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Corner Sparse R-CNN for Pedestrian Detection in Dense Scenes 基于角点稀疏R-CNN的密集场景行人检测
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-11 DOI: 10.1007/s10489-025-06984-3
Jun Wang, Cong Wu, Lei Wan, Xin Zhang, Shuaiqi Liu

With the continuous development of deep learning, generic object detection techniques are becoming increasingly mature. However, in densely populated scenes where pedestrian density is high and occlusion is severe, the performance of generic object detectors is not ideal. In dense scenes, features from the corner regions could help detectors achieve higher performance, yet existing generic detectors often overlook this aspect. To address the above issues, a plug-and-play Corner Feature Regulate Network, named as CFRN, is proposed in this paper. It extracts the corner features from the deep-layer feature maps of Feature Pyramid Network (FPN) through the Explicit Visual Center (EVC) module. Then the deep layer corner features are utilized to adjust shallow-layer features to ensure that all feature maps contain crucial corner feature essential for dense scenes. Additionally, to address the issue of redundant features which introduced by using bilinear interpolation for multi-scale upsampling in the CFRN, the Redundant Feature Suppression Module (RFSM) is proposed by using ScConv to extract redundant attention from the feature maps of CFRN. This module could reduce the redundant features introduced by using bilinear interpolation in CFRN effectively. The experiment results on the CrowdHuman, CityPersons and COCOPerson show that compared to the Sparse R-CNN, the proposed method improves by 0.7% on AP, decreases by 0.2% on (MR^{-2}), and improves by 1.1% on JI. Code is available at https://github.com/davidsmithwj/CS-CS-RCNN.

随着深度学习的不断发展,通用目标检测技术也日趋成熟。然而,在行人密度大、遮挡严重的人口密集场景中,通用目标检测器的性能并不理想。在密集的场景中,来自角落区域的特征可以帮助检测器实现更高的性能,但现有的通用检测器往往忽略了这一点。为了解决上述问题,本文提出了一种即插即用的拐角特征调节网络(CFRN)。它通过显式视觉中心(EVC)模块从特征金字塔网络(FPN)的深层特征图中提取拐角特征。然后利用深层角点特征对浅层特征进行调整,确保所有特征映射都包含密集场景所必需的关键角点特征。此外,针对CFRN多尺度上采样中使用双线性插值带来的冗余特征问题,提出了冗余特征抑制模块(RFSM),利用ScConv从CFRN的特征映射中提取冗余注意力。该模块可以有效地减少CFRN中双线性插值引入的冗余特征。在CrowdHuman、CityPersons和COCOPerson上的实验结果表明,与稀疏R-CNN相比,提出的方法提高了0.7% on AP, decreases by 0.2% on (MR^{-2}), and improves by 1.1% on JI. Code is available at https://github.com/davidsmithwj/CS-CS-RCNN.
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引用次数: 0
An analytical comparison of machine learning- based techniques for test case generation across diverse reaction wheel systems 基于机器学习的测试用例生成技术在不同反应轮系统中的分析比较
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-11 DOI: 10.1007/s10489-025-06944-x
Fotis Aisopos, Dimitrios Vogiatzis, Mário Pinto, Paschalis Veskos, Georgios Paliouras, Robert Blommestijn

Manual testing of the mechanical parts of a satellite, such as reaction wheels, is often cost-inefficient, with multiple approaches for automating this process having been investigated. AI-driven testing tools can be employed towards this direction, reducing time and effort, although human intervention must be still kept in the loop, to ensure test robustness and coverage completability. This paper employs machine learning models, with the aim to automate the test generation process for a reaction wheel, in the context of a passive rundown test scenario. Towards this direction, a relevant simulator is utilized, specifying different models for different wheel types. A Support Vector Machine with RBF Kernel is trained guided by an efficient Active Learning technique, in order to generate adequate passive rundown test cases for three reaction wheel profiles (a heavy, a medium and a light wheel). The model is supported by an automated test evaluation script that 1 Final revised PDF analyses simulation speed outputs, labeling each test case as “adequate” or “not adequate”. The proposed approach is evaluated against a big dataset of labeled test cases for all wheel types. The experimental evaluation illustrated a high precision (1.0, 0.85 and 0.70 for the three reaction wheel profiles respectively) achieved by the SVM-RBF approach, in contrast to other competing methods (generative or classification). Lastly, as a practical experiment, four generated test cases are ran in a lab reaction wheel, estimating its friction parameters, in order to assess its health status. Calculating the observed friction values based on the time to stop parameter, the reaction wheel is finally characterized as healthy.

人工测试卫星的机械部件,如反作用轮,通常成本低,已经研究了多种自动化这一过程的方法。人工智能驱动的测试工具可以朝着这个方向使用,减少时间和精力,尽管人工干预仍然必须保持在循环中,以确保测试的健壮性和覆盖的可完成性。本文采用机器学习模型,目的是在被动故障测试场景的背景下自动生成反应轮的测试过程。为此,利用了相应的模拟器,针对不同的车轮类型指定了不同的模型。在有效的主动学习技术指导下,训练了具有RBF核的支持向量机,以生成三种反应轮(重轮、中轮和轻轮)的足够的被动故障测试用例。该模型由一个自动化的测试评估脚本支持,1 Final修订的PDF分析仿真速度输出,将每个测试用例标记为“适当的”或“不适当的”。所提出的方法是针对所有车轮类型的标记测试用例的大数据集进行评估的。实验评估表明,与其他竞争方法(生成或分类)相比,SVM-RBF方法获得了较高的精度(分别为1.0,0.85和0.70)。最后,作为实际实验,在实验室反作用轮上运行了生成的4个测试用例,估计了反作用轮的摩擦参数,以评估反作用轮的健康状况。根据停止时间参数计算观察到的摩擦值,最终表征反作用轮为健康轮。
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引用次数: 0
Deep reinforcement learning for UAV attitude control via adaptive gain optimization 基于自适应增益优化的无人机姿态控制深度强化学习
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-10 DOI: 10.1007/s10489-025-06978-1
Muhammad Zorain, Fawad Salam Khan, Noman Hasany, Zia Mohy Ud Din, Jahan Zeb Gul

This research investigates the efficacy of advanced deep reinforcement learning algorithms in the field of unmanned aerial vehicle (UAV) attitude control. Deep reinforcement learning has demonstrated encouraging results in the robotics and high-level mission planning, its application to low-level mission planning remains understudied. There is a crucial need for more sophisticated control in UAV to operate in challenging and unpredictable environments. In this research study, we present a thorough assessment of the three groundbreaking deep reinforcement learning algorithms such as Proximal Policy Optimization (PPO), Deep Deterministic Policy Gradient (DDPG) & Trust Region Policy Optimization (TRPO) for UAV attitude control, quadcopters to be precise. We have utilized a high- fidelity simulation environment and experimentally assessed these algorithms’. ability to learn robust control policies. Evaluations based on rise time, peak response, error minimization and stability demonstrate that PPO outperforms DDPG and TRPO, achieving better precision and robustness. Our comparative results suggest that the controller with combination of adaptive gain optimization and DRL significantly improves the flight performance with an average of 19.9%, 6.6%, 16.5% improvement in rise time, peak percentage, error rate respectively and a complete stable flight.

本研究探讨了先进的深度强化学习算法在无人机姿态控制领域的有效性。深度强化学习在机器人技术和高级任务规划方面取得了令人鼓舞的成果,但其在低级任务规划中的应用仍有待进一步研究。在具有挑战性和不可预测的环境中,无人机对更复杂的控制有至关重要的需求。在这项研究中,我们全面评估了三种突破性的深度强化学习算法,如近端策略优化(PPO)、深度确定性策略梯度(DDPG)和信任区域策略优化(TRPO),用于无人机姿态控制,准确地说,是四轴飞行器。我们利用了一个高保真仿真环境,并对这些算法进行了实验评估。能够学习稳健的控制策略。基于上升时间、峰值响应、误差最小化和稳定性的评估表明,PPO优于DDPG和TRPO,具有更好的精度和鲁棒性。对比结果表明,自适应增益优化与DRL相结合的控制器显著提高了飞行性能,上升时间、峰值百分比、错误率分别平均提高19.9%、6.6%、16.5%,实现了完全稳定的飞行。
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引用次数: 0
Two top-k HUIM algorithms based on the particle filter theory 基于粒子滤波理论的两种top-k HUIM算法
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-10 DOI: 10.1007/s10489-025-06969-2
Yang Yang, Hafiz Mohd Sarim, Honghai Wang

Top-k high utility itemset mining(Top-k HUIM) has emerged as a critical research area, facilitating the discovery of valuable itemsets without predefined thresholds. Existing methods primarily focus on datasets without negative utilities, while approaches for handling negative utilities remain limited. Additionally, many top-k HUIM techniques require multiple global scans and large data structures, which hinder their efficiency and scalability. To address these challenges, we propose two novel algorithms: PFH (Particle Filter-based top-k HUIM for datasets without negative utilities) and PFHN (Particle Filter-based top-k HUIM for datasets with Negative utilities). PFH introduces a novel transmission process by assigning transition probabilities to particles for updating their states. A criterion for particle degeneration is proposed to terminate the transmission process, and a resampling strategy is employed to mitigate particle degeneration and improve algorithmic efficiency. In order to handle datasets with negative utilities, PFHN further introduces a utility flag filtering mechanism and employs a pruning strategy distinct from PFH to enhance efficiency. Extensive experiments demonstrate that both PFH and PFHN can efficiently and accurately mine top-k HUIs, providing a novel perspective for solving the top-k HUIM problem.

Top-k高效用项目集挖掘(Top-k HUIM)已经成为一个关键的研究领域,它有助于在没有预定义阈值的情况下发现有价值的项目集。现有方法主要关注没有负效用的数据集,而处理负效用的方法仍然有限。此外,许多top-k HUIM技术需要多次全局扫描和大型数据结构,这阻碍了它们的效率和可扩展性。为了解决这些挑战,我们提出了两种新的算法:PFH(基于粒子滤波的top-k HUIM,适用于无负效用的数据集)和PFHN(基于粒子滤波的top-k HUIM,适用于具有负效用的数据集)。PFH引入了一种新的传输过程,通过赋予粒子跃迁概率来更新它们的状态。提出了一个粒子退化准则来终止传输过程,并采用重采样策略来减轻粒子退化,提高算法效率。为了处理具有负效用的数据集,PFHN进一步引入了效用标志过滤机制,并采用了与PFH不同的修剪策略来提高效率。大量实验表明,PFH和PFHN都能高效、准确地挖掘top-k hui,为解决top-k HUIM问题提供了新的视角。
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引用次数: 0
Fairness consensus adjustment and bifocal expert weight integration in multi-attribute group decision-making with parallel expert evaluation systems 并行专家评价系统下多属性群体决策公平性共识调整与双焦点专家权重整合
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-10 DOI: 10.1007/s10489-025-06942-z
Jinpei Liu, Rong Xu, Wenqing Xu, Longlong Shao

Multi-attribute group decision-making (MAGDM) constitutes a pivotal methodology for resolving complex problems requiring collective expertise. However, critical limitations persist in current frameworks, including overreliance on unilateral expert weight strategies that neglect the interplay between informational objectivity and social influence, treatment of evaluation systems as structural “black boxes”, unrealistic assumptions regarding perfect expert rationality, and inequitable modification of opinions during consensus building. To address these issues, this study develops an integrated MAGDM framework that incorporates three synergistic innovations. First, we introduce a hybrid weighting mechanism that combines information entropy and quantum Bayesian networks (QBNs) to quantify the interference effects of trust propagation, and solve the combination ratio through Monte Carlo simulation. Second, a fair consensus adjustment model is constructed to optimize the distribution of opinion revisions and balance consensus reaching with the retention of original opinions. Third, to characterize experts’ risk-avoidance behavior and evaluate the internal structure and behavioral characteristics of the system, we design a parallel data envelopment analysis (DEA) cross-efficiency model and a regret-based perceived utility value (PUV). Finally, an illustrative example is presented to validate the effectiveness of the proposed approach, while its robustness and superiority are demonstrated through sensitivity analysis and comparative experiments.

多属性群体决策(MAGDM)是解决需要集体专业知识的复杂问题的关键方法。然而,目前的框架仍然存在严重的局限性,包括过度依赖单方面的专家权重策略,忽视了信息客观性和社会影响之间的相互作用,将评估系统视为结构性的“黑盒子”,对完美的专家理性的不切实际的假设,以及在建立共识过程中对意见的不公平修改。为了解决这些问题,本研究开发了一个集成的MAGDM框架,其中包含三个协同创新。首先,引入信息熵与量子贝叶斯网络(qbn)相结合的混合加权机制,量化信任传播的干扰效应,并通过蒙特卡罗模拟求解组合比;其次,构建公平共识调整模型,优化意见修正分布,平衡共识达成与保留原创性意见之间的关系。第三,为了刻画专家的风险规避行为,评估系统的内部结构和行为特征,我们设计了并行数据包络分析(DEA)交叉效率模型和基于后悔的感知效用价值(PUV)模型。最后,通过一个算例验证了该方法的有效性,并通过灵敏度分析和对比实验验证了该方法的鲁棒性和优越性。
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引用次数: 0
A generalized nonconvex algorithm framework for low-rank and sparse matrix decomposition 低秩稀疏矩阵分解的广义非凸算法框架
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-08 DOI: 10.1007/s10489-025-06971-8
Angang Cui, Lijun Zhang, Haizhen He, Shengli Xue

The low-rank and sparse matrix decomposition problem is a hot and challenging problem in computer science. In this paper, we consider it as a nonconvex relaxation optimization problem by using a family of nonconvex functions to approximate the rank function and the (ell _{0})-norm in low-rank and sparse matrix decomposition problem, namely, generalized low-rank and sparse matrix decomposition problem. The essence of this paper is to develop an adaptive algorithm framework with parameters updating for the nonconvex relaxation problem. Firstly, we prove the equivalence between the generalized low-rank and sparse matrix decomposition problem and the regularization generalized low-rank and sparse matrix decomposition problem. This means that the optimal solution of generalized low-rank and sparse matrix decomposition problem can be exactly obtained by solving its regularization minimization problem. Secondly, we present a tractable nonconvex algorithm framework to solve the regularization generalized low-rank and sparse matrix decomposition problem. The convergence analysis of the algorithm framework is provided. More importantly, we also define a very powerful parameter-setting strategy to adapt the optimal parameters in iteration of the proposed algorithm framework. Finally, we test the proposed algorithms on some random low-rank and sparse matrix decomposition problems, and the numerical results verified the effectiveness of the proposed algorithms. In addition, we also extend the proposed algorithms to the image denoising and background modeling from surveillance video.

低秩稀疏矩阵分解问题是计算机科学中的一个热点和挑战性问题。本文利用一组非凸函数来近似低秩稀疏矩阵分解问题中的秩函数和(ell _{0}) -范数,即广义低秩稀疏矩阵分解问题,将其视为一个非凸松弛优化问题。本文的核心是开发一种具有参数更新的自适应非凸松弛问题的算法框架。首先证明了广义低秩稀疏矩阵分解问题与正则化广义低秩稀疏矩阵分解问题的等价性;这意味着广义低秩稀疏矩阵分解问题的最优解可以通过求解其正则化最小化问题得到。其次,针对正则化广义低秩稀疏矩阵分解问题,提出了一种易于处理的非凸算法框架。给出了算法框架的收敛性分析。更重要的是,我们还定义了一个非常强大的参数设置策略,以适应所提出的算法框架迭代的最优参数。最后,我们在一些随机的低秩和稀疏矩阵分解问题上对所提算法进行了测试,数值结果验证了所提算法的有效性。此外,我们还将提出的算法扩展到监控视频的图像去噪和背景建模。
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引用次数: 0
ESG disclosure in supply chain finance risk: A research based on interpretable machine learning models 供应链金融风险中的ESG信息披露:基于可解释机器学习模型的研究
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-08 DOI: 10.1007/s10489-025-06974-5
Guanglan Zhou, Shiru Wang

This study focuses on the complexity and challenges of risk assessment in Supply Chain Finance (SCF) from an Environmental, Social and Governance (ESG) perspective. Through in-depth analysis of interpretable machine learning models, their effectiveness in identifying ESG-related risk was evaluated. Firstly, a SCF risk assessment framework that integrated ESG factors was designed. Subsequently, the data were preprocessed using the synthetic minority oversampling technique (SMOTE). Then, a variety of machine learning models for risk assessment were applied. Finally, through ablation experiment and Shapley Additive interpretation (SHAP) of XGBoost (Extreme Gradient Boosting), this study explained the contribution and importance of each risk factor to the results. This study effectively solved the interpretability problem of black-box machine learning model. The results of ablation experiments showed that ESG factors had certain influence on the risk of SCF. In addition, SHAP method further highlighted the core role of asset-liability ratio, cash ratio and quick ratio in risk assessment. This study revealed the practical application effects of different models in financial risk assessment, and used SHAP algorithm to provide clearer verification of machine learning results. It filled the gap in interpretable machine learning in SCF field. And it also provided strong support for promoting green and sustainable supply chain financial resources.

本研究从环境、社会和治理(ESG)的角度探讨供应链金融(SCF)风险评估的复杂性和挑战。通过对可解释机器学习模型的深入分析,评估了其在识别esg相关风险方面的有效性。首先,设计了一个整合ESG因素的SCF风险评估框架。随后,使用合成少数过采样技术(SMOTE)对数据进行预处理。然后,应用各种机器学习模型进行风险评估。最后,通过消融实验和XGBoost (Extreme Gradient Boosting)的Shapley Additive interpretation (SHAP),解释各危险因素对结果的贡献和重要性。本研究有效地解决了黑箱机器学习模型的可解释性问题。消融实验结果显示ESG因素对SCF发生风险有一定影响。此外,SHAP方法进一步突出了资产负债率、现金比率和速动比率在风险评估中的核心作用。本研究揭示了不同模型在金融风险评估中的实际应用效果,并利用SHAP算法对机器学习结果进行了更清晰的验证。它填补了可解释机器学习在SCF领域的空白。为推动供应链金融资源的绿色可持续发展提供了有力支持。
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引用次数: 0
MDIF: A multimodal dynamic inference framework for traffic video question answering MDIF:交通视频问答的多模态动态推理框架
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-08 DOI: 10.1007/s10489-025-06980-7
Wenhao Guo, Lingling Zi, Xin Cong

This paper presents a Multimodal Dynamic Inference Framework (MDIF) for video question answering in traffic scenarios. MDIF is different from existing methods that rely on correlation modeling and global features. It combines causal inference with object segmentation. Causal inference reduces spurious correlations and ensures unbiased reasoning. Object segmentation extracts fine-grained information such as traffic signs, vehicle movements, and pedestrian interactions. Together, they improve causal modeling, scene understanding, and event prediction accuracy. MDIF also employs Graph Convolutional Networks (GCNs) to capture spatiotemporal dependencies in complex and dynamic traffic events. We evaluate MDIF on two large-scale datasets, SUTD-TrafficQA and MSVD-QA. The results demonstrate significant progress in prediction and counterfactual tasks, validating the robustness and generalization ability of the MDIF framework. Ablation studies further confirm the role of spatiotemporal modeling, object segmentation, and causal intervention. These components are all essential to robust, interpretable, and unbiased reasoning. Overall, MDIF provides strong advantages in causal modeling and cross-modal inference.

提出了一种用于交通场景下视频问答的多模态动态推理框架(MDIF)。MDIF不同于现有的依赖于相关建模和全局特征的方法。它结合了因果推理和对象分割。因果推理减少了虚假的相关性,确保了无偏推理。对象分割提取细粒度信息,如交通标志、车辆运动和行人互动。它们共同提高了因果建模、场景理解和事件预测的准确性。MDIF还使用图卷积网络(GCNs)来捕获复杂和动态交通事件中的时空依赖关系。我们在SUTD-TrafficQA和MSVD-QA两个大型数据集上对MDIF进行了评估。结果表明,在预测和反事实任务方面取得了显著进展,验证了MDIF框架的鲁棒性和泛化能力。消融研究进一步证实了时空建模、目标分割和因果干预的作用。这些组件对于稳健、可解释和无偏的推理都是必不可少的。总的来说,MDIF在因果建模和跨模态推理方面提供了强大的优势。
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引用次数: 0
A bias extraction and penalty method for robust visual question answering 一种鲁棒性视觉问答的偏差提取与惩罚方法
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-08 DOI: 10.1007/s10489-025-06962-9
Lixia Zhang, Bingqian Huang, Zichao Pang, Yun Liang

Visual Question Answering (VQA) models often answer questions based on the superficial correlations between question-answer pairs rather than actual reasoning. It leads to good performance on in-distributed (ID) datasets and a significant decline on out-of-distributed (OOD) datasets. Existing debiasing methods primarily focus on single-modal branches, with few studies addressing multi-modal bias simultaneously. A bias extraction and penalty (BEP) method was proposed in this paper. Using a generative adversarial network and knowledge distillation strategy, the bias is extracted directly from the VQA model and incorporated into the bias model. Furthermore, margin penalty is introduced to represent the frequency of certain answer types and the difficulty of sample answers as margin information. The size of the margin reflects the degree of bias, and different penalties are assigned to samples with varying degrees of bias. Supervised contrastive learning is employed to retain these penalties, enabling the model to focus more on training biased samples. Additionally, a classifier based on Cross-Entropy(CE) loss was proposed, which has a stronger inference ability on ID datasets, and uses the main classifier and CE loss classifier for joint inference. Experiments on the challenging VQA-CPv2 and VQA v2 datasets show that BEP achieves state-of-the-art results among non-augmentation debiasing methods while maintaining competitive performance on ID datasets.

视觉问答(VQA)模型通常基于问答对之间的表面相关性而不是实际推理来回答问题。它导致在分布式(ID)数据集上的良好性能和在分布式(OOD)数据集上的显著下降。现有的去偏方法主要集中在单模态分支上,同时处理多模态偏的研究很少。提出了一种偏差提取和惩罚(BEP)方法。使用生成对抗网络和知识蒸馏策略,直接从VQA模型中提取偏差并将其纳入偏差模型。此外,还引入了边际罚分来表示某些答案类型的出现频率和样本答案的难度作为边际信息。边际的大小反映了偏差的程度,对不同偏差程度的样本分配不同的惩罚。监督对比学习被用来保留这些惩罚,使模型更专注于训练有偏差的样本。此外,提出了一种基于交叉熵损失的分类器,该分类器对ID数据集具有更强的推理能力,并使用主分类器和交叉熵损失分类器进行联合推理。在具有挑战性的VQA- cpv2和VQA- v2数据集上的实验表明,BEP在非增强去偏方法中取得了最先进的结果,同时在ID数据集上保持了竞争力。
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引用次数: 0
MMI-FM: Multimodal Interaction and Fusion Mechanism for Video Anomaly Detection 视频异常检测的多模态交互与融合机制
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-08 DOI: 10.1007/s10489-025-06975-4
Binghui Wang, Chuanxu Wang, Jiajiong Li, Da Song, Yishuo Liu

In video anomaly detection tasks, multi-modal input can encode video content across different feature spaces, offering richer and more complementary semantic representations than single-modal data. However, most existing multi-modal VAD methods employ independent modeling strategies and fuse features at the decision stage typically through simple operations such as concatenation or gating. To address this limitation, we propose a novel Multimodal Interaction and Fusion Mechanism (MMI-FM) based on RGB features and skeleton features. Specifically, we design the Dual Contrastive Loss Alignment Module (DCL-AM), which aligns features by mining both intra-modal and cross-modal semantic correlations. Furthermore, we introduce a Cross-Modal Bidirectional Knowledge Distillation Module (CM-BKDM) to mitigate potential representational biases in single modality representation learning by performing bidirectional knowledge transfer between modalities. Finally, an Adaptive Multimodal Feature Fusion Module (AMFFM) is proposed, which dynamically fuses RGB regions and skeleton points with strong semantic associations. Extensive experiments conducted on two public VAD datasets, CUHK Avenue and ShanghaiTech, demonstrate that MMI-FM achieves AUC scores of 91.8% and 78.4%, outperforming most state-of-the-art methods and validating the effectiveness of our proposed framework.

在视频异常检测任务中,多模态输入可以跨不同特征空间对视频内容进行编码,提供比单模态数据更丰富、互补性更强的语义表示。然而,大多数现有的多模态VAD方法采用独立的建模策略,并在决策阶段通常通过简单的操作(如串联或门控)融合特征。为了解决这一限制,我们提出了一种基于RGB特征和骨架特征的多模态交互和融合机制(MMI-FM)。具体来说,我们设计了双对比损失对齐模块(DCL-AM),该模块通过挖掘模态内和跨模态语义相关性来对齐特征。此外,我们引入了一个跨模态双向知识蒸馏模块(CM-BKDM),通过在模态之间进行双向知识转移来减轻单模态表示学习中潜在的表征偏差。最后,提出了一种自适应多模态特征融合模块(AMFFM),该模块能够动态融合具有强语义关联的RGB区域和骨架点。在中大大道和上海科技两个公共VAD数据集上进行的大量实验表明,MMI-FM达到了91.8%和78.4%的AUC分数,优于大多数最先进的方法,并验证了我们提出的框架的有效性。
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引用次数: 0
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