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Enhancing token boundary detection in disfluent speech 非流利语音中token边界检测的增强
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2025-12-06 DOI: 10.1016/j.iswa.2025.200614
Manu Srivastava , Marcello Ferro , Vito Pirrelli , Gianpaolo Coro
This paper presents an open-source Automatic Speech Recognition (ASR) pipeline optimised for disfluent Italian read speech, designed to enhance both transcription accuracy and token boundary precision in low-resource settings. The study aims to address the difficulty that conventional ASR systems face in capturing the temporal irregularities of disfluent reading, which are crucial for psycholinguistic and clinical analyses of fluency. Building upon the WhisperX framework, the proposed system replaces the neural Voice Activity Detection module with an energy-based segmentation algorithm designed to preserve prosodic cues such as pauses and hesitations. A dual-alignment strategy integrates two complementary phoneme-level ASR models to correct onset–offset asymmetries, while a bias-compensation post-processing step mitigates systematic timing errors. Evaluation on the READLET (child read speech) and CLIPS (adult read speech) corpora shows consistent improvements over baseline systems, confirming enhanced robustness in boundary detection and transcription under disfluent conditions. The results demonstrate that the proposed architecture provides a general, language-independent framework for accurate alignment and disfluency-aware ASR. The approach can support downstream analyses of reading fluency and speech planning, contributing to both computational linguistics and clinical speech research.
本文提出了一种开源的自动语音识别(ASR)管道,该管道针对不流畅的意大利语读语音进行了优化,旨在提高低资源设置下的转录精度和令牌边界精度。本研究旨在解决传统的ASR系统在捕捉非流利阅读的时间不规则性方面所面临的困难,这对于流利性的心理语言学和临床分析至关重要。在WhisperX框架的基础上,该系统用基于能量的分割算法取代了神经语音活动检测模块,该算法旨在保留停顿和犹豫等韵律线索。双对齐策略集成了两个互补的音素级ASR模型来纠正初始偏移不对称,而偏置补偿后处理步骤则减轻了系统时序误差。对READLET(儿童读语)和CLIPS(成人读语)语料库的评估显示,与基线系统相比,该语料库具有一致性的改进,证实了在非流畅条件下边界检测和转录的鲁棒性增强。结果表明,所提出的体系结构为精确对齐和不流畅感知ASR提供了一个通用的、与语言无关的框架。该方法可以支持阅读流畅性和言语规划的下游分析,为计算语言学和临床言语研究做出贡献。
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引用次数: 0
Interpretable event diagnosis in water distribution networks 配水网络中的可解释事件诊断
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2025-12-18 DOI: 10.1016/j.iswa.2025.200621
André Artelt , Stelios G. Vrachimis , Demetrios G. Eliades , Ulrike Kuhl , Barbara Hammer , Marios M. Polycarpou
The increasing penetration of information and communication technologies in the design, monitoring, and control of water systems enables the use of algorithms for detecting and identifying unanticipated events (such as leakages or water contamination) using sensor measurements. However, data-driven methodologies do not always give accurate results and are often not trusted by operators, who may prefer to use their engineering judgment and experience to deal with such events.
In this work, we propose a framework for interpretable event diagnosis — an approach that assists the operators in associating the results of algorithmic event diagnosis methodologies with their own intuition and experience. This is achieved by providing contrasting (i.e., counterfactual) explanations of the results provided by fault diagnosis algorithms; their aim is to improve the understanding of the algorithm’s inner workings by the operators, thus enabling them to take a more informed decision by combining the results with their personal experiences. Specifically, we propose counterfactual event fingerprints, a representation of the difference between the current event diagnosis and the closest alternative explanation, which can be presented in a graphical way. The proposed methodology is applied and evaluated on a realistic use case using the L-Town benchmark.
信息和通信技术在水系统的设计、监测和控制方面的日益普及,使利用传感器测量来检测和识别意外事件(如泄漏或水污染)的算法成为可能。然而,数据驱动的方法并不总是能给出准确的结果,而且通常不被作业者所信任,作业者可能更愿意使用他们的工程判断和经验来处理此类事件。在这项工作中,我们提出了一个可解释事件诊断的框架-一种帮助操作员将算法事件诊断方法的结果与他们自己的直觉和经验联系起来的方法。这是通过对故障诊断算法提供的结果提供对比(即反事实)解释来实现的;他们的目标是提高操作员对算法内部工作原理的理解,从而使他们能够通过将结果与个人经验相结合来做出更明智的决策。具体来说,我们提出了反事实事件指纹,这是当前事件诊断与最接近的替代解释之间差异的表征,可以以图形方式呈现。建议的方法使用L-Town基准在实际用例中应用和评估。
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引用次数: 0
Optimisation of energy management in IoT devices using LSTM models: Energy consumption prediction with sleep-wake scheduling control 使用LSTM模型优化物联网设备的能量管理:睡眠-觉醒调度控制的能耗预测
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2025-12-24 DOI: 10.1016/j.iswa.2025.200624
Nahideh DerakhshanFard, Asra Rajabi Bavil Olyaei, Fahimeh RashidJafari
The Internet of Things is an enormous network of interrelated devices that makes intelligent interaction and high-level control possible in various environments, such as smart homes, smart cities, and industry, by collecting, processing, and transferring data. The majority of the low-power devices within the network utilize limited sources of energy, such as batteries, and hence energy management is a critical factor in the design and operation of the systems. Current methods, such as reinforcement and evolutionary approaches, have at times been found to provide some enhancements but lacked extensive implementation over broad systems due to computational complexity as well as their inability to adapt to changing environmental settings. The growing number of IoT devices presents challenges in energy management, making it crucial to develop accurate prediction models. This research aims to address this challenge by proposing a novel solution using Long Short-Term Memory (LSTM) networks for energy consumption forecasting. This work suggests an optimal energy usage management model based on Long Short-Term Memory networks. The model collects historical energy usage, activity scheduling, and environmental factors such as temperature and humidity. Following the preprocessing, which includes noise removal and normalisation, it predicts future energy consumption. Scheduling data and the analysis and processing of environmental conditions are done using the short-term memory, while the long-term memory helps the model identify more complex patterns in the energy consumption over time to make more accurate predictions. Based on this prediction, smart policies are made for going to sleep and waking up the devices, so that unnecessary devices are put into sleep mode and only woken up when needed. Adaptive learning algorithms also assist in adjusting to environmental conditions. Results of experiments show that the proposed method can save energy up to 58% and increase device lifetime by 30%, while the prediction of energy consumption has an accuracy of 95%.
物联网是一个由相互关联的设备组成的庞大网络,通过收集、处理和传输数据,可以在智能家居、智能城市和工业等各种环境中实现智能交互和高级控制。网络中的大多数低功耗设备利用有限的能源,如电池,因此能源管理是系统设计和运行的关键因素。目前的方法,如强化和进化方法,有时被发现提供了一些增强,但由于计算复杂性以及它们无法适应不断变化的环境设置,在广泛的系统中缺乏广泛的实施。越来越多的物联网设备给能源管理带来了挑战,因此开发准确的预测模型至关重要。本研究旨在通过提出一种使用长短期记忆(LSTM)网络进行能源消耗预测的新解决方案来解决这一挑战。本研究提出了一种基于长短期记忆网络的最佳能量使用管理模型。该模型收集历史能源使用情况、活动调度以及温度和湿度等环境因素。在预处理之后,包括去噪和归一化,它预测未来的能源消耗。调度数据和环境条件的分析和处理使用短期记忆完成,而长期记忆帮助模型识别随时间变化的能源消耗中更复杂的模式,从而做出更准确的预测。基于这一预测,智能策略被制定为进入睡眠和唤醒设备,使不需要的设备进入睡眠模式,只在需要时唤醒。自适应学习算法也有助于适应环境条件。实验结果表明,该方法节能58%,器件寿命提高30%,能耗预测准确率达95%。
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引用次数: 0
A study on the generalization of DINOv2 features for food recognition tasks: A unified evaluation framework 用于食物识别任务的DINOv2特征泛化研究:一个统一的评价框架
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2026-02-04 DOI: 10.1016/j.iswa.2026.200632
Simone Bianco, Marco Buzzelli, Gianluigi Ciocca, Flavio Piccoli, Raimondo Schettini
Self-supervised learning has recently gained increasing attention in computer vision, enabling the extraction of rich and general-purpose feature representations without requiring large annotated datasets. In this paper we aim to build a unified approach capable of deploying robust and effective analysis systems, replacing the need for multiple task-specific models trained end-to-end. Rather than introducing new architectures or training strategies, our goal is to systematically assess whether a single frozen self-supervised representation can support heterogeneous food-related tasks under realistic operating conditions. To this end, we performed an extensive analysis of DINOv2 features across multiple benchmark datasets and tasks, including food classification, segmentation, aesthetic assessment, and robustness to image distortions. In addition, we explore its capacity for continual learning by applying it to incremental food classification scenarios. Our findings reveal that DINOv2 features excel in many food-related applications. Their shared representations across tasks reduce the need for training separate models, while their strong generalization, high accuracy, and ability to handle complex multi-task scenarios make them a strong candidate for a unified food recognition approach. Specifically, DINOv2 features match or surpass state-of-the-art supervised methods in several food recognition tasks, while offering a simpler and more unified deployment strategy. Furthermore, they outperform end-to-end models in cross-dataset scenarios by up to +19.4% Top-1 accuracy and exhibits strong resilience to common image distortions by up to +48.0% robustness in Top-1 accuracy percentual difference, ensuring reliable performance in real-world applications. On average across all considered tasks, the DINOv2-based unified evaluation outperforms the state of the art by approximately 2.8% and 5.4%, depending on the chosen model size, while using only 6.2% and 23.9% of the total number of model parameters, respectively.
自监督学习最近在计算机视觉领域得到了越来越多的关注,它可以在不需要大型注释数据集的情况下提取丰富和通用的特征表示。在本文中,我们的目标是构建一种统一的方法,能够部署健壮和有效的分析系统,取代对端到端训练的多个特定任务模型的需求。我们的目标不是引入新的架构或训练策略,而是系统地评估单个冷冻自监督表示是否可以在实际操作条件下支持与食物相关的异构任务。为此,我们在多个基准数据集和任务中对DINOv2特征进行了广泛的分析,包括食品分类、分割、美学评估和对图像失真的鲁棒性。此外,我们通过将其应用于增量食物分类场景来探索其持续学习的能力。我们的研究结果表明,DINOv2在许多与食品相关的应用中表现优异。它们跨任务的共享表示减少了训练单独模型的需要,而它们的强泛化、高精度和处理复杂多任务场景的能力使它们成为统一食品识别方法的有力候选。具体来说,DINOv2的特点是在几个食物识别任务中匹配或超过最先进的监督方法,同时提供更简单、更统一的部署策略。此外,它们在跨数据集场景中的表现优于端到端模型,最高可达19.4%的Top-1精度,并且在Top-1精度百分比差异中表现出对常见图像失真的强大弹性,最高可达48.0%的鲁棒性,确保了在实际应用中的可靠性能。在所有考虑的任务中,平均而言,基于dinov2的统一评估比目前的技术水平高出大约2.8%和5.4%,这取决于所选择的模型大小,而分别只使用了6.2%和23.9%的模型参数总数。
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引用次数: 0
An efficient lightweight multi-scale CNN framework with CBAM and SPP for bearing fault diagnosis 基于CBAM和SPP的轴承故障诊断的高效轻量级多尺度CNN框架
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2026-01-08 DOI: 10.1016/j.iswa.2026.200628
Thanh Tung Luu , Duy An Huynh
Rolling bearing degradation produces vibration signatures that vary across operating conditions, posing challenges for reliable fault diagnosis. This study proposes an adaptive and lightweight diagnostic framework combining a Depthwise Separable Multi-Scale CNN (DSMSCNN) with Convolutional Block Attention Module (CBAM) and Spatial Pyramid Pooling (SPP) to extract fault-frequency invariant features across different mechanical domains. Wavelet-based time–frequency maps are utilized to suppress noise and preserve multi-resolution spectral characteristics. The multi-scale separable convolutions adaptively capture discriminative frequency patterns, while CBAM highlights informative spectral regions and SPP enhances scale robustness without fixed input sizes. Experiments on the CWRU and HUST bearing datasets demonstrate over 99 % accuracy with significantly fewer parameters than conventional CNNs. The results confirm that the proposed DSMSCNN-CBAM-SPP framework effectively captures invariant fault-frequency features, offering a compact and adaptive solution for intelligent bearing fault diagnosis and real-time predictive maintenance in a noisy environment.
滚动轴承退化会产生不同运行条件下的振动特征,这对可靠的故障诊断提出了挑战。本文提出了一种基于深度可分离多尺度CNN (DSMSCNN)、卷积块注意模块(CBAM)和空间金字塔池(SPP)的自适应轻量级诊断框架,用于提取不同机械领域的故障频率不变特征。基于小波的时频图用于抑制噪声和保持多分辨率频谱特征。多尺度可分离卷积自适应捕获判别频率模式,而CBAM突出信息频谱区域,SPP增强了不固定输入大小的尺度鲁棒性。在CWRU和HUST轴承数据集上的实验表明,与传统cnn相比,该方法的准确率超过99%,参数显著减少。结果表明,所提出的DSMSCNN-CBAM-SPP框架能够有效捕获不变的故障频率特征,为噪声环境下的轴承智能故障诊断和实时预测性维护提供了一种紧凑、自适应的解决方案。
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引用次数: 0
Attention-enhanced reinforcement learning for dynamic portfolio optimization 动态投资组合优化的注意力增强强化学习
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2026-01-15 DOI: 10.1016/j.iswa.2025.200622
Pei Xue, Yuanchun Ye
We propose a deep reinforcement learning framework for dynamic portfolio optimization that combines a Dirichlet policy with cross-sectional attention mechanisms. The Dirichlet distribution enforces feasibility by construction, accommodates tradability masks, and provides a coherent geometry for exploration. Our architecture integrates per-asset temporal encoders with a global attention layer, allowing the policy to adaptively weight sectoral co-movements, factor spillovers, and other cross-asset dependencies. We evaluate the framework on a comprehensive S&P 500 panel from 2000 to 2025 using purged walk-forward backtesting to prevent look-ahead bias. Empirical results show that attention-enhanced Dirichlet policies deliver higher terminal wealth, Sharpe and Sortino ratios than equal-weight and reinforcement learning baselines, while maintaining realistic turnover and drawdown profiles. Our findings highlight that principled action parameterization and attention-based representation learning materially improve both the stability and interpretability of reinforcement learning methods for portfolio allocation.
我们提出了一个用于动态投资组合优化的深度强化学习框架,该框架将Dirichlet策略与横截面注意机制相结合。狄利克雷分布通过构造加强了可行性,容纳了可交易掩模,并为勘探提供了连贯的几何形状。我们的架构将每个资产的时间编码器与全局关注层集成在一起,允许策略自适应地权衡部门协同运动、因素溢出和其他跨资产依赖关系。我们在2000年至2025年的综合标准普尔500指数面板上评估了框架,使用清除的向前回溯测试来防止前瞻性偏见。实证结果表明,与等权重和强化学习基线相比,注意力增强的狄利克雷政策提供了更高的终端财富、夏普和索蒂诺比率,同时保持了现实的周转和收缩概况。我们的研究结果强调,有原则的动作参数化和基于注意的表示学习极大地提高了强化学习方法在投资组合分配中的稳定性和可解释性。
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引用次数: 0
Generative AI for autonomous data analytics 自主数据分析的生成式人工智能
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2026-01-02 DOI: 10.1016/j.iswa.2026.200626
Mattheos Fikardos , Katerina Lepenioti , Alexandros Bousdekis , Dimitris Apostolou , Gregoris Mentzas
Recent advancements in Large Language Models (LLMs) and Generative Artificial Intelligence (GenAI) have revolutionised software engineering (SE), augmenting practitioners across the SE lifecycle. In this paper, we focus on the application of GenAI within data analytics—considered a subdomain of SE—to address the growing need for reliable, user-friendly tools that bridge the gap between human expertise and automated analytical processes. In our work, we transform a conventional API-based analytics platform into a set of tools that can be used by AI agents and formulate a process to facilitate the communication between the data analyst, the agents and the platform. The result is a chat-based interface that allows analysts to query and execute analytical workflows using natural language, thereby reducing cognitive overhead and technical barriers. To validate our approach, we instantiated the proposed framework with open-source models and achieved a mean overall score increase of 7.2 % compared to other baselines. Complementary user-study data demonstrate that the chat-based analytics interface yielded superior task efficiency and higher user preference scores compared to the traditional form-based baseline.
大型语言模型(llm)和生成式人工智能(GenAI)的最新进展已经彻底改变了软件工程(SE),增加了整个SE生命周期的实践者。在本文中,我们关注GenAI在数据分析中的应用(被认为是se的子领域),以满足对可靠的、用户友好的工具日益增长的需求,这些工具可以弥合人类专业知识和自动化分析过程之间的差距。在我们的工作中,我们将传统的基于api的分析平台转化为一组AI代理可以使用的工具,并制定了一个流程来促进数据分析师、代理和平台之间的沟通。结果是一个基于聊天的界面,它允许分析人员使用自然语言查询和执行分析工作流,从而减少认知开销和技术障碍。为了验证我们的方法,我们用开源模型实例化了提出的框架,与其他基线相比,平均总分增加了7.2%。补充的用户研究数据表明,与传统的基于表单的基线相比,基于聊天的分析界面产生了卓越的任务效率和更高的用户偏好得分。
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引用次数: 0
A GCN and Graph Self-Attention Contemporary Network with Temporal Depthwise Convolutions for Gait Recognition 基于时序深度卷积的GCN和图自关注当代网络步态识别
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2025-12-31 DOI: 10.1016/j.iswa.2025.200625
Md. Khaliluzzaman , Kaushik Deb , Pranab Kumar Dhar , Tetsuya Shimamura
Skeleton-based gait recognition has significantly improved due to the advent of graph convolutional networks (GCNs). Nevertheless, the classical ST-GCN has a key drawback: limited receptive fields fail to learn the global correlations of joints, restricting its ability to extract global dependencies effectively. To address this, we present the GSCTN method, a GCN and self-attention contemporary network with temporal convolution. This method combines GCN with a self-attention mechanism using a learnable weighted fusion. By combining local joint details from GCN with the larger context from self-attention, GSCTN creates a strong representation of skeleton movements. Our approach uses decoupled self-attention (DSA) techniques that fragment the tightly coupled (TiC) SA module into two learnable components, unary and pairwise SA, to model joint relationships separately. The unary SA shows an extensive relationship between the single key joint and all additional query joints. The paired SA captures the local gait features from each pair of body joints. We also present a Depthwise Multi-scale Temporal Convolutional Network (DMS-TCN) that smoothly captures the temporal nature of joint movements. DMS-TCN efficiently handles both short-term and long-term motion patterns. To boost the model’s ability to converge spatial and temporal joints dynamically, we applied Global Aware Attention (GAA) to the GSCTN module. We tested our method on the OUMVLP-Pose, CASIA-B, and GREW datasets. The suggested method exhibits remarkable accuracy on widely used CASIA-B datasets, with 97.9% for normal walking, 94.8% for carrying a bag, and 91.91% for clothing conditions. Meanwhile, the OUMVLP-Pose and GREW datasets exhibit a rank-1 accuracy of 93.5% and 75.7%, respectively. Our experimental results demonstrate that the proposed model is a holistic approach for gait recognition by utilizing GCN, DSA, and GAA with DMS-TCN to capture both inter-domain and spatial aspects of human locomotion.
由于图卷积网络(GCNs)的出现,基于骨骼的步态识别得到了显著改善。然而,经典的ST-GCN有一个关键的缺点:有限的接受域无法学习关节的全局相关性,限制了它有效提取全局依赖关系的能力。为了解决这个问题,我们提出了GSCTN方法,一种具有时间卷积的GCN和自关注当代网络。该方法使用可学习的加权融合将GCN与自关注机制相结合。通过将来自GCN的局部关节细节与来自自我关注的更大上下文相结合,GSCTN创建了骨骼运动的强大表示。我们的方法使用解耦自注意(DSA)技术,将紧耦合(TiC)自注意模块分割为两个可学习的组件,一元自注意和成对自注意,分别对联合关系建模。一元SA显示了单键连接和所有附加查询连接之间的广泛关系。配对的SA捕获每对身体关节的局部步态特征。我们还提出了一种深度多尺度时间卷积网络(DMS-TCN),可以平滑地捕获关节运动的时间性质。DMS-TCN有效地处理短期和长期的运动模式。为了提高模型动态收敛空间和时间节点的能力,我们将全局感知注意(GAA)应用于GSCTN模块。我们在OUMVLP-Pose、CASIA-B和grow数据集上测试了我们的方法。该方法在广泛使用的CASIA-B数据集上显示出显著的准确率,正常行走的准确率为97.9%,携带包的准确率为94.8%,穿着的准确率为91.91%。同时,OUMVLP-Pose和grow数据集的rank-1精度分别为93.5%和75.7%。我们的实验结果表明,该模型是一种全面的步态识别方法,利用GCN、DSA和GAA与DMS-TCN来捕获人类运动的域间和空间方面。
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引用次数: 0
Exoformer: An improved transformer architecture for long-term time series forecasting based on multi-source data Exoformer:基于多源数据的长期时间序列预测的改进变压器架构
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2026-02-16 DOI: 10.1016/j.iswa.2026.200639
Ngo Van Son , Vo Viet Minh Nhat
Transformer models have achieved significant success in time series forecasting, but relying solely on endogenous information is insufficient to achieve high accuracy. To enhance predictive performance, some systems have used information from multiple sources, providing additional insights to improve forecasting accuracy. Integrating additional information from external sources involves adding factors not present in the primary source, which affects forecasting results. These additional factors, called exogenous variables, can enhance the forecasting ability. We propose ExoFormer, a Transformer-based architecture that incorporates exogenous information for long-term time series forecasting. By leveraging relative cross-attention and a decoder-only design, ExoFormer efficiently models dependencies between endogenous and exogenous variables. Experiments on seven benchmark datasets demonstrate that ExoFormer consistently outperforms state-of-the-art models in both accuracy and computational efficiency.
变压器模型在时间序列预测中取得了显著的成功,但仅依靠内生信息不足以达到较高的预测精度。为了提高预测性能,一些系统使用了来自多个来源的信息,提供了额外的见解来提高预测的准确性。集成来自外部来源的附加信息涉及添加主要来源中不存在的因素,这些因素会影响预测结果。这些额外的因素被称为外生变量,可以增强预测能力。我们提出了ExoFormer,这是一种基于变压器的架构,它包含了用于长期时间序列预测的外生信息。通过利用相对交叉注意和仅解码器的设计,ExoFormer有效地模拟了内源性和外源性变量之间的依赖关系。在七个基准数据集上的实验表明,ExoFormer在准确性和计算效率方面始终优于最先进的模型。
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引用次数: 0
Personalized two-stage comparison-based framework for low-to-mid-intensity facial expression recognition in real-world scenarios 现实场景中低强度面部表情识别的个性化两阶段比较框架
IF 4.3 Pub Date : 2026-03-01 Epub Date: 2026-01-08 DOI: 10.1016/j.iswa.2026.200627
Junyao Zhang , Kei Shimonishi , Kazuaki Kondo , Yuichi Nakamura
We evaluate a personalized, two-stage comparison-based FER framework on two datasets of low-to-mid-intensity, near-neutral expressions. The framework consistently outperforms FaceReader and Py-Feat. On the natural-transition younger-adult dataset (Dataset A, n = 9), mean accuracy is 90.22% ± 3.53%, with within-subject median gains of +16.46 percentage points (pp) over FaceReader (95% CI [+11.33, +33.90], p = 0.00195, r = 1.00) and +8.17 pp over Py-Feat (95% CI [+3.39, +21.58], p = 0.00195, r = 1.00). On the older adults dataset (Dataset B, n = 78), mean accuracy is 75.58% ± 9.04%, exceeding FaceReader by +15.47 pp (95% CI [+13.44, +17.21], p = 2.77 × 10–14, r = 0.980) and Py-Feat by +17.67 pp (95% CI [+15.13, +19.34], p = 3.02 × 10–14, r = 0.985). Component analyses are above chance on both datasets (B-stage medians 92.90% and 99.51%), and polarity-specific asymmetries emerge in the C-stage (A: positive > negative, Δ = +4.23 pp, two-sided p = 0.0273; B: negative > positive, Δ = -7.72 pp, p = 0.00442). On a subset of Dataset A emphasizing subtle transitions, the system maintains [78.61%, 85.38%] accuracy where human annotation accuracy ranges [50.00%, 71.47%]. Grad-CAM highlights eyebrows, forehead, and mouth regions consistent with expressive cues. Collectively, these findings demonstrate statistically significant and practically meaningful advantages for low-to-mid-intensity expression recognition and intensity ranking.
我们在两个低到中等强度、接近中性表达的数据集上评估了一个个性化的、基于两阶段比较的FER框架。该框架始终优于FaceReader和Py-Feat。在自然过渡的年轻人-成年人数据集(数据集A, n = 9)上,平均准确率为90.22%±3.53%,比FaceReader (95% CI [+11.33, +33.90], p = 0.00195, r = 1.00)和Py-Feat (95% CI [+3.39, +21.58], p = 0.00195, r = 1.00)的受试者内中位增益+16.46个百分点(pp)。在老年人数据集(数据集B, n = 78)上,平均准确率为75.58%±9.04%,超过FaceReader +15.47 pp (95% CI [+13.44, +17.21], p = 2.77 × 10-14, r = 0.980)和Py-Feat +17.67 pp (95% CI [+15.13, +19.34], p = 3.02 × 10-14, r = 0.985)。成分分析在两个数据集上都高于偶然(B期中位数为92.90%和99.51%),并且极性特异性不对称出现在c期(A:阳性>;阴性,Δ = +4.23 pp,双面p = 0.0273; B:阴性>;阳性,Δ = -7.72 pp, p = 0.00442)。在强调微妙过渡的Dataset a子集上,系统保持了[78.61%,85.38%]的准确率,而人类标注的准确率范围为[50.00%,71.47%]。Grad-CAM突出眉毛、前额和嘴部与表达线索一致。综上所述,这些发现显示了在低到中强度表达识别和强度排序方面具有统计学意义和实际意义的优势。
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引用次数: 0
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Intelligent Systems with Applications
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