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Two-Stage Microseismic P-Wave Arrival Picking via STA/LTA-Guided Lightweight U-Net. STA/ lta制导的轻型U-Net两级微地震p波到达拾取。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-07 DOI: 10.3390/s26051693
Jiancheng Jin, Gang Wang, Yuanhang Qiu, Siyuan Gong, Bo Ren

Accurate picking of microseismic P-wave arrival times is essential for the localization and monitoring of mining-induced seismic events. Conventional Short-Term Average/Long-Term Average (STA/LTA) detectors, while computationally efficient, are highly susceptible to noise interference. Conversely, deep learning approaches exhibit superior noise robustness but often involve substantial computational redundancy and compromised real-time performance. To address these limitations, we propose a novel two-stage picking framework that integrates STA/LTA with a lightweight U-Net, enabling rapid preliminary detection followed by fine-grained refinement. In the first stage, STA/LTA rapidly scans continuous waveforms to identify candidate windows potentially containing P-wave arrivals. In the second stage, a lightweight U-Net performs sample-level regression within each candidate window to refine arrival-time estimates with high precision. This coarse-to-fine paradigm effectively balances computational efficiency and picking accuracy. Experimental validation on 500 Hz microseismic data acquired from a coal mine in Gansu Province demonstrates that the proposed method achieves a hit rate of 63.21% within a tolerance window of ±0.01 s. This represents performance improvements of 25.42% and 40.47% over convolutional neural network (CNN) and STA/LTA methods, respectively, while reducing the mean absolute error to 0.0130 s. Furthermore, the model exhibits consistent performance on independent test sets, confirming its generalization capability and noise robustness. By combining the computational efficiency of STA/LTA with the representational power of deep learning, the proposed approach demonstrates significant potential for real-time industrial deployment.

准确选取微地震纵波到达时间对于采矿诱发地震事件的定位和监测至关重要。传统的短期平均/长期平均(STA/LTA)检测器虽然计算效率高,但极易受到噪声干扰。相反,深度学习方法表现出优越的噪声鲁棒性,但往往涉及大量的计算冗余和降低实时性能。为了解决这些限制,我们提出了一种新的两阶段采摘框架,将STA/LTA与轻量级U-Net集成在一起,实现快速的初步检测,然后进行细粒度细化。在第一阶段,STA/LTA快速扫描连续波形,以识别可能包含p波到达的候选窗口。在第二阶段,一个轻量级的U-Net在每个候选窗口内执行样本级回归,以高精度地改进到达时间估计。这种从粗到精的模式有效地平衡了计算效率和挑选精度。对甘肃某煤矿500 Hz微地震数据的实验验证表明,该方法在±0.01 s的容差窗口内,准确率达到63.21%。与卷积神经网络(CNN)和STA/LTA方法相比,性能分别提高了25.42%和40.47%,同时将平均绝对误差降低到0.0130秒。此外,该模型在独立测试集上表现出一致的性能,证实了其泛化能力和噪声鲁棒性。通过将STA/LTA的计算效率与深度学习的表征能力相结合,所提出的方法显示出实时工业部署的巨大潜力。
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引用次数: 0
Assessing Time-Frequency Analysis Methods for Non-Stationary EMG Bursts: Application to an Animal Model of Parkinson's Disease. 评估非平稳肌电爆发的时频分析方法:在帕金森病动物模型中的应用。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-07 DOI: 10.3390/s26051688
Fernando Daniel Farfán, Ana Lía Albarracín, Leonardo Ariel Cano, Eduardo Fernández

Time-frequency (TF) characterization of electromyographic (EMG) bursts is essential for accurately assessing muscle function, particularly when the signals exhibit a high degree of nonstationarity. In this exploratory study, we investigated the temporal dynamics of the spectral components associated with short-latency EMG bursts using several TF analysis techniques. Specifically, we compared the performance and interpretability of spectrograms obtained via the short-time Fourier transform (STFT), the continuous wavelet transform (CWT), and noise-assisted multivariate empirical mode decomposition (NA-MEMD), applied to EMG signals recorded from the biceps femoris muscle of freely moving rats in an animal model of Parkinson's disease, acquired using chronically implanted bipolar electrodes during treadmill locomotion. For each method, we evaluated its effectiveness in capturing transient variations in frequency content, the stability of extracted features across bursts, and the extent to which these features reflect physiologically meaningful aspects of muscle activation. The results show that TF approaches reveal complementary information about burst structure; NA-MEMD provides greater adaptability to nonlinear and nonstationary components, whereas STFT- and CWT-based representations offer more controlled and comparable analyses. Overall, these findings highlight the value of TF analysis as a methodological tool for evaluating muscle function and provide a solid foundation for selecting analytical strategies in studies where EMG bursts exhibit complex and highly variable spectral profiles.

肌电图(EMG)爆发的时频(TF)表征对于准确评估肌肉功能至关重要,特别是当信号表现出高度的非平稳性时。在这项探索性研究中,我们使用几种TF分析技术研究了与短潜伏期肌电爆发相关的频谱成分的时间动态。具体来说,我们比较了短时傅立叶变换(STFT)、连续小波变换(CWT)和噪声辅助多变量经验模态分解(NA-MEMD)获得的频谱图的性能和可解释性,这些频谱图应用于帕金森病动物模型中自由运动大鼠的股二头肌肌电图信号,这些信号是在跑步机运动期间长期植入双极电极获得的。对于每种方法,我们评估了其捕获频率内容瞬态变化的有效性,提取的特征在爆发中的稳定性,以及这些特征反映肌肉激活的生理意义方面的程度。结果表明,TF方法揭示了爆发结构的互补信息;NA-MEMD提供了对非线性和非平稳元件更大的适应性,而基于STFT和cwt的表示提供了更多的控制和可比较的分析。总的来说,这些发现突出了TF分析作为评估肌肉功能的方法学工具的价值,并为在肌电爆发表现出复杂和高度可变的频谱剖面的研究中选择分析策略提供了坚实的基础。
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引用次数: 0
Robust Localization and Tracking of VRUs with Radar and Ultra-Wideband Sensors for Traffic Safety. 基于雷达和超宽带传感器的vru鲁棒定位与跟踪。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-07 DOI: 10.3390/s26051690
Mouhamed Aghiad Raslan, Martin Schmidhammer, Ibrahim Rashdan, Fabian de Ponte Müller, Tobias Uhlich, Andreas Becker

The increasing risk to Vulnerable Road Users (VRUs) at urban intersections necessitates advanced safety mechanisms capable of operating effectively under diverse conditions, including adverse weather like heavy rain. While optical sensors such as cameras and LiDAR often degrade in poor visibility, Radio Frequency (RF)-based systems offer resilient, all-weather tracking. This paper presents a novel approach to enhancing VRU protection by fusing two RF modalities: radar sensors and Ultra-Wideband (UWB) technology, a strong candidate for Joint Communication and Sensing (JCS). The research, conducted as part of the VIDETEC-2 project, addresses the limitations of existing vehicle-based and infrastructure-based systems, particularly in scenarios involving occlusions and blind spots. By leveraging radar's environmental robustness alongside UWB's precise, cost-effective short-range communication and localization, the proposed system delivers the framework for continuous vehicle and VRU tracking. The fusion of these sensor modalities, managed through a hybrid Kalman filter approach integrating an Unscented Kalman Filter (UKF) and an Extended Kalman Filter (EKF), allows reliable VRU tracking even in challenging urban scenarios. The experimental results demonstrate a reduction in tracking uncertainty and highlight the system's potential to serve as a more accurate and responsive safety mechanism for VRUs at intersections. This work contributes to the development of intelligent road infrastructures, laying the foundation for future advancements in urban traffic safety.

城市十字路口弱势道路使用者(vru)面临的风险日益增加,因此需要能够在各种条件下(包括大雨等恶劣天气)有效运行的先进安全机制。虽然光学传感器(如摄像头和激光雷达)在能见度低的情况下经常会退化,但基于射频(RF)的系统提供弹性的全天候跟踪。本文提出了一种通过融合两种射频模式来增强VRU保护的新方法:雷达传感器和超宽带(UWB)技术,这是联合通信和传感(JCS)的有力候选。作为VIDETEC-2项目的一部分,该研究解决了现有基于车辆和基础设施的系统的局限性,特别是在涉及闭塞和盲点的情况下。通过利用雷达的环境鲁棒性以及超宽带精确、经济高效的短程通信和定位,该系统为车辆和VRU的连续跟踪提供了框架。这些传感器模式的融合,通过混合卡尔曼滤波方法进行管理,该方法集成了Unscented卡尔曼滤波器(UKF)和扩展卡尔曼滤波器(EKF),即使在具有挑战性的城市场景中也可以实现可靠的VRU跟踪。实验结果表明,该系统减少了跟踪的不确定性,并强调了该系统在十字路口为vru提供更准确和响应更快的安全机制的潜力。这项工作有助于智能道路基础设施的发展,为未来城市交通安全的进步奠定基础。
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引用次数: 0
Automatic Modulation Recognition for Radio Mixed Proximity Sensor Signals Based on a Time-Frequency Image Enhancement Network. 基于时频图像增强网络的无线电混合接近传感器信号自动调制识别。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-06 DOI: 10.3390/s26051677
Jinyu Zhang, Xiaopeng Yan, Xinhong Hao, Tai An, Erwa Dong, Jian Dai

The automatic modulation recognition (AMR) of low probability intercept (LPI) signals has received a considerable amount of interest from many researchers who have done much work on electronic reconnaissance. This recognition technology aims to design a classifier that enables the identification of signals with different modulation types. Based on deep learning models such as a convolutional neural network (CNN), the time-frequency images (TFIs) of the signal can be input to further extract features for classification. To improve recognition accuracy, especially under low signal-to-noise ratios (SNRs), we propose an AMR method for radio frequency proximity sensor signals based on a TFI enhancement network. The TFIs are denoised based on a per-pixel kernel prediction network (KPN), which can improve the quality of TFIs and achieves comparable denoising performance to traditional TFI reconstruction methods (e.g., sparse representation-based methods and low-rank approximation methods), while requiring significantly less computational overhead. The denoised TFIs, with enhanced signal quality and reduced noise, are then fed into the RetinalNet-based classifier as high-quality input features. This enhancement is crucial for the subsequent recognition stage, as it significantly improves the modulation recognition accuracy, particularly under challenging low SNR conditions. Simulation results show that the proposed method can accurately identify the modulation types of different radio frequency proximity sensors that are aliased in the time-frequency domain under low SNRs, and the average recognition accuracy rate of the signal remains above 97% when the signal-to-noise ratio is above -10 dB.

低概率截获(LPI)信号的自动调制识别(AMR)受到了许多从事电子侦察工作的研究人员的广泛关注。该识别技术旨在设计一种能够识别不同调制类型信号的分类器。基于卷积神经网络(CNN)等深度学习模型,可以输入信号的时频图像(tfi),进一步提取特征进行分类。为了提高识别精度,特别是在低信噪比(SNRs)下,我们提出了一种基于TFI增强网络的射频接近传感器信号的AMR方法。基于逐像素核预测网络(KPN)对TFI进行去噪,可以提高TFI的质量,并达到与传统的TFI重建方法(如基于稀疏表示的方法和低秩近似方法)相当的去噪性能,同时所需的计算开销明显减少。降噪后的tfi具有增强的信号质量和降低的噪声,然后作为高质量的输入特征输入到基于retinalnet的分类器中。这种增强对随后的识别阶段至关重要,因为它显着提高了调制识别的准确性,特别是在具有挑战性的低信噪比条件下。仿真结果表明,该方法能准确识别低信噪比下不同射频接近传感器的时频混联调制类型,当信噪比在-10 dB以上时,信号的平均识别准确率保持在97%以上。
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引用次数: 0
Material Identification of Scanned Objects Based on the Classification of the Laser Reflection Intensity Profile. 基于激光反射强度分布分类的扫描物体材料识别。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-06 DOI: 10.3390/s26051666
Marcin Słomiany, Jacek Dybała, Grzegorz Gawdzik, Mateusz Maciaś, Arkadiusz Orłowski

This paper presents a method for material classification of objects detected by a laser scanner (LiDAR) used in autonomous mobile robot navigation. The proposed approach operates on a single-frame LiDAR scan composed of single-beam echoes and addresses materials with different reflective properties, including transparent glass surfaces. Material classification is performed by comparing measured reflection intensity profiles, defined as functions of distance and beam incidence angle, with reference profiles constructed for selected material classes. In addition to normalized reflection intensity, the gradient of the intensity profile is used to support discrimination in regions where material-dependent characteristics overlap. Experimental results obtained in indoor environments containing glass surfaces demonstrate that the proposed method enables reliable material type classification without multi-scan data accumulation or multi-sensor fusion.

提出了一种用于自主移动机器人导航的激光扫描器(LiDAR)探测物体的材料分类方法。所提出的方法适用于由单波束回波组成的单帧激光雷达扫描,并针对具有不同反射特性的材料,包括透明玻璃表面。材料分类是通过比较测量的反射强度曲线(定义为距离和光束入射角的函数)与为选定的材料类别构建的参考曲线来进行的。除了归一化反射强度外,强度剖面的梯度还用于支持在材料依赖特征重叠的区域进行区分。在含玻璃表面的室内环境中获得的实验结果表明,该方法可以实现可靠的材料类型分类,而无需多扫描数据积累或多传感器融合。
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引用次数: 0
Criterion Validity and Inter-Method Reliability of a Smartphone Sensor-Based Application for Lower-Limb Range of Motion: In-Person vs. Tele-Assessment. 基于智能手机传感器的下肢运动范围应用的标准效度和方法间可靠性:面对面与远程评估。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-06 DOI: 10.3390/s26051661
Rehab Aljuhni, Zainab Aldarwish, Shroug Almutairi

The increasing use of telerehabilitation has intensified the need for validated smartphone sensor-based tools capable of accurately capturing joint range of motion (ROM). This study examined the criterion validity of the PhysioMaster application compared with a universal goniometer during in-person assessments and evaluated the inter-method reliability between in-person and online PhysioMaster measurements. Thirty healthy young adults underwent standardized hip, knee, and ankle ROM testing using both approaches. The criterion validity was limited for most joints, with only ankle plantarflexion demonstrating the highest validity and dorsiflexion showing a moderate association; in contrast, hip and knee ROM exhibited poor agreement with goniometric values. Despite limited absolute agreement, PhysioMaster demonstrated moderate to good inter-method reliability for hip and knee ROM, indicating consistency across assessment modes. These findings suggest that while PhysioMaster may not serve as a direct substitute for in-person goniometry, it shows potential as a consistent tool for tracking ROM changes remotely, particularly for hip and knee movements. The application may support remote musculoskeletal monitoring within telerehabilitation contexts where repeated, standardized assessments are required.

随着远程康复技术的日益普及,人们对基于智能手机传感器的工具的需求日益增加,这些工具能够准确捕捉关节活动范围(ROM)。本研究在现场评估中比较了PhysioMaster应用程序与通用角计的标准有效性,并评估了现场和在线PhysioMaster测量之间的方法间可靠性。30名健康的年轻人采用两种方法进行了标准化的髋关节、膝关节和踝关节ROM测试。大多数关节的标准效度有限,只有踝关节跖屈显示最高效度,背屈显示中度关联;相比之下,髋关节和膝关节的ROM与角度值的一致性较差。尽管有有限的绝对一致性,但PhysioMaster显示髋关节和膝关节ROM的方法间可靠性中等至良好,表明评估模式的一致性。这些研究结果表明,虽然PhysioMaster可能不能直接替代人体角度测量,但它显示了作为远程跟踪ROM变化的一致工具的潜力,特别是对于髋关节和膝关节的运动。该应用程序可以在需要重复、标准化评估的远程康复环境中支持远程肌肉骨骼监测。
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引用次数: 0
Traceability and Anti-Counterfeiting in Agri-Food Supply Chains: A Review of RFID, IoT, Blockchain, and AI Technologies. 农业食品供应链的可追溯性与防伪:RFID、物联网、区块链和人工智能技术综述
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-06 DOI: 10.3390/s26051685
Mohamed Riad Sebti, Ultan McCarthy, Anastasia Ktenioudaki, Mariateresa Russo, Massimo Merenda

By 2050, the global population is expected to reach approximately 10 billion, leading to a projected 50% increase in food demand relative to 2013 levels. If not adequately anticipated, this growing demand will place significant strain on agri-food systems worldwide, with disproportionate impacts on low- and middle-income countries. Moreover, current projections may underestimate the accelerating effects of climate change, political instability, and civil unrest, which continue to disrupt food production and distribution systems. In this context, technological advancements offer a promising pathway to enhance efficiency, improve transparency, and mitigate risks related to food safety, adulteration, and counterfeiting. Emerging innovations can decouple food production from environmental degradation while strengthening monitoring, verification, and accountability across supply chains. This review examines state-of-the-art technologies developed to support traceability and anti-counterfeiting in agri-food supply chains, considering their application across the full spectrum of stakeholders. To provide a system-level perspective, the review adopts a five-layer socio-technical traceability and anti-counterfeiting framework, comprising identity, sensing, intelligence, integrity, and interaction layers, which is used to map enabling technologies and reinterpret the evolution of traceability systems (TS 1.0-TS 4.0) as a progression of functional capabilities rather than isolated technological upgrades. Using this framework, the review analyzes the advantages and limitations of current solutions and clarifies how traceability and anti-counterfeiting functions emerge through technology integration. It further identifies gaps that hinder large-scale and equitable adoption. Finally, future research directions are outlined to address current technical, economic, and governance challenges and to guide the development of more resilient, trustworthy, and sustainable agri-food traceability systems.

到2050年,全球人口预计将达到约100亿,导致粮食需求预计将比2013年的水平增加50%。如果不能充分预测,这种不断增长的需求将给全球农业粮食系统带来巨大压力,对低收入和中等收入国家造成不成比例的影响。此外,目前的预测可能低估了气候变化、政治不稳定和内乱的加速影响,这些因素继续扰乱粮食生产和分配系统。在这种情况下,技术进步为提高效率、提高透明度和减轻与食品安全、掺假和假冒有关的风险提供了一条有希望的途径。新兴创新可以将粮食生产与环境退化脱钩,同时加强整个供应链的监测、核查和问责制。本文审查了为支持农业食品供应链中的可追溯性和防伪而开发的最先进技术,并考虑了它们在所有利益相关者中的应用。为了提供系统级的视角,该综述采用了一个五层社会技术可追溯性和防伪框架,包括身份层、感知层、智能层、完整性层和交互层,用于绘制使能技术,并将可追溯性系统(TS 1.0-TS 4.0)的演变重新解释为功能能力的进步,而不是孤立的技术升级。利用这一框架,本文分析了当前解决方案的优势和局限性,并阐明了可追溯性和防伪功能是如何通过技术集成出现的。报告还指出了阻碍大规模和公平采用的差距。最后,概述了未来的研究方向,以解决当前的技术,经济和治理挑战,并指导更具弹性,可信赖和可持续的农业食品可追溯系统的发展。
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引用次数: 0
A Single-Cell Optically Pumped Intrinsic Gradiometer. 单细胞光泵浦本征梯度计。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-06 DOI: 10.3390/s26051678
Nicholaus Zilinski, Ash M Parameswaran, Bonnie L Gray, Teresa Cheung

Optically pumped magnetometers (OPMs) provide a non-cryogenic alternative to superconducting quantum interference devices (SQUIDs) for detecting weak biomagnetic fields. We report the design, construction, and characterization of a single-cell intrinsic OPM gradiometer. The gradiometer employs a rubidium-87 vapor cell in an orthogonal pump and probe beam configuration. The pump beam was split to illuminate two parallel sensing regions of the cell, separated by a baseline of 3 cm, with opposing circular polarization. A linearly polarized probe beam propagated through both regions and was captured by a balanced polarimeter whose output directly measured the spatial magnetic gradient. This prototype achieved a common-mode rejection ratio exceeding 50 dB and a sensitivity of 267 pT/cm/√Hz without passive magnetic shielding, using active ambient-field coils. As a proof of concept, we recorded preliminary cardiac-synchronous magnetic measurements using an optical pulse sensor for beat segmentation. After bandpass filtering and ensemble averaging, a cardiac-synchronous waveform was observed, consistent with cardiac timing. Unlike many multi-cell gradiometers that require complex calibration, modulation, and passive shielding, this single-cell design reduces cost and complexity.

光泵磁力仪(OPMs)为检测弱生物磁场提供了一种非低温超导量子干涉装置(squid)的替代方案。我们报告的设计,建设,并表征单细胞本然OPM梯度仪。梯度计采用正交泵浦和探针束结构的铷-87蒸汽池。泵浦光束被分开照亮细胞的两个平行感应区域,以3厘米的基线分开,具有相反的圆偏振。线极化探针光束通过两个区域传播,并被平衡偏振计捕获,其输出直接测量空间磁梯度。该原型实现了超过50 dB的共模抑制比和267 pT/cm/√Hz的灵敏度,没有被动磁屏蔽,使用有源环境场线圈。作为概念验证,我们使用光脉冲传感器进行心跳分割,记录了初步的心脏同步磁测量。经过带通滤波和集合平均后,观察到心脏同步波形,与心脏定时一致。与许多需要复杂校准、调制和无源屏蔽的多单元梯度仪不同,这种单单元设计降低了成本和复杂性。
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引用次数: 0
A Study on Autonomous Driving Motion Sickness from the Perspective of Multimodal Human Signals. 基于多模态人体信号的自动驾驶晕动病研究
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-06 DOI: 10.3390/s26051675
Su Young Kim, Yoon Sang Kim

In autonomous driving, motion sickness (MS) arises from physical or visual stimuli, or a combination of both. However, objective quantification of MS level (MSL) remains limited beyond questionnaire-based assessments. Using multimodal human signals (physiological and behavioral) collected in an autonomous driving simulator, this study addresses the association between these signals and MSL, across these MS types, by (i) screening and curating a decade of human-signal MS studies (HS-Set) to establish a data-driven foundation for selecting target sensor domains and features, (ii) constructing a dataset with subjective measures of MSL (fast motion sickness scale and simulator sickness questionnaire (SSQ)), alongside human signals (electroencephalogram (EEG), photoplethysmogram (PPG), electrodermal activity (EDA), skin temperature, and head/eye movement), (iii) conducting a correlation analysis between MSL and the identified features from HS-Set, and (iv) quantifying multivariable contributions at the feature and sensor domains through an explainable boosting machine (EBM). Key correlations include head amplitude/energy (pitch/surge) with SSQ total/oculomotor, eye entropy with nausea/oculomotor (positive), and EDA with nausea (negative). The EBM-based contribution analysis highlights EEG connectivity and head kinematics as dominant contributors; excluding EEG, the interpretability of single-domain models remains limited. Additionally, a combination of Head, PPG, and EDA domains retains over 80% of the full model's interpretability.

在自动驾驶中,晕动病(MS)是由身体或视觉刺激引起的,或者两者兼而有之。然而,MS水平(MSL)的客观量化仍然局限于基于问卷的评估。利用在自动驾驶模拟器中收集的多模态人类信号(生理和行为),本研究通过(i)筛选和整理十年来的人类信号MS研究(HS-Set),为选择目标传感器域和特征建立数据驱动的基础,(ii)构建具有MSL主观测量的数据集(快速晕动病量表和模拟器病问卷(SSQ)),解决了这些信号与MSL之间的关联,跨越这些MS类型。除了人类信号(脑电图(EEG)、光容积描记图(PPG)、皮电活动(EDA)、皮肤温度和头/眼运动),(iii)在MSL和HS-Set中识别的特征之间进行相关性分析,(iv)通过可解释的增强机(EBM)量化特征和传感器域的多变量贡献。关键相关性包括头振幅/能量(俯仰/浪涌)与SSQ总/动眼力,眼熵与恶心/动眼力(正),EDA与恶心(负)。基于ebm的贡献分析强调脑电图连通性和头部运动学是主要的贡献者;除EEG外,单域模型的可解释性仍然有限。此外,Head、PPG和EDA结构域的组合保留了整个模型80%以上的可解释性。
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引用次数: 0
SGE-Flow: 4D mmWave Radar 3D Object Detection via Spatiotemporal Geometric Enhancement and Inter-Frame Flow. SGE-Flow:基于时空几何增强和帧间流的4D毫米波雷达三维目标检测。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-03-06 DOI: 10.3390/s26051679
Huajun Meng, Zijie Yu, Cheng Li, Chao Li, Xiaojun Liu

4D millimeter-wave radar provides a promising solution for robust perception in adverse weather. Existing detectors still struggle with sparse and noisy point clouds, and maintaining real-time inference while achieving competitive accuracy remains challenging. We propose SGE-Flow, a streamlined PointPillars-based 4D radar 3D detector that embeds lightweight spatiotemporal geometric enhancements into the voxelization front-end. Velocity Displacement Compensation (VDC) leverages compensated radial velocity to align accumulated points in physical space and improve geometric consistency. Distribution-Aware Density (DAD) enables fast density feature extraction by estimating per-pillar density from simple statistical moments, which also restores vertical distribution cues lost during pillarization. To compensate for the absence of tangential velocity measurements, a Transformer-based Inter-frame Flow (IFF) module infers latent motion from frame-to-frame pillar occupancy changes. Evaluations on the View-of-Delft (VoD) dataset show that SGE-Flow achieves 53.23% 3D mean Average Precision (mAP) while running at 72 frames per second (FPS) on an NVIDIA RTX 3090. The proposed modules are plug-and-play and can also improve strong baselines such as MAFF-Net.

四维毫米波雷达为恶劣天气下的稳健感知提供了一个很有前途的解决方案。现有的探测器仍然在与稀疏和嘈杂的点云作斗争,在保持实时推理的同时达到有竞争力的精度仍然是一个挑战。我们提出了SGE-Flow,这是一种流线型的基于pointpillar的4D雷达3D探测器,它将轻量级的时空几何增强嵌入到体素化前端。速度位移补偿(VDC)利用补偿的径向速度来对齐物理空间中的累积点,并提高几何一致性。分布感知密度(distributed - aware Density, DAD)可以通过简单的统计矩估计每个柱的密度,从而实现快速的密度特征提取,还可以恢复柱化过程中丢失的垂直分布线索。为了弥补切向速度测量的缺失,基于变压器的帧间流(IFF)模块推断帧间柱占用变化的潜在运动。对View-of-Delft (VoD)数据集的评估表明,在NVIDIA RTX 3090上以每秒72帧(FPS)的速度运行时,sage - flow达到53.23%的3D平均精度(mAP)。所提出的模块是即插即用的,也可以改善强大的基线,如MAFF-Net。
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引用次数: 0
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