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High-quality hologram generation based on a complex-valued hierarchical multi-fusion neural network
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作者 Jiahui Fu Wenqiang Wan +1 位作者 Yunrui Wang Yanfeng Su 《Chinese Optics Letters》 2025年第9期1-11,共11页
In this paper,we propose a novel complex-valued hierarchical multi-fusion neural network(CHMFNet)for generating highquality holograms.The proposed architecture builds upon a U-Net framework,incorporating a complex-val... In this paper,we propose a novel complex-valued hierarchical multi-fusion neural network(CHMFNet)for generating highquality holograms.The proposed architecture builds upon a U-Net framework,incorporating a complex-valued multi-level perceptron(CMP)module that enhances complex feature representation through optimized convolutional operations and advanced activation functions,enabling effective extraction of intricate holographic patterns.The framework further integrates an innovative complex-valued hierarchical multi-fusion(CHMF)block,which implements multi-scale hierarchical processing and advanced feature fusion through its specialized design.This integration of complex-valued convolution and specialized CHMF design enables superior optical information representation,generating artifact-reduced high-fidelity holograms.The computational results demonstrate the superior performance of the proposed method,achieving an average peak signal-to-noise ratio(PSNR)of 34.11 dB and structural similarity index measure(SSIM)of 0.95,representing significant improvements over conventional approaches.Both numerical simulations and experimental validations confirm CHMFNet's enhanced capability in hologram generation,particularly in terms of detail reproduction accuracy and overall image fidelity. 展开更多
关键词 computer-generated hologram complex-valued convolution neural network
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Complex-Valued Convolutional Neural Networks Design and Its Application on UAV DOA Estimation in Urban Environments 被引量:3
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作者 Bai Shi Xian Ma +3 位作者 Wei Zhang Huaizong Shao Qingjiang Shi Jingran Lin 《Journal of Communications and Information Networks》 CSCD 2020年第2期130-137,共8页
Direction-of-arrival(DOA)estimation is an important task in many unmanned aerial vehicle(UAV)applications.However,the complicated electromagnetic wave propagation in urban environments substantially deteriorates the p... Direction-of-arrival(DOA)estimation is an important task in many unmanned aerial vehicle(UAV)applications.However,the complicated electromagnetic wave propagation in urban environments substantially deteriorates the performance of many conventional model-driven DOA estimation approaches.To alleviate this,a deep learning based DOA estimation approach is proposed in this paper.Specifically,a complex-valued convolutional neural network(CCNN)is designed to fit the electromagnetic UAV signal with complex envelope better.In the CCNN design,we construct some mapping functions using quantum probabilities,and further analyze some factors which may impact the convergence of complex-valued neural networks.Numerical simulations show that the proposed CCNN converges faster than the real convolutional neural network,and the DOA estimation result is more accurate and robust. 展开更多
关键词 direction-of-arrival(DOA)estimation complex-valued convolutional neural network(CCNN) unmanned aerial vehicle(UAV)
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基于复值卷积神经网络样本精选的极化SAR图像弱监督分类方法 被引量:6
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作者 秦先祥 余旺盛 +2 位作者 王鹏 陈天平 邹焕新 《雷达学报(中英文)》 CSCD 北大核心 2020年第3期525-538,共14页
针对物体框标注样本包含大量异质成分的问题,该文提出了一种基于复值卷积神经网络(CV-CNN)样本精选的极化SAR(PolSAR)图像弱监督分类方法。该方法首先采用CV-CNN对物体框标注样本进行迭代精选,并同时训练出可直接用于分类的CV-CNN。然... 针对物体框标注样本包含大量异质成分的问题,该文提出了一种基于复值卷积神经网络(CV-CNN)样本精选的极化SAR(PolSAR)图像弱监督分类方法。该方法首先采用CV-CNN对物体框标注样本进行迭代精选,并同时训练出可直接用于分类的CV-CNN。然后利用所训练的CV-CNN完成极化SAR图像的分类。基于3幅实测极化SAR图像的实验结果表明,该文方法能够有效剔除异质样本,与采用原始物体框标注样本的传统全监督分类方法相比可以获得明显更优的分类结果,并且该方法采用CV-CNN比采用经典的支持矢量机(SVM)或Wishart分类器性能更优。 展开更多
关键词 极化SAR 弱监督分类 复值卷积神经网络 样本精选
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