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Driving across Markets: An Analysis of a Human–Machine Interface in Different International Contexts 跨市场驾驶:不同国际背景下的人机界面分析
Pub Date : 2024-06-12 DOI: 10.3390/info15060349
Denise Sogemeier, Yannick Forster, Frederik Naujoks, J. Krems, Andreas Keinath
The design of automotive human–machine interfaces (HMIs) for global consumers’ needs to cater to a broad spectrum of drivers. This paper comprises benchmark studies and explores how users from international markets—Germany, China, and the United States—engage with the same automotive HMI. In real driving scenarios, N = 301 participants (premium vehicle owners) completed several tasks using different interaction modalities. The multi-method approach included both self-report measures to assess preference and satisfaction through well-established questionnaires and observational measures, namely experimenter ratings, to capture interaction performance. We observed a trend towards lower preference ratings in the Chinese sample. Further, interaction performance differed across the user groups, with self-reported preference not consistently aligning with observed performance. This dissociation accentuates the importance of integrating both measures in user studies. By employing benchmark data, we provide insights into varied market-based perspectives on automotive HMIs. The findings highlight the necessity for a nuanced approach to HMI design that considers diverse user preferences and interaction patterns.
为全球消费者设计汽车人机界面 (HMI),需要满足广大驾驶者的需求。本文包括基准研究,探讨了来自德国、中国和美国等国际市场的用户如何使用相同的汽车人机界面。在真实驾驶场景中,N = 301 名参与者(高级车主)使用不同的交互模式完成了多项任务。我们采用了多种方法,包括通过成熟的调查问卷来评估偏好度和满意度的自我报告方法,以及通过实验者评分来捕捉交互表现的观察方法。我们观察到,中国样本的偏好评分有降低的趋势。此外,不同用户群体的交互表现也不尽相同,自我报告的偏好与观察到的表现并不一致。这种差异凸显了在用户研究中整合两种测量方法的重要性。通过使用基准数据,我们深入了解了市场对汽车人机界面的不同看法。研究结果突出表明,人机界面设计必须考虑到不同用户的偏好和交互模式。
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引用次数: 0
Correction: Yi et al. SFS-AGGL: Semi-Supervised Feature Selection Integrating Adaptive Graph with Global and Local Information. Information 2024, 15, 57 更正:Yi et al. SFS-AGGL:半监督特征选择与全局和局部信息的自适应图谱集成。信息2024,15,57
Pub Date : 2024-06-12 DOI: 10.3390/info15060347
Yugen Yi, Haoming Zhang, Ningyi Zhang, Wei Zhou, Xiaomei Huang, Gengsheng Xie, Caixia Zheng
In the original publication [...]
在最初的出版物中 [...]
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引用次数: 0
Factors for Customers’ AI Use Readiness in Physical Retail Stores: The Interplay of Consumer Attitudes and Gender Differences 顾客在实体零售店使用人工智能的准备程度因素:消费者态度与性别差异的相互作用
Pub Date : 2024-06-12 DOI: 10.3390/info15060346
Nina Kolar, B. Milfelner, Aleksandra Pisnik
In addressing the nuanced interplay between consumer attitudes and Artificial Intelligence (AI) use readiness in physical retail stores, the main objective of this study is to test the impacts of prior experience, as well as perceived risks with AI technologies, self-assessment of consumers’ ability to manage AI technologies, and the moderator role of gender in this relationship. Using a quantitative cross-sectional survey, data from 243 consumers familiar with AI technologies were analyzed using structural equation modeling (SEM) methods to explore these dynamics in the context of physical retail stores. Additionally, the moderating impacts were tested after the invariance analysis across both gender groups. Key findings indicate that positive prior experience with AI technologies positively influences AI use readiness in physical retail stores, while perceived risks with AI technologies serve as a deterrent. Gender differences significantly moderate these effects, with perceived risks with AI technologies more negatively impacting women’s AI use readiness and self-assessment of the ability to manage AI technologies showing a stronger positive impact on men’s AI use readiness. The study concludes that retailers must consider these gender-specific perceptions and attitudes toward AI to develop more effective strategies for technology integration. Our research also highlights the need to address gender-specific barriers and biases when adopting AI technology.
为了解决实体零售店中消费者态度与人工智能(AI)使用准备之间微妙的相互作用问题,本研究的主要目的是测试先前经验的影响、人工智能技术的感知风险、消费者管理人工智能技术能力的自我评估以及性别在这一关系中的调节作用。本研究使用结构方程建模(SEM)方法,对 243 名熟悉人工智能技术的消费者的数据进行了定量横截面调查分析,以探讨实体零售店背景下的这些动态变化。此外,在对两个性别群体进行不变量分析后,还测试了调节作用。主要研究结果表明,先前对人工智能技术的积极体验会对实体零售店的人工智能使用准备程度产生积极影响,而人工智能技术的感知风险则会起到阻碍作用。性别差异在很大程度上缓和了这些影响,人工智能技术的风险感知对女性的人工智能使用准备程度产生了更大的负面影响,而对管理人工智能技术能力的自我评估则对男性的人工智能使用准备程度产生了更大的积极影响。研究得出结论,零售商必须考虑这些不同性别对人工智能的看法和态度,以制定更有效的技术整合战略。我们的研究还强调,在采用人工智能技术时,有必要消除性别障碍和偏见。
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引用次数: 0
Identification of Optimal Data Augmentation Techniques for Multimodal Time-Series Sensory Data: A Framework 识别多模态时间序列感官数据的最佳数据增强技术:一个框架
Pub Date : 2024-06-11 DOI: 10.3390/info15060343
Nazish Ashfaq, Muhammad Hassan Khan, M. Nisar
Recently, the research community has shown significant interest in the continuous temporal data obtained from motion sensors in wearable devices. These data are useful for classifying and analysing different human activities in many application areas such as healthcare, sports and surveillance. The literature has presented a multitude of deep learning models that aim to derive a suitable feature representation from temporal sensory input. However, the presence of a substantial quantity of annotated training data is crucial to adequately train the deep networks. Nevertheless, the data originating from the wearable devices are vast but ineffective due to a lack of labels which hinders our ability to train the models with optimal efficiency. This phenomenon leads to the model experiencing overfitting. The contribution of the proposed research is twofold: firstly, it involves a systematic evaluation of fifteen different augmentation strategies to solve the inadequacy problem of labeled data which plays a critical role in the classification tasks. Secondly, it introduces an automatic feature-learning technique proposing a Multi-Branch Hybrid Conv-LSTM network to classify human activities of daily living using multimodal data of different wearable smart devices. The objective of this study is to introduce an ensemble deep model that effectively captures intricate patterns and interdependencies within temporal data. The term “ensemble model” pertains to fusion of distinct deep models, with the objective of leveraging their own strengths and capabilities to develop a solution that is more robust and efficient. A comprehensive assessment of ensemble models is conducted using data-augmentation techniques on two prominent benchmark datasets: CogAge and UniMiB-SHAR. The proposed network employs a range of data-augmentation methods to improve the accuracy of atomic and composite activities. This results in a 5% increase in accuracy for composite activities and a 30% increase for atomic activities.
最近,研究界对从可穿戴设备中的运动传感器获取的连续时间数据表现出了浓厚的兴趣。这些数据有助于对医疗保健、体育和监控等许多应用领域中的不同人类活动进行分类和分析。文献介绍了大量深度学习模型,这些模型旨在从时间感官输入中获得合适的特征表示。然而,要充分训练深度网络,大量标注训练数据的存在至关重要。然而,来自可穿戴设备的数据数量庞大,但由于缺乏标签而无效,这阻碍了我们以最佳效率训练模型的能力。这种现象导致模型出现过拟合。本文提出的研究有两方面的贡献:首先,它对 15 种不同的增强策略进行了系统评估,以解决在分类任务中起关键作用的标记数据不足问题。其次,它引入了一种自动特征学习技术,提出了一种多分支混合 Conv-LSTM 网络,利用不同可穿戴智能设备的多模态数据对人类日常生活活动进行分类。本研究的目的是引入一种集合深度模型,以有效捕捉时间数据中错综复杂的模式和相互依存关系。术语 "集合模型 "是指融合不同的深度模型,目的是利用这些模型自身的优势和能力,开发出更强大、更高效的解决方案。在两个著名的基准数据集上使用数据增强技术对集合模型进行了全面评估:CogAge 和 UniMiB-SHAR。拟议的网络采用了一系列数据增强方法,以提高原子活动和复合活动的准确性。这使得复合活动的准确性提高了 5%,原子活动的准确性提高了 30%。
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引用次数: 0
Knowledge-Driven and Diffusion Model-Based Methods for Generating Historical Building Facades: A Case Study of Traditional Minnan Residences in China 基于知识驱动和扩散模型的历史建筑立面生成方法:中国传统闽南民居案例研究
Pub Date : 2024-06-11 DOI: 10.3390/info15060344
Sirui Xu, Jiaxin Zhang, Yunqin Li
The preservation of historical traditional architectural ensembles faces multifaceted challenges, and the need for facade renovation and updates has become increasingly prominent. In conventional architectural updating and renovation processes, assessing design schemes and the redesigning component are often time-consuming and labor-intensive. The knowledge-driven method utilizes a wide range of knowledge resources, such as historical documents, architectural drawings, and photographs, commonly used to guide and optimize the conservation, restoration, and management of architectural heritage. Recently, the emergence of artificial intelligence-generated content (AIGC) technologies has provided new solutions for creating architectural facades, introducing a new research paradigm to the renovation plans for historic districts with their variety of options and high efficiency. In this study, we propose a workflow combining Grasshopper with Stable Diffusion: starting with Grasshopper to generate concise line drawings, then using the ControlNet and low-rank adaptation (LoRA) models to produce images of traditional Minnan architectural facades, allowing designers to quickly preview and modify the facade designs during the renovation of traditional architectural clusters. Our research results demonstrate Stable Diffusion’s precise understanding and execution ability concerning architectural facade elements, capable of generating regional traditional architectural facades that meet architects’ requirements for style, size, and form based on existing images and prompt descriptions, revealing the immense potential for application in the renovation of traditional architectural groups and historic districts. It should be noted that the correlation between specific architectural images and proprietary term prompts still requires further addition due to the limitations of the database. Although the model generally performs well when trained on traditional Chinese ancient buildings, the accuracy and clarity of more complex decorative parts still need enhancement, necessitating further exploration of solutions for handling facade details in the future.
传统历史建筑群的保护面临着多方面的挑战,外墙翻新和更新的需求日益突出。在传统的建筑更新和改造过程中,评估设计方案和重新设计部分往往耗时耗力。知识驱动法利用历史文献、建筑图纸和照片等广泛的知识资源,常用于指导和优化建筑遗产的保护、修复和管理。最近,人工智能生成内容(AIGC)技术的出现为创建建筑立面提供了新的解决方案,为历史街区的翻新计划引入了一种新的研究范式,其选择多样且效率高。在这项研究中,我们提出了一种将草蜢与稳定扩散相结合的工作流程:先用草蜢生成简洁的线条图,然后利用控制网和低阶自适应(LoRA)模型生成传统闽南建筑立面的图像,让设计师在传统建筑群的改造过程中快速预览和修改立面设计。我们的研究成果证明了稳定扩散对建筑立面元素的精确理解和执行能力,能够根据现有图像和提示描述生成符合建筑师风格、尺寸和形式要求的区域传统建筑立面,揭示了其在传统建筑群和历史街区改造中的巨大应用潜力。值得注意的是,由于数据库的局限性,具体建筑图像与专有术语提示之间的相关性仍需进一步补充。虽然该模型在中国传统古建筑上的训练效果总体良好,但对于较为复杂的装饰部分,其准确性和清晰度仍有待提高,这就需要在未来进一步探索处理外立面细节的解决方案。
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引用次数: 0
Social-STGMLP: A Social Spatio-Temporal Graph Multi-Layer Perceptron for Pedestrian Trajectory Prediction 社交-STGMLP:用于行人轨迹预测的社交时空图多层感知器
Pub Date : 2024-06-10 DOI: 10.3390/info15060341
Dexu Meng, Guangzhe Zhao, Feihu Yan
As autonomous driving technology advances, the imperative of ensuring pedestrian traffic safety becomes increasingly prominent within the design framework of autonomous driving systems. Pedestrian trajectory prediction stands out as a pivotal technology aiming to address this challenge by striving to precisely forecast pedestrians’ future trajectories, thereby enabling autonomous driving systems to execute timely and accurate decisions. However, the prevailing state-of-the-art models often rely on intricate structures and a substantial number of parameters, posing challenges in meeting the imperative demand for lightweight models within autonomous driving systems. To address these challenges, we introduce Social Spatio-Temporal Graph Multi-Layer Perceptron (Social-STGMLP), a novel approach that utilizes solely fully connected layers and layer normalization. Social-STGMLP operates by abstracting pedestrian trajectories into a spatio-temporal graph, facilitating the modeling of both the spatial social interaction among pedestrians and the temporal motion tendency inherent to pedestrians themselves. Our evaluation of Social-STGMLP reveals its superiority over the reference method, as evidenced by experimental results indicating reductions of 5% in average displacement error (ADE) and 17% in final displacement error (FDE).
随着自动驾驶技术的发展,在自动驾驶系统的设计框架中,确保行人交通安全的必要性日益突出。行人轨迹预测是应对这一挑战的关键技术,它致力于精确预测行人的未来轨迹,从而使自动驾驶系统能够执行及时、准确的决策。然而,目前最先进的模型往往依赖于复杂的结构和大量参数,这给满足自动驾驶系统对轻量级模型的迫切需求带来了挑战。为了应对这些挑战,我们引入了社交时空图多层感知器(Social-STGMLP),这是一种仅利用全连接层和层规范化的新方法。Social-STGMLP 通过将行人轨迹抽象为时空图来运行,从而便于对行人之间的空间社交互动和行人自身固有的时间运动趋势进行建模。我们对 Social-STGMLP 的评估结果表明,它优于参考方法,实验结果表明平均位移误差(ADE)降低了 5%,最终位移误差(FDE)降低了 17%。
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引用次数: 0
Understanding Local Government Cybersecurity Policy: A Concept Map and Framework 了解地方政府网络安全政策:概念图和框架
Pub Date : 2024-06-10 DOI: 10.3390/info15060342
Sk Tahsin Hossain, Tan Yigitcanlar, Kien Nguyen, Yue Xu
Cybersecurity is a crucial concern for local governments as they serve as the primary interface between public and government services, managing sensitive data and critical infrastructure. While technical safeguards are integral to cybersecurity, the role of a well-structured policy is equally important as it provides structured guidance to translate technical requirements into actionable protocols. This study reviews local governments’ cybersecurity policies to provide a comprehensive assessment of how these policies align with the National Institute of Standards and Technology’s Cybersecurity Framework 2.0, which is a widely adopted and commonly used cybersecurity assessment framework. This review offers local governments a mirror to reflect on their cybersecurity stance, identifying potential vulnerabilities and areas needing urgent attention. This study further extends the development of a cybersecurity policy framework, which local governments can use as a strategic tool. It provides valuable information on crucial cybersecurity elements that local governments must incorporate into their policies to protect confidential data and critical infrastructure.
网络安全对于地方政府来说是一个至关重要的问题,因为地方政府是公共服务与政府服务之间的主要接口,管理着敏感数据和关键基础设施。虽然技术保障措施是网络安全不可或缺的一部分,但结构合理的政策的作用同样重要,因为它提供了结构化的指导,将技术要求转化为可操作的协议。本研究对地方政府的网络安全政策进行了审查,以全面评估这些政策如何与美国国家标准与技术研究院的网络安全框架 2.0 保持一致,该框架是一个被广泛采用且常用的网络安全评估框架。这次审查为地方政府提供了一面镜子,让它们反思自己的网络安全立场,找出潜在的薄弱环节和需要紧急关注的领域。本研究进一步扩展了网络安全政策框架的发展,地方政府可将其作为战略工具使用。它就地方政府必须纳入其政策以保护机密数据和重要基础设施的关键网络安全要素提供了有价值的信息。
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引用次数: 0
Genre Classification of Books in Russian with Stylometric Features: A Case Study 利用文体特征对俄语书籍进行体裁分类:案例研究
Pub Date : 2024-06-07 DOI: 10.3390/info15060340
N. Vanetik, Margarita Tiamanova, Genady Kogan, Marina Litvak
Within the literary domain, genres function as fundamental organizing concepts that provide readers, publishers, and academics with a unified framework. Genres are discrete categories that are distinguished by common stylistic, thematic, and structural components. They facilitate the categorization process and improve our understanding of a wide range of literary expressions. In this paper, we introduce a new dataset for genre classification of Russian books, covering 11 literary genres. We also perform dataset evaluation for the tasks of binary and multi-class genre identification. Through extensive experimentation and analysis, we explore the effectiveness of different text representations, including stylometric features, in genre classification. Our findings clarify the challenges present in classifying Russian literature by genre, revealing insights into the performance of different models across various genres. Furthermore, we address several research questions regarding the difficulty of multi-class classification compared to binary classification, and the impact of stylometric features on classification accuracy.
在文学领域,流派作为基本的组织概念,为读者、出版商和学术界提供了一个统一的框架。流派是离散的类别,由共同的文体、主题和结构成分区分开来。它们促进了分类过程,提高了我们对各种文学表现形式的理解。在本文中,我们介绍了一个新的俄罗斯图书流派分类数据集,涵盖 11 种文学流派。我们还针对二元和多类体裁识别任务进行了数据集评估。通过广泛的实验和分析,我们探索了不同文本表征(包括文体特征)在体裁分类中的有效性。我们的研究结果阐明了俄罗斯文学体裁分类所面临的挑战,揭示了不同模型在不同体裁中的表现。此外,我们还解决了多个研究问题,包括多类分类与二元分类相比的难度,以及文体特征对分类准确性的影响。
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引用次数: 0
Light-Field Image Compression Based on a Two-Dimensional Prediction Coding Structure 基于二维预测编码结构的光场图像压缩
Pub Date : 2024-06-07 DOI: 10.3390/info15060339
Jianrui Shao, Enjian Bai, Xueqin Jiang, Yun Wu
Light-field images (LFIs) are gaining increased attention within the field of 3D imaging, virtual reality, and digital refocusing, owing to their wealth of spatial and angular information. The escalating volume of LFI data poses challenges in terms of storage and transmission. To address this problem, this paper introduces an MSHPE (most-similar hierarchical prediction encoding) structure based on light-field multi-view images. By systematically exploring the similarities among sub-views, our structure obtains residual views through the subtraction of the encoded view from its corresponding reference view. Regarding the encoding process, this paper implements a new encoding scheme to process all residual views, achieving lossless compression. High-efficiency video coding (HEVC) is applied to encode select residual views, thereby achieving lossy compression. Furthermore, the introduced structure is conceptualized as a layered coding scheme, enabling progressive transmission and showing good random access performance. Experimental results demonstrate the superior compression performance attained by encoding residual views according to the proposed structure, outperforming alternative structures. Notably, when HEVC is employed for encoding residual views, significant bit savings are observed compared to the direct encoding of original views. The final restored view presents better detail quality, reinforcing the effectiveness of this approach.
光场图像(LFIs)因其丰富的空间和角度信息,在三维成像、虚拟现实和数字再聚焦领域日益受到关注。光场成像数据量的不断增加给存储和传输带来了挑战。为解决这一问题,本文介绍了一种基于光场多视角图像的 MSHPE(最相似分层预测编码)结构。通过系统地探索子视图之间的相似性,我们的结构通过从相应的参考视图中减去编码视图来获得剩余视图。在编码过程中,本文采用了一种新的编码方案来处理所有残余视图,从而实现无损压缩。高效视频编码(HEVC)用于对选定的残留视图进行编码,从而实现有损压缩。此外,引入的结构被概念化为分层编码方案,可实现渐进式传输,并显示出良好的随机存取性能。实验结果表明,根据所提出的结构对残余视图进行编码,可获得优于其他结构的压缩性能。值得注意的是,当采用 HEVC 对残留视图进行编码时,与直接对原始视图进行编码相比,可显著节省比特。最终还原的视图呈现出更好的细节质量,增强了这种方法的有效性。
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引用次数: 0
The Impact of Operant Resources on the Task Performance of Learners via Knowledge Management Process 操作性资源对学习者通过知识管理过程完成任务的影响
Pub Date : 2024-06-07 DOI: 10.3390/info15060338
Quoc Trung Pham, Canh Khiem Le, Dinh Thai Linh Huynh, Sanjay Misra
In human resource management, training is considered one of the most effective ways to improve employees’ task performance. However, the effectiveness of training depends mostly on the resources and effort of learners, especially the operant resources. This study investigates the influence of operant resources on individual task performance within the framework of knowledge management. Building on existing research, a quantitative model was developed and tested using data from 296 Vietnamese managers and senior employees. Data analysis employed SPSS 21 and AMOS 24 software. The findings provide strong support for all nine proposed hypotheses, demonstrating a positive impact of operant resources on both learner behavior and subsequent task performance. The research highlights the significant role of individual operant resources in enhancing learning outcomes and employee effectiveness. Managerial implications are derived from these results, offering practical guidance for businesses to improve training activities and ultimately boost employee task performance.
在人力资源管理中,培训被认为是提高员工工作绩效的最有效方法之一。然而,培训的效果主要取决于学习者的资源和努力,尤其是操作性资源。本研究在知识管理的框架内探讨操作性资源对个人任务绩效的影响。在现有研究的基础上,利用 296 名越南经理和高级雇员的数据,建立并测试了一个定量模型。数据分析采用了 SPSS 21 和 AMOS 24 软件。研究结果表明,操作性资源对学习者的行为和随后的任务绩效都有积极影响。研究强调了个人操作性资源在提高学习效果和员工效率方面的重要作用。从这些结果中得出的管理意义,为企业改进培训活动并最终提高员工任务绩效提供了实用指导。
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引用次数: 0
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