激光加工参数对所制备的凹/凸织构表面形貌的影响。结果表明, 随着功率的增大, 微织构的中心凸起高度先增大后减小, 最后转化为凹坑。在不同的功率下, 高度随脉冲宽度变化的趋势不同。在功率为25 W时, 随脉冲宽度增大先升高后降低; 30 W、35 W时, 总体呈下降趋势, 先降低后升高再降低; 20 W时, 随脉冲宽度增大先降低后升高再降低, 变化幅度较小; 40 W时凸起消失。微织构的直径随功率和脉冲宽度的增大而增大。随着脉冲数量的增加, 微凸织构中心凸起部位的下凹深度也增大, 突起高度降低。在脉冲数量为1、激光功率为25 W、脉冲宽度为10 000 ns时, 可以得到凸起高度为35.362 μm、直径为174.057 μm的微凸起织构。
微织构 形貌 纳秒光纤激光器 工艺参数 micro-texture morphology nanosecond fiber laser process parameters 
应用激光
2023, 43(4): 73
Author Affiliations
Abstract
1 Key Laboratory of Light Field Manipulation and Information Acquisition, Ministry of Industry and Information Technology, and Shaanxi Key Laboratory of Optical Information Technology, School of Physical Science and Technology, Northwestern Polytechnical University, Xi’an 710129, China
2 Research & Development Institute of Northwestern Polytechnical University in Shenzhen, Shenzhen 518063, China
3 Key Laboratory of Photonic Technology for Integrated Sensing and Communication, Ministry of Education, and Guangdong Provincial Key Laboratory of Information Photonics Technology, Guangdong University of Technology, Guangzhou 510006, China
4 Institute of Fluid Physics, China Academy of Engineering Physics, Mianyang 621900, China
5 e-mail: zbren@nwpu.edu.cn
6 e-mail: jiangleidi@gdut.edu.cn
7 e-mail: jlzhao@nwpu.edu.cn
The time-delay problem, which is introduced by the response time of hardware for correction, is a critical and non-ignorable problem of adaptive optics (AO) systems. It will result in significant wavefront correction errors while turbulence changes severely or system responses slowly. Predictive AO is proposed to alleviate the time-delay problem for more accurate and stable corrections in the real time-varying atmosphere. However, the existing prediction approaches either lack the ability to extract non-linear temporal features, or overlook the authenticity of spatial features during prediction, leading to poor robustness in generalization. Here, we propose a mixed graph neural network (MGNN) for spatiotemporal wavefront prediction. The MGNN introduces the Zernike polynomial and takes its inherent covariance matrix as physical constraints. It takes advantage of conventional convolutional layers and graph convolutional layers for temporal feature catch and spatial feature analysis, respectively. In particular, the graph constraints from the covariance matrix and the weight learning of the transformation matrix promote the establishment of a realistic internal spatial pattern from limited data. Furthermore, its prediction accuracy and robustness to varying unknown turbulences, including the generalization from simulation to experiment, are all discussed and verified. In experimental verification, the MGNN trained with simulated data can achieve an approximate effect of that trained with real turbulence. By comparing it with two conventional methods, the demonstrated performance of the proposed method is superior to the conventional AO in terms of root mean square error (RMS). With the prediction of the MGNN, the mean and standard deviation of RMS in the conventional AO are reduced by 54.2% and 58.6% at most, respectively. The stable prediction performance makes it suitable for wavefront predictive correction in astronomical observation, laser communication, and microscopic imaging.
Photonics Research
2023, 11(11): 1802
作者单位
摘要
1 陕西科技大学 轻工科学与工程学院 轻化工程国家级实验教学示范中心,陕西省造纸技术及特种纸品开发重点实验室,中国轻工业功能印刷与运输包装重点实验室,中国轻工业纸基功能材料重点实验室,西安 710021
2 上海出版印刷高等专科学校,上海 200093
3 陕西科技大学 电子信息与人工智能学院,西安 710021
对溶液化发光层成膜参数及电子传输层浓度进行调控,优化发光层成膜效果及器件发光性能,同时使用导电聚合物聚(3,4-乙烯二氧噻吩)-聚苯乙烯磺酸(PEDOT:PSS)作为透明阳极,刮涂导电银浆作为阴极,通过全溶液法制备了高效率的OLED。研究发现,发光层成膜参数的调整有效改善了其成膜效果。且适当的电子传输层材料浓度可以改善器件的载流子注入平衡,有效降低阴极的功函数,提高器件的发光性能;酸后处理的PEDOT:PSS薄膜导电性大大提升,在可见光范围的透过率与ITO相当。全溶液制备的发光器件最大电流效率为1.441 cd/A,与以ITO为电极的器件相比,增加了近50倍。
全溶液处理 有机发光二极管 PEDOT:PSS PEIE浓度 酸处理 All-solution processing Organic light-emitting diode PEDOT:PSS PEIE concentration Acid treatment 
光子学报
2023, 52(1): 0123001
作者单位
摘要
1 北京理工大学光电学院,北京 100081
2 北京理工大学集成电路与电子学院,北京 100081
为了解决水下图像在复杂水体中表现的画面模糊和颜色失真的问题,提出了一种基于HSV分类、CIELAB均衡与最小卷积区域暗通道先验(DCP)的水下图像恢复算法。基于H与S阈值将水下图像分为高饱和度失真图像、低饱和度失真图像及浅水图像等3类。分类后的水下图像分别经CIELAB均衡及自适应图像增强恢复,其中水下成像系统参数通过最小卷积区域DCP估计。实验结果表明,所提算法在图像恢复效果、评价质量和实时性指标上均优于对比算法,其中峰值信噪比和结构相似指数值分别平均提升了26.88%和17.3%,水下彩色图像质量评价值提升了4.3%。
海洋光学 图像阈值分类 颜色均衡 光学模型参数估计 峰值信噪比 水下彩色图像质量评价 
激光与光电子学进展
2023, 60(4): 0401003
作者单位
摘要
中北大学机械工程学院, 先进制造技术山西省重点实验室, 山西 太原 030051
为优化激光制备表面微坑织构工艺参数, 提高缸套-活塞环摩擦副的摩擦学性能, 使用纳秒脉冲激光器在镀铬活塞环表面制备椭圆形微坑织构, 探究激光功率、加工次数、扫描速度与填充线间距对微坑形貌及尺寸的影响。结果表明:增大激光功率与重复加工次数、降低扫描速度与填充线间距可有效提高微坑深度; 微坑长径长度随激光功率增大而减小, 随加工次数的增加先增加后减小, 扫描速度与填充线间距对其影响较小。当加工参数为激光功率9 W、重复扫描3次、扫描速度200 mm/s、填充线间距1 μm、激光重复频率30 kHz时, 可以在镀铬活塞环表面加工出长半径200 μm、短半径150 μm、深度为38 μm的目标微坑。研究结果为激光在活塞环表面制备微坑织构及改善摩擦副摩擦学性能的实际应用提供指导。
激光微加工 表面微坑 织构 工艺参数 laser micromachining surface pit texture process parameter 
应用激光
2022, 42(1): 52
作者单位
摘要
重庆交通大学 土木工程学院, 重庆 400074
为了解决基于机载激光雷达(LiDAR)点云提取道路时多重特征阈值设定难、普适性低的问题, 采用了随机森林分类模型提取道路点云进而获得道路中心线的方法。首先使用渐进加密三角网滤波获取地面点云, 根据山区道路特性, 计算地面点云各点在邻域范围的坡度、粗糙度、高差方差、点密度及反射强度, 组成点的分类特征; 随后手动采集正负样本训练点云随机森林分类模型, 将地面点云通过模型分类得到初始道路点云; 再通过基于密度的噪声应用空间聚类算法去除噪声点精化道路点云; 最后矢量化道路点云获取道路中心线。结果表明, 以Entiat River地区山区LiDAR点云数据进行实验验证, 道路点云提取的正确率达到95.29%, 完整率达到92.96%, 提取质量达到88.88%。该方法能解决多重阈值难以确定的问题, 能较高精度地提取到山区道路点云, 进而获取有效道路中心线, 对山区道路信息的研究有一定的参考价值。
激光技术 山区道路 随机森林 激光雷达点云 基于密度的噪声应用空间聚类算法 laser technique mountain road random forest LiDAR point cloud DBSCAN algorithm 
激光技术
2022, 46(4): 466
Author Affiliations
Abstract
1 Instrument Science and Technology, Harbin Institute of Technology, Harbin 150001, China
2 Research Center of Laser Fusion, China Academy of Engineering Physics, Mianyang 621900, China
In-situ laser-induced surface damage inspection plays a key role in protecting the large aperture optics in an inertial confinement fusion (ICF) high-power laser facility. In order to improve the initial damage detection capabilities, an in-situ inspection method based on image super-resolution and adaptive segmentation method is presented. Through transfer learning and integration of various attention mechanisms, the super-resolution reconstruction of darkfield images with less texture information is effectively realized, and, on the basis of image super-resolution, an adaptive image segmentation method is designed, which effectively adapts to the damage detection problems under conditions of uneven illumination and weak signal. An online experiment was carried out by using edge illumination and the telescope optical imaging system, and the validity of the method was proved by the experimental results.
laser optic damage image super-resolution image segmentation 
Chinese Optics Letters
2022, 20(7): 071101
作者单位
摘要
1 陕西科技大学轻工科学与工程学院, 陕西 西安 710021
2 陕西科技大学轻化工程国家级实验教学示范中心, 中国轻工业功能印刷与运输包装重点实验室, 陕西省造纸技术及特种纸品开发重点实验室, 中国轻工业纸基功能材料重点实验室, 陕西 西安 710021
针对多重水印信息的有效嵌入和提取,提出了一种基于峰值信噪比-归一化相关系数函数(PSNR-NC)优化和非抽样双树复小波变换的自适应多重水印算法。该算法首先利用PSNR-NC函数来确定水印的最佳嵌入位置,其次通过非抽样双树复小波变换-奇异值分解(UDTCWT-SVD)算法将多个相互独立的水印信息嵌入到彩色宿主图像中,最后通过水印提取算法在含水印图像中提取多重水印,有效实现了多个版权信息的嵌入和提取。实验结果表明,嵌入水印图像具备良好的不可见性,所提算法对常见的图像处理攻击,特别是在抵抗JPEG压缩、噪声攻击和滤波攻击方面表现出较强的鲁棒性。
图像处理: 多水印算法 非抽样双树复小波变换 奇异值分解 峰值信噪比-归一化相关系数函数 
光学学报
2022, 42(5): 0510001

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