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Continual low-rank scaled dot-product attention 持续的低阶尺度点积注意力。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-24 DOI: 10.1016/j.neunet.2025.108517
Ginés Carreto Picón , Illia Oleksiienko , Lukas Hedegaard , Arian Bakhtiarnia , Alexandros Iosifidis
Transformers are widely used for their ability to capture data relations in sequence processing, with great success for a wide range of static tasks. However, the computational and memory footprint of their main component, i.e., the Scaled Dot-product Attention, is commonly overlooked. This makes their adoption infeasible in applications involving stream data processing with constraints in response latency, computational and memory resources. Some works have proposed methods to lower the computational cost of Transformers by using low-rank approximations, sparsity in attention, and efficient formulations for Continual Inference. In this paper, we introduce a new formulation of the Scaled Dot-product Attention based on the Nyström approximation that is suitable for Continual Inference. In experiments on Online Audio Classification and Online Action Detection tasks, the proposed Continual Scaled Dot-product Attention can lower the number of operations by up to three orders of magnitude compared to the original Transformers while retaining the predictive performance of competing models.
变压器因其在序列处理中捕获数据关系的能力而被广泛使用,在广泛的静态任务中取得了巨大的成功。然而,其主要组成部分的计算和内存占用,即缩放点积注意力,通常被忽视。这使得它们在响应延迟、计算和内存资源受限的流数据处理应用中不可行。一些研究提出了利用低秩近似、注意力稀疏性和连续推理的高效公式来降低变压器计算成本的方法。本文提出了一种适用于连续推理的基于Nyström近似的标度点积注意力的新公式。在在线音频分类和在线动作检测任务的实验中,与原始的transformer相比,所提出的连续尺度点积注意可以将操作次数减少多达三个数量级,同时保持竞争模型的预测性能。
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引用次数: 0
Alleviating noise memorization for adversarially robust few-shot learning 对抗鲁棒少镜头学习的噪声记忆缓解
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-24 DOI: 10.1016/j.neunet.2025.108515
Yiman Hu, Yixiong Zou, Xiaosen Wang, Yuhua Li, Kun He, Ruixuan Li
Few-Shot Learning (FSL) enables models to learn from just a few examples of new classes by leveraging knowledge from base classes. While FSL has made significant strides, its vulnerability to adversarial attacks–especially with limited data–has been overlooked. To address this, adversarial training is often used to build more robust models. However, we found that this approach can lead the model to memorize adversarial noise, which harms its ability to generalize. Hard labels exacerbate this issue by pushing the model toward perfect accuracy on adversarial examples, while also making it less robust to small changes in weights. To solve these problems, we propose Alleviation of Noise Memorization (ANM), a method that includes Adaptive Label Smoothing for more flexible supervision and Robust Weight Learning to enhance model stability. Our extensive experiments show that ANM effectively reduces noise memorization and improves generalization, outperforming current benchmarks.
few - shot Learning (FSL)通过利用基类的知识,使模型能够从几个新类的示例中学习。虽然FSL已经取得了重大进展,但它对对抗性攻击的脆弱性——尤其是在数据有限的情况下——却被忽视了。为了解决这个问题,对抗性训练通常用于构建更健壮的模型。然而,我们发现这种方法会导致模型记忆对抗性噪声,从而损害其泛化能力。硬标签使这个问题更加严重,因为它迫使模型在对抗性样本上追求完美的准确性,同时也使它对权重的微小变化的鲁棒性降低。为了解决这些问题,我们提出了缓解噪声记忆(ANM)方法,该方法包括自适应标签平滑以实现更灵活的监督和鲁棒权学习以增强模型稳定性。我们的大量实验表明,ANM有效地减少了噪声记忆并提高了泛化,优于当前的基准测试。
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引用次数: 0
An enhancing framework with an emphasis on decision balance in ensemble regression 集成回归中决策平衡的增强框架
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-24 DOI: 10.1016/j.neunet.2025.108498
Xiaoning Li , Min Guo , Qiancheng Yu , Kaiguang Wang , Cai Dai , Zhiqiang Li
Current ensemble regression learning (ERL) faces two primary limitations: first, traditional fusion strategies overlook the intrinsic complexity of the ensemble’s group decision-making (GDM) process; second, the pursuit of diversity exacerbates ensemble instability. These dual constraints have collectively caused ERL research to stagnate at the applied level, impeding further theoretical breakthroughs. In response, this paper proposes a novel ERL framework with decision balance (DBERL), designed to overcome these limitations through a research paradigm that integrates GDM with decision-balanced structures. Specifically, DBERL models the GDM process in traditional ERL as a decision-balanced network (DBN), clarifying both individual-level and group-level decision-making paradigms. Within this network, individuals are adaptively clustered based on task characteristics, thereby forming both narrowly and broadly balanced structures. A hierarchical balanced attention mechanism (HBA) is introduced to aggregate the decision influences of individuals within these structures. Finally, a phased feedback mechanism is incorporated to further promote consensus within the ensemble. The performance of DBERL, including the effectiveness of its internal modules, was rigorously validated across nine diverse datasets, encompassing various application domains, data volumes, and feature dimensions. The results indicate that among 45 evaluation metrics across all datasets, DBERL ranked first in 80% of comparisons against 11 baseline models, in 82.2% of comparisons against 12 ensemble strategies, and in 64% of comparisons against two other balance structures. Based on evaluation results across six dimensions, including fitting capability, correlation, interpretability, stability, data sensitivity, and generalization ability, DBERL achieved the top rank in statistical testing.
当前的集成回归学习(ERL)面临两个主要的局限性:一是传统的融合策略忽略了集成群体决策(GDM)过程的内在复杂性;其次,追求多样性加剧了整体的不稳定性。这双重制约共同导致ERL研究在应用层面停滞不前,阻碍了进一步的理论突破。为此,本文提出了一种具有决策平衡的ERL框架(DBERL),旨在通过将GDM与决策平衡结构相结合的研究范式来克服这些局限性。具体而言,DBERL将传统ERL中的GDM过程建模为决策平衡网络(decision-balanced network, DBN),明确了个人层面和群体层面的决策范式。在这个网络中,个体根据任务特征自适应聚类,从而形成狭义和广义平衡结构。引入层次均衡注意机制(HBA)来汇总这些结构中个体的决策影响。最后,一个分阶段反馈机制被纳入,以进一步促进集合内的共识。DBERL的性能,包括其内部模块的有效性,在9个不同的数据集上进行了严格的验证,这些数据集涵盖了不同的应用领域、数据量和特征维度。结果表明,在所有数据集的45个评价指标中,DBERL在与11个基线模型的比较中排名第一,在与12个集成策略的比较中排名第一,在与其他两种平衡结构的比较中排名第一,占比为82.2%。在拟合能力、相关性、可解释性、稳定性、数据敏感性和泛化能力六个维度的评价结果中,DBERL在统计检验中名列前茅。
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引用次数: 0
LIMA: Towards building a non-invasive and stealthy real-world adversarial attack model for traffic sign recognition systems 利马:为交通标志识别系统建立一个非侵入性和隐形的真实世界对抗攻击模型
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-24 DOI: 10.1016/j.neunet.2025.108497
Junbin Fang , Yixuan Shen , Yujing Sun , Canjian Jiang , You Jiang , Hezhong Pan , Siu-Ming Yiu , Zoe L. Jiang
Traffic sign recognition systems are crucial for autonomous driving safety. However, their susceptibility to adversarial attacks poses severe risks, potentially leading to catastrophic accidents. The purpose of adversarial attack research is to identify vulnerabilities in the systems, thereby improving understanding and response to these security threats. Unlike prior adversarial attacks, which are typically invasive, conspicuous, and impractical, our proposed attack operates non-invasively while remaining stealthy to human observers. Specifically, we exploit high-speed modulation of LED illumination and the rolling shutter mechanism of CMOS sensors to create imperceptible perturbations. By adjusting the LED flicker frequency, we effectively conduct denial-of-service attack and evasion attack. Extensive evaluations in both simulations and real-world scenarios confirm LIMA’s effectiveness, with a 100% success rate across most distance-angle combinations and 69.67% success even against defense models.
交通标志识别系统对自动驾驶安全至关重要。然而,它们对对抗性攻击的敏感性构成了严重的风险,可能导致灾难性事故。对抗性攻击研究的目的是识别系统中的漏洞,从而提高对这些安全威胁的理解和响应。不像以前的对抗性攻击,通常是侵入性的,明显的,不切实际的,我们提出的攻击是非侵入性的,同时对人类观察者保持隐身。具体来说,我们利用LED照明的高速调制和CMOS传感器的滚动快门机制来产生难以察觉的扰动。通过调整LED闪烁频率,可以有效地进行拒绝服务攻击和逃避攻击。在模拟和现实场景中进行的广泛评估证实了LIMA的有效性,在大多数距离-角度组合中成功率为100%,甚至在防御模型中成功率为69.67%。
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引用次数: 0
Visual dialog with semantic consistency: An external knowledge-driven approach 具有语义一致性的可视化对话:一种外部知识驱动的方法。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-24 DOI: 10.1016/j.neunet.2025.108523
Shanshan Du , Hanli Wang
As a crucial subfield of intelligent human-machine interaction, visual dialog involves answering multi-turn questions based on visual content and history dialog, presenting significant technical challenges. Although recent works have made steady progress in visual dialog, several issues remain to be addressed. First, there are bias issues in fine-grained multimodal modeling, including information asymmetry and representation inconsistency, which lead to incomplete information understanding and decision-making biases during question answering. Second, previous visual dialog models relying on external knowledge suffer from poor knowledge quality and insufficient knowledge diversity, which introduce noise into the model and undermine the accuracy and coherence of the question responses. In this work, a novel semantic consistency visual dialog model enhanced by external knowledge (SCVD+) is proposed to cope with these challenges. Specifically, fine-grained structured visual and textual scene graphs are constructed to mitigate the issue of information asymmetry, which equally prioritize both linguistic and visual elements, ensuring a comprehensive capture of object relationships in images and word associations in dialog history. Furthermore, beneficial external knowledge sourced from a commonsense knowledge base is integrated to alleviate the representation inconsistency in multimodal scene graphs and to promote the model’s interpretability. Finally, implicit clues are derived from pre-trained large models and integrated with explicit information from scene graphs using a proposed dual-level knowledge fusion and reasoning strategy, which ensures the diversity of external knowledge and enhances the model’s reasoning capability in complex scenarios. Experimental results demonstrate the effectiveness of our method on the public datasets VisDial v0.9, VisDial v1.0, and OpenVisDial 2.0.
视觉对话是智能人机交互的一个重要分支,它涉及到基于视觉内容和历史对话的多回合问题的回答,提出了重大的技术挑战。虽然最近的工作在视觉对话方面取得了稳定的进展,但仍有几个问题有待解决。首先,在细粒度多模态建模中存在偏差问题,包括信息不对称和表示不一致,导致回答过程中的信息理解不完全和决策偏差。其次,以往依赖外部知识的视觉对话模型存在知识质量差、知识多样性不足的问题,会给模型引入噪声,影响问题回答的准确性和连贯性。本文提出了一种基于外部知识增强的语义一致性视觉对话模型(SCVD+)。具体来说,构建了细粒度结构化视觉和文本场景图来缓解信息不对称的问题,信息不对称同样优先考虑语言和视觉元素,确保全面捕获图像中的对象关系和对话历史中的单词关联。此外,该方法还集成了来自常识性知识库的有益外部知识,以缓解多模态场景图的表示不一致,提高模型的可解释性。最后,采用双层次知识融合推理策略,从预训练的大型模型中提取隐含线索,并与场景图的显式信息进行融合,保证了外部知识的多样性,增强了模型在复杂场景下的推理能力。实验结果证明了该方法在公共数据集VisDial v0.9、VisDial v1.0和OpenVisDial 2.0上的有效性。
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引用次数: 0
Two-phase collaborative model compression training for joint pruning and quantization 联合剪枝与量化的两阶段协同模型压缩训练。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-23 DOI: 10.1016/j.neunet.2025.108506
Chunxiao Fan , Jintao Li , Zhongqian Zhang , Fu Li , Bo Wang
To reduce the storage and computational complexity of neural network models, various model compression techniques have been proposed in recent years, including pruning and quantization. However, due to the lack of interconnection among different type of methods, it is difficult to effectively integrate the advantages of these diverse techniques. This paper proposes a novel two-phase collaborative training framework for joint pruning and quantization to achieve synergistic optimization of multiple compression techniques. This framework combines pruning, quantization operations, consisting of two phases: collaborative constraint pre-compression and post-training compression refinement phases. In the collaborative constraint pre-compression phase, a novel unified constraint loss function is designed to ensure that weights are close to quantization values, and sparse regularization is utilized to automatically learn the network structure for pruning. It can effectively combine pruning and quantization operations, avoiding the potential negative impacts of separately implementing pruning and quantization. By calculating the difference between the current parameter values and the target quantization values, quantization errors are reduced through iterative optimization during the training process, making the parameters closer to the selected 2n values. The pruned network has a regular structure, and quantization to 2n values makes it highly suitable for hardware implementation as it can be achieved using a shifter. In the post-training compression refinement phase, joint compression operations including channel pruning and low-bit quantization are completed. Experimental results on benchmark datasets such as MNIST, CIFAR-10 and CIFAR-100 show that the framework generates more concise network parameters while maintaining considerable accuracy, demonstrating excellent effectiveness in terms of compression ratio and accuracy. The proposed framework can integrate the complementary aspects of quantization and pruning, and effectively minimize the possible adverse interactions between quantization and pruning.
为了减少神经网络模型的存储和计算复杂度,近年来提出了多种模型压缩技术,包括剪枝和量化。然而,由于不同类型的方法之间缺乏互连,很难有效地整合这些不同技术的优势。为了实现多种压缩技术的协同优化,提出了一种新的联合剪枝和量化两阶段协同训练框架。该框架结合了修剪、量化操作,包括两个阶段:协同约束预压缩和训练后压缩细化阶段。在协同约束预压缩阶段,设计了一种新的统一约束损失函数,保证权值接近量化值,并利用稀疏正则化自动学习网络结构进行剪枝。它可以有效地将剪枝和量化操作结合起来,避免了单独进行剪枝和量化可能带来的负面影响。通过计算当前参数值与目标量化值的差值,在训练过程中通过迭代优化减少量化误差,使参数更接近所选的2n个值。修剪后的网络具有规则结构,并且量化到2n值使其非常适合硬件实现,因为它可以使用移位器来实现。在训练后压缩细化阶段,完成包括信道修剪和低比特量化在内的联合压缩操作。在MNIST、CIFAR-10和CIFAR-100等基准数据集上的实验结果表明,该框架生成的网络参数更加简洁,同时保持了相当的准确率,在压缩比和准确率方面表现出了优异的有效性。该框架可以将量化和剪枝的互补方面结合起来,有效地减少量化和剪枝之间可能存在的不利相互作用。
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引用次数: 0
LIIA -Net: A lightweight illumination iterative adjustment network for low-light image enhancement LIIA -Net:用于弱光图像增强的轻量级照度迭代调整网络。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-23 DOI: 10.1016/j.neunet.2025.108510
Chengwan You , Wenxu Shi , Guibin Hu , Bochuan Zheng
Low-light image enhancement aims to improve brightness, contrast, and structural details of degraded images, thus improving image quality and supporting visual perception tasks. However, existing methods often lead to inaccurate illumination adjustment, amplified noise, and structural loss. To address these issues, we propose a Lightweight Illumination Iterative Adjustment Network (LIIA-Net) that jointly processes images in both frequency and spatial domains. First, a linear cross attention module fuses illumination and content features. Then, an amplitude adaptive iterative adjustment module adaptively regulates brightness in the frequency domain. Finally, a mamba-based structure refinement module restores spatial textures. Despite having only 0.48M parameters, LIIA-Net achieves performance comparable to or even surpassing state-of-the-art methods on both real and synthetic datasets. Moreover, when applied to downstream object detection, our enhanced images significantly boost detection accuracy. The code is available at https://github.com/ycwsilent/LIIANet.
弱光图像增强旨在提高退化图像的亮度、对比度和结构细节,从而提高图像质量,支持视觉感知任务。然而,现有的方法往往导致光照调整不准确、噪声放大和结构损失。为了解决这些问题,我们提出了一种轻型照明迭代调整网络(LIIA-Net),该网络在频率域和空间域共同处理图像。首先,一个线性交叉关注模块融合了光照和内容特征。然后,采用幅度自适应迭代调整模块在频域自适应调节亮度。最后,基于曼巴的结构细化模块恢复空间纹理。尽管只有0.48M个参数,但lia - net在真实和合成数据集上的性能与最先进的方法相当,甚至超过了最先进的方法。此外,当应用于下游目标检测时,我们的增强图像显着提高了检测精度。代码可在https://github.com/ycwsilent/LIIANet上获得。
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引用次数: 0
Multiscale corrections by continuous super-resolution 连续超分辨率多尺度校正。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-23 DOI: 10.1016/j.neunet.2025.108516
Zhi-Song Liu , Roland Maier , Andreas Rupp
Finite element methods typically require a high resolution to satisfactorily approximate micro and even macro patterns of an underlying physical model. This issue can be circumvented by appropriate multiscale strategies that are able to obtain reasonable approximations on under-resolved scales. In this paper, we study the implicit neural representation and propose a continuous super-resolution network as a correction strategy for multiscale effects. It can take coarse finite element data to learn both in-distribution and out-of-distribution high-resolution finite element predictions. Our highlight is the design of a local implicit transformer, which is able to learn multiscale features. We also propose Gabor wavelet-based coordinate encodings which can overcome the bias of neural networks learning low-frequency features. Finally, perception is often preferred over distortion so scientists can recognize the visual pattern for further investigation. However, implicit neural representation is known for its lack of local pattern supervision. We propose to use stochastic cosine similarities to compare the local feature differences between prediction and ground truth. It shows better performance on structural alignments. Our experiments show that our proposed strategy achieves superior performance as an in-distribution and out-of-distribution super-resolution strategy.
有限元方法通常需要高分辨率来令人满意地近似底层物理模型的微观甚至宏观模式。这个问题可以通过适当的多尺度策略来避免,这些策略能够在欠分辨尺度上获得合理的近似值。本文研究了隐式神经表征,提出了一种连续超分辨网络作为多尺度效应的校正策略。它可以使用粗糙的有限元数据来学习分布内和分布外的高分辨率有限元预测。我们的重点是局部隐式变压器的设计,它能够学习多尺度特征。我们还提出了基于Gabor小波的坐标编码,克服了神经网络学习低频特征的偏差。最后,感知往往比扭曲更受欢迎,因此科学家可以识别视觉模式以进行进一步的研究。然而,内隐神经表征以缺乏局部模式监督而闻名。我们建议使用随机余弦相似度来比较预测和真实之间的局部特征差异。它在结构对准方面表现出较好的性能。我们的实验表明,我们提出的策略作为分布内和分布外的超分辨率策略取得了优异的性能。
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引用次数: 0
Neural network-based practical prescribed time adaptive tracking control for nonlinear networked control systems under deception attacks 欺骗攻击下非线性网络控制系统基于神经网络的实际定时自适应跟踪控制
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-23 DOI: 10.1016/j.neunet.2025.108491
Ruonan Liu , Guangdeng Zong , Xudong Zhao , Wencheng Wang
This paper investigates the neural network-based practical prescribed time adaptive tracking control problem for strict feedback nonlinear networked control systems with deception attacks in both sensors and actuators. To reduce the detrimental effects of deception attacks, an attack compensator is constructed based on compromised states and neural network technique. Then, a practical prescribed time function is introduced such that the tracking error does not violate the constraint boundary within the prescribed time, which ensures the transient and steady-state performances of the closed-loop system. Besides, the first-order sliding mode differentiator is designed to estimate the derivation of the virtual control laws, which eliminates the “complexity explosion”. Mathematically, it is demonstrated that all the signals in the closed-loop system are bounded, and the tracking error converges to a predetermined boundary within a prescribed time. Eventually, a numerical example and an application example of the single-link robotic arm system are adopted to exhibit the effectiveness of the acquired control algorithm.
研究了具有传感器和执行器欺骗攻击的严格反馈非线性网络控制系统的基于神经网络的实际规定时间自适应跟踪控制问题。为了减少欺骗攻击的不利影响,基于妥协状态和神经网络技术构造了攻击补偿器。然后,引入一个实用的规定时间函数,使跟踪误差在规定时间内不违反约束边界,保证了闭环系统的暂态和稳态性能。此外,设计了一阶滑模微分器来估计虚拟控制律的推导,消除了“复杂性爆炸”的问题。数学上证明了闭环系统中所有信号都是有界的,跟踪误差在规定的时间内收敛到预定的边界。最后,通过单连杆机械臂系统的数值算例和应用实例,验证了所获得控制算法的有效性。
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引用次数: 0
Color-resolved light field shaping via diffractive-electronic U-shape network with wavelength-aware virtual branching 基于波长感知虚拟分支的衍射电子u形网络的彩色分辨光场整形
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-22 DOI: 10.1016/j.neunet.2025.108502
Yuheng Zong , Huaiping Jin , Hao Fang , Chai Hu , Jiashuo Shi
Dynamic spatial distortions in coherent light beams present a major challenge for stable and high-fidelity optical field shaping, particularly when the target output is a color-resolved pattern. Existing beam shaping techniques, including recent diffractive optical neural networks, are typically limited to monochromatic or grayscale targets and struggle to generalize across temporally varying, multi-distorted inputs. In this work, we propose a diffractive-electronic hybrid neural network tailored for real-time, color light field shaping. To improve spectral generalization, we introduce a wavelength-aware virtual branching (WAVB) mechanism during training, enabling the network to adaptively learn wavelength-specific shaping strategies without modifying the physical design. On the electronic side, we integrate a spectrally conditioned U-shape network, which is structurally adapted to preserve inter-channel dependencies. We implement frequency-selective skip connections (FSSC), allowing the network to emphasize mid- and high-frequency feature restoration while avoiding overcompensation in low-frequency regions. Additionally, we introduce an all-optical-driven optical flow prediction module, enabling frame-to-frame tracking and reverse inference of the beam’s evolution, thus enhancing temporal coherence. Our system achieves real-time operation at 50Hz, delivering robust, frame-stable color light field shaping across a range of spatial and temporal distortion scenarios. This work provides a task-specific, scalable framework for intelligent, adaptive imaging systems, with promising applications in dynamic holography, laser-based displays, and computational optical imaging.
动态空间畸变的相干光束提出了一个主要的挑战,稳定和高保真的光场整形,特别是当目标输出是一个颜色分辨模式。现有的光束整形技术,包括最近的衍射光学神经网络,通常仅限于单色或灰度目标,并且难以推广到时间变化,多扭曲的输入。在这项工作中,我们提出了一个衍射电子混合神经网络,专门用于实时彩色光场塑造。为了提高频谱泛化,我们在训练过程中引入了波长感知虚拟分支(WAVB)机制,使网络能够在不修改物理设计的情况下自适应学习波长特定的整形策略。在电子方面,我们集成了一个频谱条件的u形网络,该网络在结构上适应于保持通道间依赖性。我们实现了频率选择跳过连接(FSSC),允许网络强调中高频特征恢复,同时避免低频区域的过度补偿。此外,我们引入了一个全光驱动的光流预测模块,实现了帧对帧的跟踪和光束演化的反向推断,从而增强了时间相干性。我们的系统在50Hz下实现实时操作,在一系列空间和时间失真场景下提供鲁棒的、帧稳定的彩色光场塑造。这项工作为智能、自适应成像系统提供了一个任务特定的、可扩展的框架,在动态全息、基于激光的显示和计算光学成像方面具有前景。
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引用次数: 0
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Neural Networks
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