最新刊期

    40 5 2025

      Material Physics

    • Optical memory behavior of MoS2 nanoflakes doped liquid crystals hybrid AI导读

      Liquid crystal memory technology, characterized by low cost, large area, high speed, and high-density memory, has evolved from a scientific curiosity to a technology applied in various commodities. In this study, researchers utilized molybdenum disulfide (MoS2) nanoflakes as the guest in a homotropic liquid crystal host to modulate the overall memory effect of the hybrid. The incorporation of a mass fraction of 0.1% 2 μm MoS2 nanoflakes into the liquid crystal host significantly reduced the refreshing memory behavior in the hybrid to 94.0 s under an external voltage of 5 V, laying a foundation for the construction of high-speed, high-density memory systems.
      GONG Xiaohui, ZHANG Hao, YANG Dongfang, LIU Yang
      Vol. 40, Issue 5, Pages: 665-673(2025) DOI: 10.37188/CJLCD.2024-0348
      摘要:The memory behavior in liquid crystals (LCs) that is characterized by low cost, large area, high speed, and high-density memory has evolved from a mere scientific curiosity to a technology that is being applied in a variety of commodities. In this study, we utilized molybdenum disulfide (MoS2) nanoflakes as the guest in a homotropic LCs host to modulate the overall memory effect of the hybrid. It was found that the MoS₂ nanoflakes within the LCs host formed agglomerates, which in turn resulted in an accelerated response of the hybrids to the external electric field. However, this process also resulted in a slight decrease in the threshold voltage. Additionally, it was observed that MoS₂ nanoflakes in a LCs host tend to align homeotropically under an external electric field, thereby accelerating the refreshment of the memory behavior. The incorporation of a mass fraction of 0.1% 2 μm MoS₂ nanoflakes into the LCs host was found to significantly reduce the refreshing memory behavior in the hybrid to 94.0 s under an external voltage of 5 V. These findings illustrate the efficacy of regulating the rate of memory behavior for a variety of potential applications.  
      关键词:optical memory behavior;MoS2 nanoflake;liquid crystal   
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    • Synthesis and research progress of pure bromine-based blue light perovskite AI导读

      最新研究进展显示,纯溴基蓝光钙钛矿材料性能优化取得显著进展,为高性能蓝光发光器件提供新思路。
      XIA Bingxuan, JIANG Jiawei, YU Zhanyang, CHEN Wenzhong, YANG Bobo, ZOU Jun
      Vol. 40, Issue 5, Pages: 674-684(2025) DOI: 10.37188/CJLCD.2024-0357
      摘要:This paper reviews the research progress of pure bromine group blue light perovskite materials in recent years, mainly focused on the pure bromine group blue light perovskite synthesis method and research progress, covering the thermal injection method and ligand assisted precipitation, and through ligand engineering, A position cation engineering, quasi two-dimensional structure design and B position substitution engineering strategy to optimize its performance. Ultra-small perovskite quantum dots use ligand engineering to passivate surface defects and improve quantum dot stability. The band gap can be effectively expanded by shrinking the nanocrystals lattice, leading to PL emission blue-shift, high PLQY, narrow bandwidth and sharp exciton absorption transitions. For quasi-two-dimensional blue light perovskite, organic septal cations and additives are usually choosed to regulate the number of quasi-two-dimensional perovskite layers, so that the phase is cleaner and narrower, so as to obtain better performance of blue light devices. In addition to the common passivation agents, polymers can also act as passivation agents. For example, polyvinylidene (PVDF) effectively passivate surface defects and enhances stability. These optimization strategies have made significant progress in brightness, color purity and efficiency, providing new ideas for high-performance blue light-emitting devices.  
      关键词:Perovskite;quasi-two dimensions;quantum dots;ligand engineering   
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    • Recent advances in data-driven research on liquid crystal materials AI导读

      液晶材料研究取得新进展,数据驱动技术助力性能提升和应用拓展,为材料科学发展提供新方向。
      LIU jie, QI ji, GAO Shiyan, CHEN Wenyi, SUI Yuexin, HE Zemin, YANG Haiyan, MIAO Zongcheng
      Vol. 40, Issue 5, Pages: 685-696(2025) DOI: 10.37188/CJLCD.2025-0028
      摘要:Liquid crystal materials, with their dual properties of solid and liquid states, offer unique advantages in materials science and applications. In recent years, data-driven approaches have been widely applied in research areas such as liquid crystal phase classification, material design and performance prediction, and sensor technologies. Through data-driven techniques like machine learning, significant progress has been made in the prediction of liquid crystal phase transitions, evaluation of physicochemical properties, and optimization of sensor performance. These studies have not only enhanced the performance of liquid crystal materials but also expanded their potential applications in fields such as intelligent sensors, gas detection, environmental monitoring, and biosensing. This review summarizes the domestic and international research progress on data-driven liquid crystal materials, discusses their prospects in material design, optimization, and applications, and provides insights into the future directions of liquid crystal materials science.  
      关键词:data-driven;machine learning;liquid crystals;materials science   
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      Device Physics and Device Preparation

    • 在光场显示领域,研究人员提出了一种摩尔纹可视化仿真方法,有效预测并辅助柱透镜阵列设计。
      ZHANG Zhiwei, WEN Xudong, GAO Xin, SANG Xinzhu, YAN Binbin, XING Shujun, YU Xunbo
      Vol. 40, Issue 5, Pages: 697-706(2025) DOI: 10.37188/CJLCD.2025-0004
      摘要:The periodic structure of liquid crystal display pixels and the cylindrical lens array often leads to generating Moiré patterns within a specific range of cylindrical lens tilt angles in three-dimensional light field displays. These patterns overlay display contents, significantly degrading the viewing experience. A common approach to mitigate Moiré involves adjusting the tilt angle of the cylindrical lens array. To identify optimal tilt angles for suppressing Moiré, this study proposes a Moiré pattern visualization simulation method based on the segmentation analysis of cylindrical lens array units. Using geometric optics principles, the imaging characteristics of individual cylindrical lens units are analyzed, and the resultant imaging outputs are simulated. The simulated images are then stitched to reconstruct the complete light field display, enabling Moiré pattern visualization. Experimental results demonstrate that the proposed method effectively visualizes the overall light field display and its local structures. Additionally, the tilt angle of the cylindrical lens array can be adjusted within the range of 0° to 90°. The simulation accurately predicts Moiré patterns for various light field display devices and provides valuable guidance for determining the optimal tilt angle of the cylindrical lens array.  
      关键词:moiré pattern;visualization simulation;light-field display;RGB color model   
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    • 在三维光场显示领域,专家提出了基于光流预测的透视关系校正方法,有效解决观看者前后移动时的透视错误问题。
      NING Chenyu, LI Ningchi, HU Yunfan, GAO Xin, YAN Binbin, SANG Xinzhu, YU Xunbo
      Vol. 40, Issue 5, Pages: 707-715(2025) DOI: 10.37188/CJLCD.2025-0017
      摘要:In 3D light-field display, perspective error occurs when the viewer moves forward or backward, resulting in the perception of incorrectly deformed 3D images. A perspective correction method based on optical flow prediction is presented to achieve correct perspective in 3D light-field display. A perspective relationship completion network is presented, which integrates an optical flow prediction network and a perspective transformation network, to achieve effective correction of perspective relations. The optical flow prediction network supplies depth information to assist the perspective transformation network in generating correct depth-oriented optical flow. The vertical component of the depth-oriented optical flow is retained to interpolate perspective information at any distance within the specified range. The viewer’s position is captured using an eye-tracking device, enabling real-time generation and encoding of images that are loaded on the 3D light-field display system for immediate perspective correction. Experimental results demonstrate the method can effectively correct perspective relations and present correct 3D images when the viewer moves forward or backward.  
      关键词:3D light-field display;perspective correction;optical flow prediction;deep learning   
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    • 光栅立体显示器优化方法研究取得新进展,为裸眼三维显示器设计提供新思路。
      HONG Yifei, NIE Zihan, SANG Xinzhu, XING Shujun
      Vol. 40, Issue 5, Pages: 716-726(2025) DOI: 10.37188/CJLCD.2025-0012
      摘要:Grating stereoscopic display is currently one of the most popular naked eye three-dimensional(3D) displays, and optimizing its parameters is a key step in the display design process. This article proposes an optimization method for grating stereoscopic displays based on simulation image evaluation. This method is based on existing grating stereoscopic display simulation platforms and assesses display quality by evaluating simulation images, which is more intuitive and convenient, rather than optical indicators. This research invites reviewers to conduct subjective experiments and selects the most suitable evaluation criteria for 3D display simulation images: learned perceptual image patch similarity (LPIPS). A joint optimization experiment is conducted on the parameters of a cylindrical lens grating stereoscopic display using Bayesian method, and compares with the traditional optical optimization results of Zemax. The diffuse spot radius of the center field of view is 15.567 μm, and the diffuse spot radius of the edge field of view is 89.744 μm, both of which meets the design standards of empirical requirements. The experiment results show that this method can correctly optimize the commonly used parameters of the display and achieve the same effect as traditional optical design software. This method has significant potential in the optimization design of grating stereoscopic displays, further provides a new approach for the design process of naked eye 3D displays.  
      关键词:raster stereoscopic display;visual simulation;image quality assessment;bayesian optimization   
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      Image Processing

    • 在动态场景下,基于动态特征剔除与稠密建图的视觉SLAM算法,有效提升了定位精度和地图质量。
      ZHANG Heng, WANG Lei, ZHANG Pengchang, CHANG Jian, HE Xing
      Vol. 40, Issue 5, Pages: 727-739(2025) DOI: 10.37188/CJLCD.2024-0325
      摘要:In order to solve the problem that the simultaneous localization and mapping (SLAM) algorithm has low positioning accuracy and cannot generate effective dense maps in dynamic scenes, a visual SLAM algorithm based on dynamic feature culling and dense mapping is proposed. Based on the ORB-SLAM3 algorithm, a feature point screening thread is added, and the lightweight YOLOV8 network is used to detect dynamic objects in the environment, and the dynamic feature points in the environment are eliminated by combining the optical flow method and the polar geometric constraint. The dense point cloud map is constructed by using the generated keyframes and calculated poses in the newly added dense mapping thread. Compared with the original ORB-SLAM3, the positioning errors are reduced by 90%. At the same time, the ghosting caused by dynamic objects is removed from the dense mapping results. The new algorithm effectively solves the problem that the visual SLAM algorithm cannot locate and establish an effective map in the dynamic environment by adding the feature point screening thread and dense mapping thread, and greatly enhances the accuracy and robustness of the SLAM system in dynamic scenes.  
      关键词:dynamic environment;Visual SLAM;object detection;feature culling;dense mapping   
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    • Scene recognition based on deep metric learning and semantic segmentation AI导读

      在场景图像识别领域,研究者提出了一种新型语义分割框架,通过深度度量学习改善模型识别精度,提升了场景识别的准确性和鲁棒性。
      JIA Xuan, ZHANG Ye, CHANG Xuling, SUN Jianbo
      Vol. 40, Issue 5, Pages: 740-750(2025) DOI: 10.37188/CJLCD.2024-0288
      摘要:To address the issue of low recognition accuracy in scene images caused by subtle inter-class differences and ambiguous intra-class classifications, this paper proposes a novel semantic segmentation framework. By introducing deep metric learning and focusing on the semantic relationships between pixels, the model’‍s recognition accuracy can be improved. Firstly, feature extraction is performed through the hollow space pyramid pooling module. Then, in the decoding process, the shallow high-resolution features and deep low resolution features are fused using a structure to better restore the details and boundaries in the image. Secondly, in the deep metric learning module, a well structured pixel semantic embedding space is learned to effectively classify pixels by maximizing the Euclidean distance between pixels of different categories and minimizing the Euclidean distance between pixels of the same category. Finally, a fusion loss function combining weighted focus loss and contrast loss is adopted to balance the importance between different samples, thereby more accurately measuring the performance of the model and improving the accuracy and robustness of scene recognition. The experimental results demonstrate that the average intersection to union ratios of the model on the publicly available datasets ADE20K and Cityscapes are 47.6% and 83.1%, respectively. Compared with the baseline of today‍’‍s advanced scene recognition methods, the results show that the proposed method is feasible and progressiveness.  
      关键词:deep learning;deep metric learning;semantic segmentation;scene recognition;class imbalance   
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    • Context aware low-light image enhancement algorithm AI导读

      科技媒体新闻记者报道:针对低光图像亮度低和细节模糊问题,研究者提出了上下文感知增强算法,有效提升图像清晰度和亮度均匀性。
      ZHANG Jianqiang, HE Qiusheng
      Vol. 40, Issue 5, Pages: 751-760(2025) DOI: 10.37188/CJLCD.2024-0277
      摘要:Aiming at the problem of low brightness and blurred detail information in low-light images, this paper proposes a context-aware low-light image enhancement algorithm. First, the context-aware module for extracting detail information and edge artifacts was investigated. Nonlinear mapping was performed using activation functions to get the importance of features in the current context. Second, the model used linear attention gating mechanism instead of the multi-head attention module in Transformer. It reduced the computational complexity in high-resolution images while maintaining the performance. Finally, the reconstruction guidance module was designed to focus on the information in the low-light region during image reconstruction. The correlation information between the positions in the input sequence was captured to improve the expressiveness of the model for the reconstruction processing task. The results show that compared with the existing typical low-light enhancement algorithm URetinex, the PSNR and SSIM of images generated on the dataset LOL are increased by 1.33% and 3.73%, and the PSNR and SSIM of images generated on the dataset SICE are increased by 1.2% and 2.8%. The proposed algorithm can effectively enhance low-light images and generate clear and high-fidelity images.  
      关键词:low light enhancement;Transformer;linear attention;gating mechanism   
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    • 在图像去雾领域,研究者提出了一种新算法,有效改善非均匀雾天图像复原效果,提升了多项客观评价指标。
      WANG Lanlan, YANG Yan
      Vol. 40, Issue 5, Pages: 761-772(2025) DOI: 10.37188/CJLCD.2024-0270
      摘要:To address the issues of distortion in thin fog areas and incomplete dehazing in dense fog areas present in current dehazing algorithms, we propose an image dehazing algorithm that combines fog concentration segmentation with atmospheric light mapping. First, we analyze the fog concentration distribution in different regions of the image and construct a fog concentration estimation model using saturation and chromiance, a fuzzy clustering algorithm is then applied for region segmentation, effectively identifying thin and dense fog areas. Next, based on the relationship between fog concentration and atmospheric light, we design specific atmospheric light estimation models for different regions to ensure accurate processing of various fog concentration areas. Finally, by utilizing the brightness component of the fog concentration, we improve the estimation of local atmospheric light and obtain a fog-free image based on the atmospheric scattering model. The experimental results indicate that the algorithm effectively addresses the poor image restoration performance in non-uniform foggy conditions. Compared to current mainstream dehazing algorithms, it achieves improvements of 39% in visible edge increase rate, 28% in normalized average gradient, 10% in image entropy, 20% in visibility balance metric, 37% in visual contrast, 47% in image contrast, and 35% in computation time.  
      关键词:fog concentration estimation;fuzzy clustering algorithm;atmospheric light curtain;atmospheric light   
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    • Improved autonomous driving object detection based on YOLOv8s AI导读

      在自动驾驶领域,研究人员提出了基于YOLOv8s改进的目标检测算法,通过优化网络结构和损失函数,提升了检测精度和模型效率。
      WANG Longchun, FANG Wei, ZHANG Lijuan, LI Dongming
      Vol. 40, Issue 5, Pages: 773-784(2025) DOI: 10.37188/CJLCD.2024-0290
      摘要:Aimed at overcoming issues like limited object types, missed detection, and false positives in existing models, an improved object detection algorithm for autonomous driving based on YOLOv8s is proposed. Ordinary convolutions in the YOLOv8s backbone are replaced with RepConv (Re-parameterization Convolution) to enhance target perception while reducing computational load and memory consumption, thereby improving model efficiency. Additionally, an efficient multi-scale attention (EMA) mechanism is introduced after the neck’s C2f block to strengthen feature attention and accelerate model convergence. A P2 detection head is also added to improve small object detection capabilities. Finally, the WIoU (Wise-IoU) loss function, featuring a dynamic non-monotonic focusing mechanism and gradient gain allocation strategy, is employed to boost overall detector performance. On a manually labeled Car dataset, the improved model achieved mAP50 and mAP(50-95) scores of 81.2% and 58.4%, respectively, 1.5% and 1.2% higher than the original YOLOv8s model. Precision and recall are improved by 1.9% and 0.8%, and the parameter count is decreased from 11.14M to 10.87M. The proposed modules increase detection accuracy while reducing parameter count, making the model more suitable for autonomous driving applications.  
      关键词:autonomous driving;object detection;yolov8s;efficient multi-scale attention;wise-iou   
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    • Novel pedestrian multi-target tracking method in complex traffic scenarios AI导读

      在复杂交通环境中,提出了融合YOLOv8和改进DeepSORT的多目标行人追踪方法,实现了77.9%的追踪精度和55.8FPS的处理速度。
      SHENG Wenshun, SHEN Jiahui, CHEN Qi
      Vol. 40, Issue 5, Pages: 785-795(2025) DOI: 10.37188/CJLCD.2024-0238
      摘要:Aiming at the challenges of pedestrian tracking, such as local occlusion and frequent ID change, which is frequently encountered in the complex and variable traffic environment, a multi-target pedestrian tracking method integrating YOLOv8 and DeepSORT (Simple Online and Realtime Tracking with a Deep Association Metric) is proposed. Firstly, in the detection stage, to enhance the ability of capturing the feature information for target pedestrians in dense traffic scenarios, YOLOv8 algorithm is selected, which is renowned for its efficient small-scale feature processing capability, ensuring the accuracy and speed of detection. Secondly, to fulfill the requirement of real-time tracking, OSNet (Omni-Scale Network) is introduced as the feature extraction network based on DeepSORT. Through the multi-scale dynamic fusion strategy, OSNet provides a richer and more accurate information basis for subsequent tracking. Thirdly, in view of the limitations of traditional Kalman filtering in nonlinear motion trajectory prediction, an innovative filter smoothing Kalman algorithm (FSA) is designed, which can flexibly adjust filtering parameters and effectively cope with the uncertainty of pedestrian movement in traffic scenes, significantly enhancing the accuracy of prediction. Additionally, to improve the stability and accuracy of data matching in the tracking process, the original intersection over union (IOU) association matching mechanism of DeepSORT is replaced with the improved complete-intersection over union (CIOU) algorithm. CIOU not only considers the degree of overlap between objects but also incorporates geometric information such as shape and size, effectively reducing the rate of missed and false detection. Finally, to further mitigate the impact of multiple noises on tracking performance, the trajectory feature extractor (GFModel) is introduced. The model combines local details with global context information through average pooling technology to achieve accurate tracking and prediction of the target pedestrian trajectory. Experimental results demonstrate that the proposed method achieves 77.9% tracking accuracy while maintaining a processing speed of 55.8 frame per second (FPS), which fully meets the demand for efficient and accurate tracking in actual complex traffic environment.  
      关键词:pedestrian tracking;YOLOv8;DeepSORT;multi-objective tracking;association matching   
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    • 在工业检测领域,研究者提出了一种全表面成像方法,有效提升了镀金回转体工件图像获取的精度和效率。
      LIU Bin, LIU Qian, MING Weiwei, HUANG Xiaojin
      Vol. 40, Issue 5, Pages: 796-807(2025) DOI: 10.37188/CJLCD.2024-0314
      摘要:Due to the unique geometric characteristics and dimensional constraints of gold-plated rotary workpieces, it is challenging to quickly and accurately capture their full-surface images. To address these issues, a novel full-surface imaging method based on adaptive brightness correction is proposed. Firstly, to recover information in low-brightness regions, an adaptive brightness adjustment algorithm is introduced. This algorithm initially applies global brightness mapping for pre-adjustment, followed by guided filtering instead of traditional Gaussian filtering to enhance local contrast across multiple scales while preserving features such as scratches and edges. Secondly, an innovative image stitching method based on adaptive Region of Interest (ROI) cropping is designed, which utilizes threshold segmentation in the HSV color space and homography estimation to accurately extract valid regions from the input images. This approach minimizes influence of surface projection distortion and parallax during image fusion and improves computational efficiency. Experimental results show that the brightness correction algorithm improves the quality of image features, leading to a reduction of approximately 50% in the average back-projection error during registration, with image stitching speeds reaching 1.25 frame/s. Compared with classic algorithms like Autostitch and LPC, the proposed method demonstrates notable advantages in both accuracy and efficiency. The proposed method is suitable for acquiring full-surface images and detecting defects on rotational workpieces in industrial environments.  
      关键词:computer vision;brightness correction;guided filtering;image stitching;rotary workpiece   
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