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Normalizing Flow-Based Fine-Grained Modeling for Unknown Gesture Rejection in Myoelectric Pattern Recognition 肌电模式识别中未知手势拒绝的归一化流细粒度建模
Pub Date : 2025-07-18 DOI: 10.1109/TAI.2025.3590706
Jingyang Jia;Le Wu;Shengcai Duan;Xun Chen
Gesture recognition systems based on surface electromyography (sEMG) exhibit high accuracy in laboratory settings. However, they often underperform in real-world applications due to the occurrence of unknown gestures not encountered during training. Prototype learning methods, which learn gesture prototypes and classify unknown gestures based on distances to these prototypes, effectively reject unknown gestures. However, relying solely on global feature distances may overlook subtle variations, weakening discrimination between similar features and reducing the model’s ability to identify unknown gestures resembling known ones. To address these limitations, we propose a fine-grained method that models the probability distribution of each feature point, enabling the detection of subtle differences in partial features. Specifically, we employ normalizing flows to capture detailed information at the feature-point level. This approach enhances the model’s capacity to recognize challenging unknown gestures that partially differ from known gesture patterns. In addition, we introduce synthetic unknown gestures generated by applying slight perturbations to known samples, simulating challenging unknown scenarios. We then design a novel loss function that pulls known gestures closer together while pushing synthetic unknown gestures further apart, creating a more robust rejection model. Extensive experiments on both custom and public datasets demonstrate that our method achieves an area under the curve (AUC) of 0.988 on the custom dataset and an average AUC of 0.984 and 0.782 on the two public datasets, CapgMyo-DBc and NinaproDB5, respectively. These results indicate that the proposed method provides a robust and practical solution for reliable myoelectric control in real-world applications.
基于表面肌电图(sEMG)的手势识别系统在实验室环境中表现出很高的准确性。然而,由于在训练过程中没有遇到的未知手势的出现,它们在实际应用中往往表现不佳。原型学习方法学习手势原型,并根据与这些原型的距离对未知手势进行分类,可以有效地拒绝未知手势。然而,仅仅依赖全局特征距离可能会忽略细微的变化,削弱了相似特征之间的区别,降低了模型识别与已知手势相似的未知手势的能力。为了解决这些限制,我们提出了一种细粒度方法,该方法对每个特征点的概率分布进行建模,从而能够检测到部分特征的细微差异。具体地说,我们使用规范化流来捕获特征点级别的详细信息。这种方法增强了模型识别具有挑战性的未知手势的能力,这些手势与已知手势模式部分不同。此外,我们引入了通过对已知样本施加轻微扰动产生的合成未知手势,模拟具有挑战性的未知场景。然后,我们设计了一个新的损失函数,将已知的手势拉得更近,同时将合成的未知手势推得更远,从而创建了一个更健壮的拒绝模型。在自定义数据集和公共数据集上的大量实验表明,我们的方法在自定义数据集上实现了0.988的曲线下面积(AUC),在两个公共数据集CapgMyo-DBc和NinaproDB5上分别实现了0.984和0.782的平均AUC。这些结果表明,该方法为实际应用中可靠的肌电控制提供了鲁棒性和实用性的解决方案。
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引用次数: 0
Contrastive Learning Feature Enhancement and High–Low Frequency Texture Interaction Networks for DIBR-Synthesized View Quality Assessment dibr合成视点质量评价的对比学习特征增强和高低频纹理交互网络
Pub Date : 2025-07-18 DOI: 10.1109/TAI.2025.3590692
Chongchong Jin;Yuanhao Cai;Yeyao Chen;Ting Luo;Zhouyan He;Yang Song
Depth image-based rendering (DIBR) is a common method for synthesizing virtual views to achieve smooth transitions in immersive media, but its immature technology often introduces distortions, adversely affecting visual quality. Obviously, accurately assessing the quality of synthesized views is crucial for monitoring and guiding the rendering process. To this end, this article proposes a no-reference deep learning-based quality assessment method for DIBR-synthesized views, which is primarily achieved by combining a contrastive learning feature enhancement network and a high–low frequency texture interaction network, abbreviated as CONTIN. Different from the traditional methods based on handcrafted feature extraction, the proposed method employs an end-to-end deep learning approach, fully exploiting the data characteristics and feature correlations. Specifically, to address the issue of sample expansion in existing deep learning methods, a contrastive sample database is first constructed by simulating various traditional and rendering distortions based on natural images, and training is performed on this database to obtain a contrastive learning feature enhancement network, which is used to extract contrastive features. Additionally, since contrastive learning tends to focus on learning abstract semantic-level features rather than pixel-level texture details, a wavelet transform decoupling is further applied to the synthetic distortion samples to construct a high–low frequency texture interaction network for extracting texture features. Finally, the two types of features are fused and regressed to generate the final quality score. Experimental results show that the proposed method achieves superior performance across three benchmark databases (namely, IRCCyN/IVC, IETR, andMCL-3D), with PLCC reaching 0.9404, 0.8380, and 0.9666, respectively, representing improvements of 0.0179, 0.0350, and 0.0175 higher than the existing best methods.
深度图像渲染(deep image-based rendering, DIBR)是一种在沉浸式媒体中合成虚拟视图以实现平滑过渡的常用方法,但其技术尚不成熟,往往会带来失真,对视觉质量产生不利影响。显然,准确地评估合成视图的质量对于监视和指导呈现过程至关重要。为此,本文提出了一种基于无参考深度学习的dibr合成视图质量评估方法,该方法主要通过对比学习特征增强网络和高低频纹理交互网络(简称CONTIN)相结合来实现。与传统基于手工特征提取的方法不同,该方法采用端到端深度学习方法,充分利用了数据特征和特征相关性。具体而言,针对现有深度学习方法中的样本扩展问题,首先基于自然图像模拟各种传统和渲染失真,构建对比样本数据库,并对该数据库进行训练,得到对比学习特征增强网络,用于提取对比特征。此外,由于对比学习倾向于学习抽象的语义级特征,而不是像素级纹理细节,因此进一步对合成畸变样本进行小波解耦,构建高低频纹理交互网络提取纹理特征。最后,对两类特征进行融合和回归,生成最终的质量分数。实验结果表明,该方法在三个基准数据库(IRCCyN/IVC、IETR和mcl - 3d)上取得了优异的性能,PLCC分别达到0.9404、0.8380和0.9666,比现有最佳方法分别提高0.0179、0.0350和0.0175。
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引用次数: 0
Retraction Notice: Quantum-Assisted Activation for Supervised Learning in Healthcare-Based Intrusion Detection Systems 撤回通知:基于医疗保健的入侵检测系统中监督学习的量子辅助激活
Pub Date : 2025-07-14 DOI: 10.1109/TAI.2025.3582067
Nikhil Laxminarayana;Nimish Mishra;Prayag Tiwari;Sahil Garg;Bikash K. Behera;Ahmed Farouk
N. Laxminarayana, N. Mishra, P. Tiwari, S. Garg, B. K. Behera, and A. Farouk, “Quantum-assisted activation for supervised learning in healthcare-based intrusion detection systems,” IEEE Transactions on Artificial Intelligence, vol. 5, no. 3, pp. 977–984, Mar. 2024.
N. Laxminarayana, N. Mishra, P. Tiwari, S. Garg, B. K. Behera, A. Farouk,“基于医疗保健的入侵检测系统中监督学习的量子辅助激活”,《IEEE人工智能学报》,第5卷,第5期。3,第977-984页,2024年3月。
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引用次数: 0
Optimization for Community Detection in Multilayer Networks: A Comprehensive Review and Novel Taxonomy 多层网络中社区检测的优化:综述与新分类
Pub Date : 2025-07-10 DOI: 10.1109/TAI.2025.3586828
Randa Boukabene;Fatima Benbouzid-Si Tayeb
Community detection is a rapidly growing field, especially for multilayer networks—systems with multiple interaction types. While these networks offer great potential, analyzing them remains complex and underexplored. Recently, researchers have turned to optimization techniques to address these challenges. However, despite diverse approaches, there’s no comprehensive study consolidating these advancements. To bridge this gap, this article provides a structured review of optimization techniques for community detection in multilayer networks, classifying methods by three criteria: resolution types, optimization types, and resolution methods. This aims to clarify the field and guide future research. This effort seeks to bring clarity to the field, offering a unified perspective on existing methods, while also providing a foundation to inspire and guide future research directions.
社区检测是一个快速发展的领域,特别是对于具有多种交互类型的多层网络系统。虽然这些网络提供了巨大的潜力,但分析它们仍然很复杂,而且尚未得到充分探索。最近,研究人员转向优化技术来解决这些挑战。然而,尽管有各种各样的方法,却没有全面的研究来巩固这些进步。为了弥补这一差距,本文对多层网络中社区检测的优化技术进行了结构化的回顾,并根据三个标准对方法进行了分类:分辨率类型、优化类型和分辨率方法。旨在厘清领域,指导未来的研究。这项工作旨在为该领域带来清晰度,为现有方法提供统一的视角,同时也为启发和指导未来的研究方向提供基础。
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引用次数: 0
Zero-Parameter Attention Sharing Transformer for Joint Human Activity and Identity Recognition 联合人体活动与身份识别的零参数注意力共享变压器
Pub Date : 2025-07-08 DOI: 10.1109/TAI.2025.3586571
Shuokang Huang;Po-Yu Chen;Peilin Zhou;Kaihan Li;Julie A. McCann
WiFi-based human sensing is gaining popularity thanks to it not requiring additional devices and not being as intrusive as cameras. Specifically, human features can be extracted from WiFi channel state information (CSI) to recognize human activities, identities, etc. However, most previous works rely on single-task learning models for recognition (e.g., to either recognize activities OR identities solely). The lack of cross-task knowledge sharing restricts these models to task-specific features and poor generalization. Recent studies have applied multitask learning (MTL) to tackle this, but their cross-task sharing modules add vast amounts of extra parameters. Such massive parameters increase model complexity and reduce time efficiency. In this article, we propose a novel zero-parameter attention sharing transformer (ZAST) to efficiently recognize both activities and identities. In ZAST, a cross-task attention on attention (CAoA) mechanism computes the relevance of attention scores for cross-task knowledge sharing, as a new paradigm for lightweight MTL. To mitigate the perturbation caused by attention sharing, we formulate a multihead similarity loss (L-MS) for stable model training. We further equip ZAST with channelwise squeeze and excitation (CSE) that efficiently learns the channel correlations of CSI. Extensive experiments on four public datasets indicate that ZAST achieves state-of-the-art recognition performance with the lowest complexity and the highest efficiency.
由于不需要额外的设备,而且不像摄像头那样具有侵入性,基于wifi的人体感应越来越受欢迎。具体来说,可以从WiFi信道状态信息(CSI)中提取人的特征来识别人的活动、身份等。然而,大多数先前的工作依赖于单一任务的学习模型进行识别(例如,要么单独识别活动,要么单独识别身份)。缺乏跨任务的知识共享限制了这些模型的特定于任务的特征和较差的泛化。最近的研究已经应用了多任务学习(MTL)来解决这个问题,但是他们的跨任务共享模块增加了大量的额外参数。如此庞大的参数增加了模型的复杂性,降低了时间效率。在本文中,我们提出了一种新的零参数注意力共享变压器(ZAST)来有效地识别活动和身份。在ZAST中,跨任务注意对注意(CAoA)机制计算了跨任务知识共享的注意分数的相关性,作为轻量级MTL的新范式。为了减轻由注意力共享引起的扰动,我们制定了一个多头相似损失(L-MS)用于稳定模型训练。我们进一步为ZAST配备了通道挤压和激励(CSE),可以有效地学习CSI的通道相关性。在四个公共数据集上的大量实验表明,ZAST以最低的复杂度和最高的效率达到了最先进的识别性能。
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引用次数: 0
SpikeNAS: A Fast Memory-Aware Neural Architecture Search Framework for Spiking Neural Network-Based Embedded AI Systems SpikeNAS:基于SpikeNAS的嵌入式AI系统的快速内存感知神经架构搜索框架
Pub Date : 2025-07-04 DOI: 10.1109/TAI.2025.3586238
Rachmad Vidya Wicaksana Putra;Muhammad Shafique
Embedded AI systems are expected to incur low power/energy consumption for solving machine learning tasks, as these systems are usually power constrained (e.g., object recognition task in autonomous mobile agents with portable batteries). These requirements can be fulfilled by spiking neural networks (SNNs), since their bio-inspired spike-based operations offer high accuracy and ultra low-power/energy computation. Currently, most of SNN architectures are derived from artificial neural networks whose neurons’ architectures and operations are different from SNNs, and/or developed without considering memory budgets from the underlying processing hardware of embedded platforms. These limitations hinder SNNs from reaching their full potential in accuracy and efficiency. Toward this, we propose SpikeNAS, a novel fast memory-aware neural architecture search (NAS) framework for SNNs that quickly finds an appropriate SNN architecture with high accuracy under the given memory budgets from targeted embedded systems. To do this, our SpikeNAS employs several key steps: analyzing the impacts of network operations on the accuracy, enhancing the network architecture to improve the learning quality, developing a fast memory-aware search algorithm, and performing quantization. The experimental results show that our SpikeNAS improves the searching time and maintains high accuracy compared to state-of-the-art while meeting the given memory budgets (e.g., 29$boldsymbol{times}$, 117$boldsymbol{times}$, and 3.7$boldsymbol{times}$ faster search for CIFAR10, CIFAR100, and TinyImageNet200, respectively, using an Nvidia RTX A6000 GPU machine), thereby quickly providing the appropriate SNN architecture for the memory-constrained embedded AI systems.
嵌入式人工智能系统在解决机器学习任务时预计会产生低功耗/能耗,因为这些系统通常受到功率限制(例如,在带有便携式电池的自主移动代理中进行对象识别任务)。这些要求可以通过脉冲神经网络(snn)来满足,因为它们基于生物启发的脉冲操作提供了高精度和超低功耗/能量的计算。目前,大多数SNN架构来源于人工神经网络,其神经元的架构和操作与SNN不同,并且/或者在开发时没有考虑嵌入式平台底层处理硬件的内存预算。这些限制阻碍了snn在准确性和效率方面发挥其全部潜力。为此,我们提出了SpikeNAS,一种新颖的SNN快速内存感知神经架构搜索(NAS)框架,它可以在给定的内存预算下从目标嵌入式系统快速找到合适的SNN架构。为此,我们的SpikeNAS采用了几个关键步骤:分析网络操作对准确性的影响,增强网络架构以提高学习质量,开发快速的内存感知搜索算法,并执行量化。实验结果表明,我们的SpikeNAS在满足给定内存预算(例如,使用Nvidia RTX A6000 GPU机器,CIFAR10, CIFAR100和TinyImageNet200的搜索速度分别为29$boldsymbol{times}$, 117$boldsymbol{times}$和3.7$boldsymbol{times}$)的情况下,提高了搜索时间并保持了较高的准确性,从而为内存限制的嵌入式人工智能系统快速提供了合适的SNN架构。
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引用次数: 0
Application of Gaussian Distribution Crayfish Optimization in Adaptive FIR Filter Bank: Four-Channel Uniform and Nonuniform Designs 高斯分布小龙虾优化在自适应FIR滤波器组中的应用:四通道均匀和非均匀设计
Pub Date : 2025-07-04 DOI: 10.1109/TAI.2025.3585868
Himani Daulat;Krishna Chauhan;Tarun Varma
Filter bank design remains a critical challenge in signal processing, particularly in achieving high-performance metrics while maintaining computational efficiency. Current methods, including various optimization algorithms, have made strides in addressing these challenges but often need to improve in balancing perfect reconstruction (PR) and magnitude response accuracy. This research addresses these gaps by introducing the Gaussian distribution crayfish optimization algorithm (GD-COA), an enhanced version of the crayfish optimization algorithm (COA), for designing a four-channel finite impulse response (FIR) filter bank. The GD-COA formulates the design problem as a meta-heuristic optimization task, integrating PR and magnitude criteria to guide the filter design. It applies to uniform (critically sampled and oversampled) and nonuniform filter banks, accommodating various sampling rates. Our results show that GD-COA achieves significant improvements in filter bank performance. Specifically, for a critically sampled uniform filter bank, it attained a PR Error of $7.2219boldsymboltimes 10^{-16}$ and a Magnitude Response Approximation Error (MRAE) of $3.8018boldsymboltimes 10^{-16}$. In an oversampled uniform filter bank, the PR Error was $1.7321boldsymboltimes 10^{-5}$ with an MRAE of $7.2444boldsymboltimes 10^{-6}$. The algorithm yielded a PR Error of $3.2831boldsymboltimes 10^{-4}$ and an MRAE of $8.5113boldsymboltimes 10^{-5}$ for a nonuniform filter bank with a consistent sampling set. When applied to a variable filter bank with an inconsistent sampling set, the PR Error was $1.1403boldsymboltimes 10^{-4}$, and the MRAE was $2.34423boldsymboltimes 10^{-5}$. These results demonstrate the GD-COA’s effectiveness in optimizing filter coefficients, ensuring minimal reconstruction errors, and satisfactory magnitude response across various design scenarios.
滤波器组设计仍然是信号处理中的一个关键挑战,特别是在保持计算效率的同时实现高性能指标。目前的方法,包括各种优化算法,已经在解决这些挑战方面取得了长足的进步,但往往需要在平衡完美重建(PR)和震级响应精度方面进行改进。本研究通过引入高斯分布小龙虾优化算法(GD-COA)来解决这些空白,这是小龙虾优化算法(COA)的增强版本,用于设计四通道有限脉冲响应(FIR)滤波器组。GD-COA将设计问题表述为一个元启发式优化任务,整合PR和幅度标准来指导滤波器设计。它适用于均匀(严格采样和过采样)和非均匀滤波器组,适应各种采样率。我们的研究结果表明,GD-COA在滤波器组性能方面取得了显著的改善。具体来说,对于严格采样的均匀滤波器组,它的PR误差为7.2219boldsymbol乘以10^{-16}$,幅度响应近似误差(MRAE)为3.8018boldsymbol乘以10^{-16}$。在过采样均匀滤波器组中,PR误差为$1.7321boldsymbol乘以10^{-5}$,MRAE为$7.2444boldsymbol乘以10^{-6}$。对于具有一致采样集的非均匀滤波器组,该算法产生的PR误差为3.2831boldsymbol乘以10^{-4}$,MRAE为8.5113boldsymbol乘以10^{-5}$。当应用于具有不一致采样集的可变滤波器组时,PR误差为$1.1403boldsymbol乘以10^{-4}$,MRAE为$2.34423boldsymbol乘以10^{-5}$。这些结果证明了GD-COA在优化滤波器系数,确保最小的重构误差以及在各种设计场景下令人满意的幅度响应方面的有效性。
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引用次数: 0
Refined Two-Sided Learning Rate Tuning for Robust Evaluation in Federated Learning 用于联邦学习鲁棒评估的精细化双侧学习率调整
Pub Date : 2025-07-01 DOI: 10.1109/TAI.2025.3585090
Erich Malan;Valentino Peluso;Andrea Calimera;Enrico Macii
This article investigates the impact of client and server learning rates on training deep neural networks in federated learning (FL). While previous research has primarily focused on optimizing the initial values of these learning rates, we demonstrate that this approach alone is insufficient for maximizing model performance and training efficiency. To address this weakness, we propose a revised two-sided learning rate optimization strategy that integrates learning rate decay schedules as tunable variables and adjusts the learning rate configurations based on the target training budget, allowing for more effective optimization. We conduct an extensive experimental evaluation to quantify the improvements offered by our approach. The results reveal that: 1) integrating decay schedules into the tuning process leads to significant performance enhancements; and 2) the optimal configuration of client-server decay schedules is strongly influenced by the training round budget. Based on these findings, we claim that performance evaluations of new FL algorithms should extend beyond the fine-tuning of the initial learning rate values, as done in the state-of-the-art approach, and include the optimization of decay schedules according to the available training budget.
本文研究了客户端和服务器学习率对联邦学习(FL)中训练深度神经网络的影响。虽然以前的研究主要集中在优化这些学习率的初始值,但我们证明,这种方法本身不足以最大化模型性能和训练效率。为了解决这一缺点,我们提出了一种修正的双边学习率优化策略,该策略将学习率衰减时间表作为可调变量,并根据目标训练预算调整学习率配置,从而实现更有效的优化。我们进行了广泛的实验评估,以量化我们的方法所提供的改进。结果表明:1)将衰减调度集成到调优过程中可以显著提高性能;2)客户机-服务器衰减调度的最优配置受训练轮预算的强烈影响。基于这些发现,我们声称新的FL算法的性能评估应该超越初始学习率值的微调,就像在最先进的方法中所做的那样,并包括根据可用训练预算优化衰减时间表。
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引用次数: 0
Practical Group Consensus of T-S Fuzzy Positive Multiagent Systems Using Compensative Control 补偿控制下T-S模糊正多智能体系统的实用群一致性
Pub Date : 2025-07-01 DOI: 10.1109/TAI.2025.3584905
Junfeng Zhang;Hao Ji;Tarek Raïssi;Haoyue Yang
This article investigates the practical group consensus of type-1 and type-2 T-S fuzzy positive multiagent systems (MASs). First, a positive disturbance observer and a distributed positive compensator are proposed. A group consensus protocol is designed by integrating event-triggered mechanism, which utilizes the state information of the compensator. Some feasible conditions are addressed for practical group positive consensus in the form of linear programming (LP). The key novelties are threefold: 1) a novel positive disturbance observer and compensator framework is constructed; 2) a fuzzy positive group consensus protocol is established; and 3) LP is employed for describing the corresponding conditions. Finally, two examples are provided to verify the effectiveness of the theory findings.
本文研究了一类和二类T-S模糊正多智能体系统(MASs)的实际群体共识。首先,提出了一种正扰动观测器和分布式正补偿器。利用补偿器的状态信息,结合事件触发机制设计了一种群体共识协议。以线性规划的形式讨论了实际群体正一致的可行条件。主要创新点有三个:1)构造了一种新的正扰动观测器和补偿器框架;2)建立了模糊正群体共识协议;3)用LP来描述相应的条件。最后,通过两个实例验证了理论结果的有效性。
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引用次数: 0
PGR: Pseudograph Regularization for Semisupervised Classification 半监督分类的伪图正则化
Pub Date : 2025-07-01 DOI: 10.1109/TAI.2025.3585095
Cong Hu;Jiangtao Song;Xiao-Jun Wu
Semisupervised learning (SSL) is gaining attention for its intrinsic ability to extract valuable information from labeled and unlabeled data with improved performance. Recently, consistency regularization methods have gained interest due to their efficient learning procedures. However, they are confined to pseudolabel or feature representation-level perturbations, negating the benefit of having both forms in a single framework. This leads to the model remaining robust to either the pseudolabel or the feature representation. To this end, we propose pseudograph regularization (PGR) for semisupervised classification, which leverages graph-based contrastive learning to unify pseudolabels and feature embeddings in a single semisupervised framework. The model imposes graph regularization on both pseudolabels and feature embeddings of unlabeled data to retain the intrinsic geometric structure. Feature embeddings into the model impose constraints on the class probability, forcing the class probability distributions of unlabeled data subject to different perturbations to be consistent. The pseudolabels regularly optimize the embedding space’s structure through graph-based contrastive learning, which allows data with similar pseudolabels to have similar feature embeddings in latent space. PGR unifies pseudolabel and feature representation of unlabeled data to improve the ability of model to resist noise interference and generalization ability. Extensive experiments on four benchmark datasets demonstrate that PGR can generate higher quality pseudolabels for unlabeled data, and is superior to the state-of-the-art (SOTA) methods.
半监督学习(SSL)因其从标记和未标记数据中提取有价值信息的内在能力而受到关注,并且性能有所提高。近年来,一致性正则化方法因其高效的学习过程而备受关注。然而,它们仅限于伪标签或特征表示级扰动,否定了在单个框架中具有两种形式的好处。这导致模型对伪标签或特征表示保持鲁棒性。为此,我们提出了半监督分类的伪图正则化(PGR),它利用基于图的对比学习在单个半监督框架中统一伪标签和特征嵌入。该模型对未标记数据的伪标记和特征嵌入进行图正则化,以保持其固有的几何结构。模型中的特征嵌入对类别概率施加了约束,迫使受不同扰动的未标记数据的类别概率分布保持一致。伪标签通过基于图的对比学习有规律地优化嵌入空间的结构,使得具有相似伪标签的数据在潜在空间中具有相似的特征嵌入。PGR将未标记数据的伪标记和特征表示相结合,提高了模型抗噪声干扰的能力和泛化能力。在四个基准数据集上的大量实验表明,PGR可以为未标记的数据生成更高质量的伪标签,并且优于最先进的(SOTA)方法。
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引用次数: 0
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IEEE transactions on artificial intelligence
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