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2025 Index IEEE Transactions on Artificial Intelligence 2025索引IEEE人工智能学报
Pub Date : 2025-12-08 DOI: 10.1109/TAI.2025.3641262
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引用次数: 0
IEEE Transactions on Artificial Intelligence Publication Information IEEE人工智能学报
Pub Date : 2025-11-26 DOI: 10.1109/TAI.2025.3632311
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引用次数: 0
IEEE Transactions on Artificial Intelligence Publication Information IEEE人工智能学报
Pub Date : 2025-11-03 DOI: 10.1109/TAI.2025.3623487
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引用次数: 0
IEEE Transactions on Artificial Intelligence Publication Information IEEE人工智能学报
Pub Date : 2025-09-01 DOI: 10.1109/TAI.2025.3599608
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引用次数: 0
IEEE Transactions on Artificial Intelligence Publication Information IEEE人工智能学报
Pub Date : 2025-07-31 DOI: 10.1109/TAI.2025.3590995
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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
IEEE Transactions on Artificial Intelligence Publication Information IEEE人工智能学报
Pub Date : 2025-06-30 DOI: 10.1109/TAI.2025.3577711
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引用次数: 0
NeuroCrypt: A Neuro Symbolic AI Ecosystem for Advanced Cryptographic Data Security and Transmission NeuroCrypt:用于高级加密数据安全和传输的神经符号AI生态系统
Pub Date : 2025-06-12 DOI: 10.1109/TAI.2025.3577605
Tanish Singh Rajpal;Akshit Naithani
In response to the critical vulnerabilities exposed by quantum computing and AI-driven cryptanalysis in traditional encryption systems, this article introduces NeuroCrypt—a neuro-symbolic AI framework that synergizes adaptive cryptography, decentralized governance, and postquantum security. NeuroCrypt employs three AI groups: CryptAI (multialgorithm encryption), GenAI (neuro-symbolic algorithm synthesis), and TestAI (adversarial validation), to dynamically generate and deploy quantum-resistant cryptographic techniques. The framework uniquely combines five-layer encryption (randomly ordered classical and AI-generated algorithms, e.g., lattice–chaotic hybrids) with metadata-driven security, where encrypted logic is distributed via Shamir’s secret sharing (SSS) over VPNs, eliminating key-exchange dependencies. A permissioned blockchain enforces tamper-proof updates validated by TestAI consensus ($n/2 + 1$ threshold), while dynamic threshold adaptation adjusts SSS shard requirements based on real-time threat levels. Evaluations demonstrate NeuroCrypt’s superiority: 2.3$times$ higher entropy than AES-256, 94.3% shard survival under 30% compromise, and 220 ms encryption latency for 1 MB data on edge devices. The system’s lattice-based encryption (1024-dimensional) and frequent AI-driven updates resist Shor/Grover attacks, validated through simulated quantum oracles achieving $mathcal{O}(10^{38})$ operations for 256-bit keys. Compliance with GDPR, NIST PQC, and FIPS 140-2 ensures readiness for healthcare, fintech, and government applications. NeuroCrypt’s architecture—backward-compatible with legacy systems and optimized for IoT/cloud ecosystems—sets a precedent for self-evolving security, offering a 15% storage overhead trade-off for metadata-driven keyless decryption. Future work will optimize edge-device performance and integrate 6G network protocols, establishing NeuroCrypt as a foundational framework for postquantum cybersecurity.
为了应对量子计算和人工智能驱动的密码分析在传统加密系统中暴露的关键漏洞,本文介绍了神经密码——一种神经符号人工智能框架,可协同自适应密码学、分散治理和后量子安全。NeuroCrypt采用三个AI组:CryptAI(多算法加密),GenAI(神经符号算法合成)和TestAI(对抗验证),来动态生成和部署抗量子加密技术。该框架独特地将五层加密(随机排序的经典算法和人工智能生成的算法,例如,格混沌混合算法)与元数据驱动的安全性相结合,其中加密逻辑通过vpn上的Shamir秘密共享(SSS)分发,消除了密钥交换依赖。允许的区块链执行由testi共识验证的防篡改更新($n/2 + 1$阈值),而动态阈值适应根据实时威胁级别调整SSS分片要求。评估证明了NeuroCrypt的优势:熵值比AES-256高2.3倍,在30%的妥协下分片存活率为94.3%,边缘设备上1mb数据的加密延迟为220毫秒。该系统基于格子的加密(1024维)和频繁的人工智能驱动的更新抵御Shor/Grover攻击,通过模拟量子预言机验证,实现256位密钥的$mathcal{O}(10^{38})$操作。符合GDPR、NIST PQC和FIPS 140-2,确保为医疗保健、金融科技和政府应用做好准备。NeuroCrypt的架构与传统系统向后兼容,并针对物联网/云生态系统进行了优化,开创了自进化安全性的先例,为元数据驱动的无密钥解密提供了15%的存储开销。未来的工作将优化边缘设备性能并集成6G网络协议,将NeuroCrypt建立为后量子网络安全的基础框架。
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引用次数: 0
Exploring Topic Trends in COVID-19 Research Literature Using Nonnegative Matrix Factorization 利用非负矩阵分解法探索COVID-19研究文献的主题趋势
Pub Date : 2025-06-12 DOI: 10.1109/TAI.2025.3579459
Divya Patel;Vansh Parikh;Om Patel;Agam Shah;Bhaskar Chaudhury
In this work, we apply topic modeling using nonnegative matrix factorization (NMF) on the COVID-19 open research dataset (CORD-19) to uncover the underlying thematic structure and its evolution within the extensive body of COVID-19 research literature. NMF factorizes the document-term matrix into two nonnegative matrices, effectively representing the topics and their distribution across the documents. This helps us to see how strongly documents relate to topics and how topics relate to words. We describe the complete methodology, which involves a series of rigorous preprocessing steps to standardize the available text data while preserving the context of phrases and subsequently feature extraction using the term frequency-inverse document frequency (tf-idf), which assigns weights to words based on their frequency and rarity in the dataset. To ensure the robustness of our topic model, we conduct a stability analysis. This process assesses the stability scores of the NMF topic model for different numbers of topics, enabling us to select the optimal number of topics for our analysis. Through our analysis, we track the evolution of topics over time within the CORD-19 dataset. Our findings contribute to the understanding of the knowledge structure of the COVID-19 research landscape, providing a valuable resource for future research in this field.
在这项工作中,我们使用非负矩阵分解(NMF)对COVID-19开放研究数据集(CORD-19)进行主题建模,以揭示COVID-19研究文献中潜在的主题结构及其演变。NMF将文档术语矩阵分解为两个非负矩阵,有效地表示主题及其在文档中的分布。这有助于我们了解文档与主题的关联程度,以及主题与单词的关联程度。我们描述了完整的方法,其中包括一系列严格的预处理步骤,以标准化可用的文本数据,同时保留短语的上下文,随后使用术语频率逆文档频率(tf-idf)进行特征提取,该方法根据单词在数据集中的频率和罕见度为单词分配权重。为了保证主题模型的稳健性,我们进行了稳定性分析。这个过程对不同数量的主题评估NMF主题模型的稳定性分数,使我们能够选择最优数量的主题进行分析。通过我们的分析,我们在CORD-19数据集中跟踪主题随时间的演变。我们的发现有助于理解COVID-19研究格局的知识结构,为该领域的未来研究提供宝贵的资源。
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引用次数: 0
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IEEE transactions on artificial intelligence
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