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Improving Foraminifera Classification Using Convolutional Neural Networks with Ensemble Learning 基于集成学习的卷积神经网络改进有孔虫分类
Pub Date : 2023-07-17 DOI: 10.3390/signals4030028
L. Nanni, Giovanni Faldani, S. Brahnam, Riccardo Bravin, Elia Feltrin
This paper presents a study of an automated system for identifying planktic foraminifera at the species level. The system uses a combination of deep learning methods, specifically convolutional neural networks (CNNs), to analyze digital images of foraminifera taken at different illumination angles. The dataset is composed of 1437 groups of sixteen grayscale images, one group for each foraminifera specimen, that are then converted to RGB images with various processing methods. These RGB images are fed into a set of CNNs, organized in an ensemble learning (EL) environment. The ensemble is built by training different networks using different approaches for creating the RGB images. The study finds that an ensemble of CNN models trained on different RGB images improves the system’s performance compared to other state-of-the-art approaches. The main focus of this paper is to introduce multiple colorization methods that differ from the current cutting-edge techniques; novel strategies like Gaussian or mean-based techniques are suggested. The proposed system was also found to outperform human experts in classification accuracy.
本文介绍了一种在物种水平上识别浮游有孔虫的自动化系统的研究。该系统结合了深度学习方法,特别是卷积神经网络,来分析在不同照明角度拍摄的有孔虫数字图像。该数据集由1437组16幅灰度图像组成,每个有孔虫标本一组,然后通过各种处理方法将其转换为RGB图像。这些RGB图像被馈送到在集成学习(EL)环境中组织的一组CNN中。该集合是通过使用不同的方法来创建RGB图像来训练不同的网络来构建的。研究发现,与其他最先进的方法相比,在不同RGB图像上训练的CNN模型集合提高了系统的性能。本文的主要重点是介绍不同于当前尖端技术的多种着色方法;提出了新的策略,如高斯或基于均值的技术。还发现,所提出的系统在分类精度方面优于人类专家。
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引用次数: 0
Extracting Communication, Ranging and Test Waveforms with Regularized Timing from the Chaotic Lorenz System 从混沌Lorenz系统中提取具有正则定时的通信、测距和测试波形
Pub Date : 2023-07-11 DOI: 10.3390/signals4030027
A. Beal
We present an algorithm for extracting basis functions from the chaotic Lorenz system along with timing and bit-sequence statistics. Previous work focused on modifying Lorenz waveforms and extracting the basis function of a single state variable. Importantly, these efforts initiated the development of solvable chaotic systems with simple matched filters, which are suitable for many spread spectrum applications. However, few solvable chaotic systems are known, and they are highly dependent upon an engineered basis function. Non-solvable, Lorenz signals are often used to test time-series prediction schemes and are also central to efforts to maximize spectral efficiency by joining radar and communication waveforms. Here, we provide extracted basis functions for all three Lorenz state variables, their timing statistics, and their bit-sequence statistics. Further, we outline a detailed algorithm suitable for the extraction of basis functions from many chaotic systems such as the Lorenz system. These results promote the search for engineered basis functions in solvable chaotic systems, provide tools for joining radar and communication waveforms, and give an algorithmic process for modifying chaotic Lorenz waveforms to quantify the performance of chaotic time-series forecasting methods. The results presented here provide engineered test signals compatible with quantitative analysis of predicted amplitudes and regular timing.
我们提出了一种从混沌Lorenz系统中提取基函数以及时序和比特序列统计的算法。先前的工作集中在修改洛伦兹波形和提取单个状态变量的基函数。重要的是,这些努力开创了具有简单匹配滤波器的可解混沌系统的发展,该系统适用于许多扩频应用。然而,已知的可解混沌系统很少,而且它们高度依赖于工程基函数。洛伦兹信号是不可解的,通常用于测试时间序列预测方案,也是通过连接雷达和通信波形来最大化频谱效率的核心。在这里,我们提供了所有三个洛伦兹状态变量的提取基函数、它们的时序统计信息和它们的比特序列统计信息。此外,我们还提出了一种适用于从许多混沌系统(如洛伦兹系统)中提取基函数的详细算法。这些结果促进了对可解混沌系统中工程基函数的搜索,为连接雷达和通信波形提供了工具,并给出了修改混沌洛伦兹波形的算法过程,以量化混沌时间序列预测方法的性能。这里给出的结果提供了与预测振幅的定量分析和规则定时兼容的工程测试信号。
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引用次数: 1
Beyond Frequency Band Constraints in EEG Analysis: The Role of the Mode Decomposition in Pushing the Boundaries 脑电分析中的超频带约束:模态分解在推边界中的作用
Pub Date : 2023-07-05 DOI: 10.3390/signals4030026
Eduardo Arrufat-Pié, M. Estévez-Báez, José Mario Estévez-Carreras, Gerry Leisman, C. Machado, Carlos Beltrán-León
This study investigates the use of empirical mode decomposition (EMD) to extract intrinsic mode functions (IMFs) for the spectral analysis of EEG signals in healthy individuals and its possible biological interpretations. Unlike traditional EEG analysis, this approach does not require the establishment of arbitrary band limits. The study uses a multivariate EMD algorithm (APIT-MEMD) to extract IMFs from the EEG signals of 34 healthy volunteers. The first six IMFs are analyzed using two different methods, based on FFT and HHT, and the results compared using the ANOVA test and the Bland–Altman method for agreement test. The outcomes show that the frequency values of the first six IMFs fall within the range of classic EEG bands (1.72–52.4 Hz). Although there was a lack of agreement in the mean weighted frequency values of the first three IMFs between the two methods (>3 Hz), both methods showed similar results for power spectral density (<5% normalized units, %, of power spectral density). The HHT method is found to have better frequency resolution than APIT-MEMD associated with FTT that produce less overlapping between IMF3 and 4 (p = 0.0046) and it is recommended for analyzing the spectral properties of IMFs. The study concludes that the HHT method could help to avoid the assumption of strict frequency band limits, and that the potential impact of EEG physiological phenomenon on mode-mixing interpretation, particularly for the alpha and theta ranges, must be considered in future research.
本研究探讨了利用经验模态分解(EMD)提取健康个体脑电图信号频谱分析的内在模态函数(IMFs)及其可能的生物学解释。与传统的脑电图分析不同,这种方法不需要建立任意的频带限制。本研究采用多元EMD算法(APIT-MEMD)从34名健康志愿者的脑电图信号中提取imf。使用FFT和HHT两种不同的方法对前六个IMFs进行分析,并使用ANOVA检验和Bland-Altman方法进行一致性检验。结果表明,前6个IMFs的频率值均在经典EEG频带(1.72 ~ 52.4 Hz)范围内。尽管两种方法(> - 3hz)的前三个imf的平均加权频率值缺乏一致性,但两种方法在功率谱密度(功率谱密度的归一化单位<5%,%)上显示出相似的结果。HHT方法比APIT-MEMD方法具有更好的频率分辨率,与FTT相关的APIT-MEMD方法在IMF3和4之间产生较少的重叠(p = 0.0046),推荐用于分析IMF3和4的频谱特性。研究认为,HHT方法可以避免假设严格的频带限制,并且在未来的研究中必须考虑脑电生理现象对模式混合解释的潜在影响,特别是对α和θ范围的影响。
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引用次数: 0
Search Space Reduction for Localization and Tracking of an Acoustic Source 声源定位与跟踪的搜索空间缩减
Pub Date : 2023-06-26 DOI: 10.3390/signals4030025
O. Rodríguez, Lilun Zhang, Xinghua Cheng
Experimental data from the SACLANTCEN 1993 Mediterranean Experiment are reviewed to assess the reduction of the search space for the localization and tracking of an acoustic source in a three-dimensional environment. Key to this goal is the availability of an initial estimate of source range and depth (called the 2D initial guess); an ambiguous estimate of source bearing can be obtained from the 2D initial guess through Environmental Signal Processing, and the ambiguity can be removed by searching for the source only in the range/bearing regions where bearing estimates are higher. This search provides a new estimate of source range and a single bearing, which together with the estimate for source depth constitute the center of the reduced search space for source localization and tracking. The suggested approach is tested on experimental data from the SACLANTCEN experiment considering different frequencies, as well as a stationary and a moving source.
本文回顾了SACLANTCEN 1993年地中海实验的实验数据,以评估在三维环境中定位和跟踪声源的搜索空间的缩小。实现这一目标的关键是对震源范围和深度的初步估计(称为二维初始猜测);通过环境信号处理,可以从二维初始猜测中获得源方位的模糊估计,并且可以通过仅在方位估计较高的距离/方位区域中搜索源来消除模糊估计。该算法提供了新的源距离估计和单一方位估计,并与源深度估计一起构成了简化的源定位和跟踪搜索空间的中心。在SACLANTCEN实验数据上进行了不同频率、静止源和运动源的实验验证。
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引用次数: 1
Vehicular Visible Light Communication for Intersection Management 用于交叉口管理的车辆可见光通信
Pub Date : 2023-06-16 DOI: 10.3390/signals4020024
M. Vieira, M. Vieira, P. Louro, P. Vieira, A. Fantoni
An innovative treatment for congested urban road networks is the split intersection. Here, a congested two-way–two-way traffic light-controlled intersection is transformed into two lighter intersections. By reducing conflict points and improving travel time, it facilitates smoother flow with less driver delay. We propose a visible light communication system based on Vehicle-to-Vehicle (V2V), Vehicle-to-Infrastructure (V2I) and Infrastructure-to-Vehicle (I2V) communications able to safely manage vehicles crossing through an intersection, leveraging Edge of Things (EoT) facilities. Headlights, street lamps, and traffic signals are used by connected vehicles to communicate with one another and with infrastructure. Through internally installed Driver Agents, an Intersection Manager coordinates traffic flow and interacts with vehicles. For the safe passage of vehicles across intersections, request/response mechanisms and time and space relative pose concepts are used. A virtual scenario is proposed, and a “mesh/cellular” hybrid architecture used. Light signals are emitted by transmitters by encoding, modulating, and converting data. Optical sensors with light-filtering properties are used as receivers and decoders. The VLC request/response concept uplink and downlink communication between the infrastructure and the vehicles is tested. Based on the results, the short-range mesh network provides a secure communication path between street lamp controllers and edge computers through neighbor traffic light controllers that have active cellular connections, as well as peer-to-peer communication, allowing V-VLC ready cars to exchange information.
对于拥堵的城市道路网络,一种创新的处理方法是分离式交叉路口。在这里,一个拥挤的双向交通灯控制的十字路口被改造成两个较轻的十字路口。通过减少冲突点和改善出行时间,使交通更顺畅,减少司机延误。我们提出了一种基于车对车(V2V)、车对基础设施(V2I)和基础设施对车(I2V)通信的可见光通信系统,能够利用物联网边缘(EoT)设施安全管理穿过十字路口的车辆。互联车辆使用前灯、路灯和交通信号相互通信,并与基础设施通信。通过内部安装的驾驶员代理,交叉口管理器协调交通流量并与车辆交互。为了车辆安全通过交叉路口,使用了请求/响应机制和时间和空间相对姿态概念。提出了一种虚拟场景,并采用了“网格/蜂窝”混合架构。光信号是由发射机通过编码、调制和转换数据发出的。具有滤光特性的光学传感器被用作接收器和解码器。测试了VLC请求/响应概念在基础设施和车辆之间的上行和下行通信。基于结果,短距离网状网络通过具有活跃蜂窝连接的相邻交通灯控制器和点对点通信,在路灯控制器和边缘计算机之间提供了安全的通信路径,允许准备V-VLC的汽车交换信息。
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引用次数: 0
Extended Kalman Filter Design for Tracking Time-of-Flight and Clock Offsets in a Two-Way Ranging System 用于跟踪双向测距系统中飞行时间和时钟偏移的扩展卡尔曼滤波器设计
Pub Date : 2023-06-15 DOI: 10.3390/signals4020023
S. Srinivas, A. Herschfelt, D. Bliss
As radio frequency (RF) hardware continues to improve, two-way ranging (TWR) has become a viable approach for high-precision ranging applications. The precision of a TWR system is fundamentally limited by estimates of the time offset T between two platforms and the time delay τ of a signal propagating between them. In previous work, we derived a family of optimal “one-shot” joint delay–offset estimators and demonstrated that they reduce to a system of linear equations under reasonable assumptions. These estimators are simple and computationally efficient but are also susceptible to channel impairments that obstruct one or more measurements. In this work, we formulate an extended Kalman filter (EKF) for this class of estimators that specifically addresses this limitation. Unlike a generic KF approach, the proposed solution specifically integrates the estimation process to minimize the computational complexity. We benchmark the proposed first- and second-order EKF solutions against the existing one-shot estimators in a MATLAB Monte Carlo simulation environment. We demonstrate that the proposed solution achieves comparable estimation performance and, in the case of the second-order solution, reduces the computation time by an order of magnitude.
随着射频(RF)硬件的不断改进,双向测距(TWR)已成为高精度测距应用的可行方法。TWR系统的精度从根本上受到两个平台之间的时间偏移T和在它们之间传播的信号的时间延迟τ的估计的限制。在之前的工作中,我们推导了一组最优的“一次性”联合延迟-偏移估计量,并证明了在合理的假设下,它们可以简化为线性方程组。这些估计器简单且计算高效,但也容易受到阻碍一个或多个测量的信道损伤的影响。在这项工作中,我们为这类估计量制定了一个扩展卡尔曼滤波器(EKF),专门解决了这一限制。与一般的KF方法不同,所提出的解决方案专门集成了估计过程,以最小化计算复杂性。我们在MATLAB蒙特卡罗模拟环境中,将所提出的一阶和二阶EKF解与现有的单次估计器进行比较。我们证明了所提出的解决方案实现了相当的估计性能,并且在二阶解决方案的情况下,将计算时间减少了一个数量级。
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引用次数: 0
Breast Density Transformations Using CycleGANs for Revealing Undetected Findings in Mammograms 使用CycleGANs进行乳腺密度转换以揭示乳腺X线图中未检测到的发现
Pub Date : 2023-06-01 DOI: 10.3390/signals4020022
D. Anyfantis, A. Koutras, G. Apostolopoulos, Ioanna Christoyianni
Breast cancer is the most common cancer in women, a leading cause of morbidity and mortality, and a significant health issue worldwide. According to the World Health Organization’s cancer awareness recommendations, mammographic screening should be regularly performed on middle-aged or older women to increase the chances of early cancer detection. Breast density is widely known to be related to the risk of cancer development. The American College of Radiology Breast Imaging Reporting and Data System categorizes mammography into four levels based on breast density, ranging from ACR-A (least dense) to ACR-D (most dense). Computer-aided diagnostic (CAD) systems can now detect suspicious regions in mammograms and identify abnormalities more quickly and accurately than human readers. However, their performance is still influenced by the tissue density level, which must be considered when designing such systems. In this paper, we propose a novel method that uses CycleGANs to transform suspicious regions of mammograms from ACR-B, -C, and -D levels to ACR-A level. This transformation aims to reduce the masking effect caused by thick tissue and separate cancerous regions from surrounding tissue. Our proposed system enhances the performance of conventional CNN-based classifiers significantly by focusing on regions of interest that would otherwise be misidentified due to fatty masking. Extensive testing on different types of mammograms (digital and scanned X-ray film) demonstrates the effectiveness of our system in identifying normal, benign, and malignant regions of interest.
癌症是癌症中最常见的癌症,也是导致发病率和死亡率的主要原因,也是世界范围内的一个重大健康问题。根据世界卫生组织癌症意识建议,应定期对中老年妇女进行乳房X光检查,以增加早期发现癌症的机会。众所周知,乳腺密度与癌症发展的风险有关。美国放射学会乳腺成像报告和数据系统根据乳房密度将乳房X光检查分为四个级别,从ACR-A(最不密集)到ACR-D(最密集)。计算机辅助诊断(CAD)系统现在可以检测乳房X光照片中的可疑区域,并比人类读者更快、更准确地识别异常。然而,它们的性能仍然受到组织密度水平的影响,在设计这种系统时必须考虑这一点。在本文中,我们提出了一种新的方法,使用CycleGANs将乳房X光片的可疑区域从ACR-B、-C和-D水平转换为ACR-a水平。这种转化旨在减少厚组织引起的掩蔽效应,并将癌区与周围组织分离。我们提出的系统通过关注感兴趣的区域,显著提高了传统的基于CNN的分类器的性能,否则这些区域会因脂肪掩蔽而被错误识别。对不同类型的乳房X光片(数字和扫描X光片)进行的广泛测试证明了我们的系统在识别正常、良性和恶性感兴趣区域方面的有效性。
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引用次数: 0
Enhanced Neural Network Method-Based Multiscale PCA for Fault Diagnosis: Application to Grid-Connected PV Systems 基于增强神经网络方法的多尺度主成分分析在并网光伏系统故障诊断中的应用
Pub Date : 2023-05-30 DOI: 10.3390/signals4020020
Khadija Attouri, Majdi Mansouri, Mansour Hajji, Abdelmalek Kouadri, Kais Bouzrara, Hazem Nounou
In this work, an effective Fault Detection and Diagnosis (FDD) strategy designed to increase the performance and accuracy of fault diagnosis in grid-connected photovoltaic (GCPV) systems is developed. The evolved approach is threefold: first, a pre-processing of the training dataset is applied using a multiscale scheme that decomposes the data at multiple scales using high-pass/low-pass filters to separate the noise from the informative attributes and prevent the stochastic samples. Second, a principal component analysis (PCA) technique is applied to the newly obtained data to select, extract, and preserve only the more relevant, informative, and uncorrelated attributes; and finally, to distinguish between the diverse conditions, the extracted attributes are utilized to train the NNs classifiers. In this study, an effort is made to take into consideration all potential and frequent faults that might occur in PV systems. Thus, twenty-one faulty scenarios (line-to-line, line-to-ground, connectivity faults, and faults that can affect the normal operation of the bay-pass diodes) have been introduced and treated at different levels and locations; each scenario comprises various and diverse conditions, including the occurrence of simple faults in the PV1 array, simple faults in the PV2 array, multiple faults in PV1, multiple faults in PV2, and mixed faults in both PV arrays, in order to ensure a complete and global analysis, thereby reducing the loss of generated energy and maintaining the reliability and efficiency of such systems. The obtained outcomes demonstrate that the proposed approach not only achieves good accuracies but also reduces runtimes during the diagnosis process by avoiding noisy and stochastic data, thereby removing irrelevant and correlated samples from the original dataset.
本文提出了一种有效的故障检测与诊断(FDD)策略,旨在提高并网光伏系统的故障诊断性能和准确性。进化的方法有三个方面:首先,使用多尺度方案对训练数据集进行预处理,该方案使用高通/低通滤波器在多个尺度上分解数据,以从信息属性中分离噪声并防止随机样本。其次,将主成分分析(PCA)技术应用于新获得的数据,以选择、提取和保留更相关、信息量更大和不相关的属性;最后,为了区分不同的条件,利用提取的属性来训练神经网络分类器。在这项研究中,努力考虑到所有潜在的和频繁的故障,可能会发生在光伏系统。因此,介绍了21种故障场景(线对线、线对地、连接故障和可能影响隔离通二极管正常工作的故障),并在不同级别和位置进行了处理;每个场景都包含多种多样的情况,包括PV1阵列发生简单故障、PV2阵列发生简单故障、PV1多发故障、PV2多发故障、两个光伏阵列混合故障,以保证完整全局的分析,从而减少发电损失,保持系统的可靠性和效率。结果表明,该方法不仅具有良好的准确率,而且通过避免噪声和随机数据,从而从原始数据集中去除不相关和相关的样本,减少了诊断过程中的运行时间。
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引用次数: 0
Employing Classification Techniques on SmartSpeech Biometric Data towards Identification of Neurodevelopmental Disorders 应用智能语音生物特征数据分类技术识别神经发育障碍
Pub Date : 2023-05-30 DOI: 10.3390/signals4020021
E. Toki, Giorgos Tatsis, Vasileios A. Tatsis, Konstantinos Plachouras, J. Pange, I. Tsoulos
Early detection and evaluation of children at risk of neurodevelopmental disorders and/or communication deficits is critical. While the current literature indicates a high prevalence of neurodevelopmental disorders, many children remain undiagnosed, resulting in missed opportunities for effective interventions that could have had a greater impact if administered earlier. Clinicians face a variety of complications during neurodevelopmental disorders’ evaluation procedures and must elevate their use of digital tools to aid in early detection efficiently. Artificial intelligence enables novelty in taking decisions, classification, and diagnosis. The current research investigates the efficacy of various machine learning approaches on the biometric SmartSpeech datasets. These datasets come from a new innovative system that includes a serious game which gathers children’s responses to specifically designed speech and language activities and their manifestations, intending to assist during the clinical evaluation of neurodevelopmental disorders. The machine learning approaches were used by utilizing the algorithms Radial Basis Function, Neural Network, Deep Learning Neural Networks, and a variation of Grammatical Evolution (GenClass). The most significant results show improved accuracy (%) when using the eye tracking dataset; more specifically: (i) for the class Disorder with GenClass (92.83%), (ii) for the class Autism Spectrum Disorders with Deep Learning Neural Networks layer 4 (86.33%), (iii) for the class Attention Deficit Hyperactivity Disorder with Deep Learning Neural Networks layer 4 (87.44%), (iv) for the class Intellectual Disability with GenClass (86.93%), (v) for the class Specific Learning Disorder with GenClass (88.88%), and (vi) for the class Communication Disorders with GenClass (88.70%). Overall, the results indicated GenClass to be nearly the top competitor, opening up additional probes for future studies toward automatically classifying and assisting clinical assessments for children with neurodevelopmental disorders.
早期发现和评估有神经发育障碍和/或沟通缺陷风险的儿童至关重要。虽然目前的文献表明神经发育障碍的患病率很高,但许多儿童仍未被诊断出来,导致错过了有效干预的机会,如果及早实施,可能会产生更大的影响。临床医生在神经发育障碍的评估过程中面临各种并发症,必须提高他们对数字工具的使用,以帮助有效的早期发现。人工智能使决策、分类和诊断变得新颖。目前的研究调查了各种机器学习方法对生物识别智能语音数据集的有效性。这些数据集来自一个新的创新系统,其中包括一个严肃的游戏,该游戏收集儿童对专门设计的言语和语言活动及其表现的反应,旨在协助神经发育障碍的临床评估。机器学习方法通过利用算法径向基函数、神经网络、深度学习神经网络和语法进化的变体(GenClass)来使用。最显著的结果是,当使用眼动追踪数据集时,准确率(%)有所提高;更具体地说:(i) GenClass类的障碍(92.83%),(ii)深度学习神经网络第4层的自闭症谱系障碍(86.33%),(iii)深度学习神经网络第4层的注意缺陷多动障碍(87.44%),(iv) GenClass类的智力障碍(86.93%),(v) GenClass类的特殊学习障碍(88.88%),(vi) GenClass类的交流障碍(88.70%)。总的来说,结果表明GenClass几乎是最顶尖的竞争者,为未来的研究开辟了更多的探索,以自动分类和协助神经发育障碍儿童的临床评估。
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引用次数: 1
Dialogue Act Classification via Transfer Learning for Automated Labeling of Interviewee Responses in Virtual Reality Job Interview Training Platforms for Autistic Individuals 基于迁移学习的对话行为分类在自闭症患者虚拟现实面试培训平台中的自动标注
Pub Date : 2023-05-19 DOI: 10.3390/signals4020019
Deeksha Adiani, Kelley Colopietro, Joshua W. Wade, Miroslava Migovich, Timothy J. Vogus, N. Sarkar
Computer-based job interview training, including virtual reality (VR) simulations, have gained popularity in recent years to support and aid autistic individuals, who face significant challenges and barriers in finding and maintaining employment. Although popular, these training systems often fail to resemble the complexity and dynamism of the employment interview, as the dialogue management for the virtual conversation agent either relies on choosing from a menu of prespecified answers, or dialogue processing is based on keyword extraction from the transcribed speech of the interviewee, which depends on the interview script. We address this limitation through automated dialogue act classification via transfer learning. This allows for recognizing intent from user speech, independent of the domain of the interview. We also redress the lack of training data for a domain general job interview dialogue act classifier by providing an original dataset with responses to interview questions within a virtual job interview platform from 22 autistic participants. Participants’ responses to a customized interview script were transcribed to text and annotated according to a custom 13-class dialogue act scheme. The best classifier was a fine-tuned bidirectional encoder representations from transformers (BERT) model, with an f1-score of 87%.
包括虚拟现实(VR)模拟在内的基于计算机的求职面试培训近年来越来越受欢迎,以支持和帮助自闭症患者,他们在寻找和维持就业方面面临重大挑战和障碍。虽然很流行,但这些培训系统往往不能像招聘面试那样复杂和动态,因为虚拟对话代理的对话管理要么依赖于从预先指定的答案菜单中进行选择,要么基于从被面试者的转录语音中提取关键字来处理对话,这取决于面试脚本。我们通过迁移学习的自动对话行为分类解决了这一限制。这允许从用户语音中识别意图,独立于采访领域。我们还通过提供包含22名自闭症参与者在虚拟面试平台中对面试问题的回答的原始数据集,解决了领域一般面试对话行为分类器缺乏训练数据的问题。参与者对定制采访脚本的回答被转录成文本,并根据定制的13类对话行为方案进行注释。最好的分类器是一个微调的双向编码器表示从变压器(BERT)模型,f1得分为87%。
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引用次数: 0
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Signals
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