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15 pages, 1649 KiB  
Article
Exploring the Plastic Surgery Related Experiences, Needs, Confidence and Knowledge Gaps of Foundation Year Doctors
by Natalia Gili
Int. Med. Educ. 2024, 3(4), 434-448; https://doi.org/10.3390/ime3040033 (registering DOI) - 28 Oct 2024
Abstract
Plastic surgery is a diverse speciality relevant to non-plastic doctors, as plastic surgeons frequently collaborate with other specialities and its basic principles are transferable across multiple specialities. Foundation-year (FY) doctors are the most junior doctors in the workforce and may need to apply [...] Read more.
Plastic surgery is a diverse speciality relevant to non-plastic doctors, as plastic surgeons frequently collaborate with other specialities and its basic principles are transferable across multiple specialities. Foundation-year (FY) doctors are the most junior doctors in the workforce and may need to apply plastic surgery knowledge and principles during their clinical duties. Despite this, formal plastic surgery education for junior doctors is limited, resulting in an educational gap. This study gains insight into the perceived confidence, knowledge gaps, skills, educational activities and needs related to plastic surgery. This qualitative study uses phenomenology through semi-structured individual interviews with eight FY doctors. Data was analysed using reflexive thematic analysis. This study revealed that plastic surgery features diversely in the work life of FYs, who often manage patients with a lack of knowledge and confidence, influencing patient care and FY wellbeing. FYs primarily acquire knowledge and confidence through experiential learning and individual initiative. A need for curriculum improvements was expressed. FYs are an essential part of the workforce who exhibited educational gaps and a lack of confidence in plastic surgery knowledge. We suggest improved integration of plastic surgery into the FY curriculum for improved FY knowledge and patient care. Full article
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12 pages, 2304 KiB  
Article
L-GraphSAGE: A Graph Neural Network-Based Approach for IoV Application Encrypted Traffic Identification
by Shihe Zhang, Ruidong Chen, Jingxue Chen, Yukun Zhu, Manyuan Hua, Jiaying Yuan and Fenghua Xu
Electronics 2024, 13(21), 4222; https://doi.org/10.3390/electronics13214222 (registering DOI) - 28 Oct 2024
Abstract
Recently, with a crucial role in developing smart transportation systems, the Internet of Vehicles (IoV), with all kinds of in-vehicle devices, has undergone significant advancement for autonomous driving, in-vehicle infotainment, etc. With the development of these IoV devices, the complexity and volume of [...] Read more.
Recently, with a crucial role in developing smart transportation systems, the Internet of Vehicles (IoV), with all kinds of in-vehicle devices, has undergone significant advancement for autonomous driving, in-vehicle infotainment, etc. With the development of these IoV devices, the complexity and volume of in-vehicle data flows within information communication have increased dramatically. To adapt these changes to secure and smart transportation, encrypted communication realization, real-time decision-making, traffic management enhancement, and overall transportation efficiency improvement are essential. However, the security of a traffic system under encrypted communication is still inadequate, as attackers can identify in-vehicle devices through fingerprinting attacks, causing potential privacy breaches. Nevertheless, existing IoV traffic application models for encrypted traffic identification are weak and often exhibit poor generalization in some dynamic scenarios, where route switching and TCP congestion occur frequently. In this paper, we propose LineGraph-GraphSAGE (L-GraphSAGE), a graph neural network (GNN) model designed to improve the generalization ability of the IoV application of traffic identification in these dynamic scenarios. L-GraphSAGE utilizes node features, including text attributes, node context information, and node degree, to learn hyperparameters that can be transferred to unknown nodes. Our model demonstrates promising results in both UNSW Sydney public datasets and real-world environments. In public IoV datasets, we achieve an accuracy of 94.23%(↑0.23%). Furthermore, our model achieves an F1 change rate of 0.20%(↑96.92%) in α train, β infer, and 0.60%(↑75.00%) in β train, α infer when evaluated on a dataset consisting of five classes of data collected from real-world environments. These results highlight the effectiveness of our proposed approach in enhancing IoV application identification in dynamic network scenarios. Full article
(This article belongs to the Special Issue Graph-Based Learning Methods in Intelligent Transportation Systems)
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21 pages, 7085 KiB  
Article
Space-Based Mapping of Pre- and Post-Hurricane Mangrove Canopy Heights Using Machine Learning with Multi-Sensor Observations
by Boya Zhang, Daniel Gann, Shimon Wdowinski, Chaohao Lin, Erin Hestir, Lukas Lamb-Wotton, Khandker S. Ishtiaq, Kaleb Smith and Yuepeng Li
Remote Sens. 2024, 16(21), 3992; https://doi.org/10.3390/rs16213992 (registering DOI) - 28 Oct 2024
Abstract
Coastal mangrove forests provide numerous ecosystem services, which can be disrupted by natural disturbances, mainly hurricanes. Canopy height (CH) is a key parameter for estimating carbon storage. Airborne Light Detection and Ranging (LiDAR) is widely viewed as the most accurate method for estimating [...] Read more.
Coastal mangrove forests provide numerous ecosystem services, which can be disrupted by natural disturbances, mainly hurricanes. Canopy height (CH) is a key parameter for estimating carbon storage. Airborne Light Detection and Ranging (LiDAR) is widely viewed as the most accurate method for estimating CH but data are often limited in spatial coverage and are not readily available for rapid impact assessment after hurricane events. Hence, we evaluated the use of systematically acquired space-based Synthetic Aperture Radar (SAR) and optical observations with airborne LiDAR to predict CH across expansive mangrove areas in South Florida that were severely impacted by Category 3 Hurricane Irma in 2017. We used pre- and post-Irma LiDAR-derived canopy height models (CHMs) to train Random Forest regression models that used features of Sentinel-1 SAR time series, Landsat-8 optical, and classified mangrove maps. We evaluated (1) spatial transfer learning to predict regional CH for both time periods and (2) temporal transfer learning coupled with species-specific error correction models to predict post-Irma CH using models trained by pre-Irma data. Model performance of SAR and optical data differed with time period and across height classes. For spatial transfer, SAR data models achieved higher accuracy than optical models for post-Irma, while the opposite was the case for the pre-Irma period. For temporal transfer, SAR models were more accurate for tall trees (>10 m) but optical models were more accurate for short trees. By fusing data of both sensors, spatial and temporal transfer learning achieved the root mean square errors (RMSEs) of 1.9 m and 1.7 m, respectively, for absolute CH. Predicted CH losses were comparable with LiDAR-derived reference values across height and species classes. Spatial and temporal transfer learning techniques applied to readily available spaceborne satellite data can enable conservation managers to assess the impacts of disturbances on regional coastal ecosystems efficiently and within a practical timeframe after a disturbance event. Full article
(This article belongs to the Section Forest Remote Sensing)
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17 pages, 655 KiB  
Article
A Cross-Lingual Media Profiling Model for Detecting Factuality and Political Bias
by Chichen Lin, Yongbin Wang, Chenxin Li, Weijian Fan, Junhui Xu and Qi Wang
Appl. Sci. 2024, 14(21), 9837; https://doi.org/10.3390/app14219837 (registering DOI) - 28 Oct 2024
Abstract
Media profiling offers valuable insights to enhance the objectivity and reliability of news coverage by providing comprehensive analysis, but the diversity in languages posed significant challenges to our identification of factuality and political bias of non-English sources. The limitation of existing media analysis [...] Read more.
Media profiling offers valuable insights to enhance the objectivity and reliability of news coverage by providing comprehensive analysis, but the diversity in languages posed significant challenges to our identification of factuality and political bias of non-English sources. The limitation of existing media analysis research is its concentration on a singular high-resource language, and it hardly extends to languages beyond English. To address this, we introduce xMP, a dataset for zero-shot cross-lingual media profiling tasks. xMP’s cross-lingual test set encompasses 34 non-English languages and 18 language families, extending media profiling beyond English resources and allowing us to assess cross-lingual media profiling model performance. Additionally, we propose a method, named R-KAT, to enhance the model’s zero-shot cross-lingual transfer learning capability by building virtual multilingual embedding. Our experiments illustrate that our method improves the transferability of models in cross-lingual media profiling tasks. Additionally, we further discuss the performance of our method for different target languages. Our dataset and code are publicly available. Full article
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15 pages, 1886 KiB  
Article
Predicting the Pathway Involvement of All Pathway and Associated Compound Entries Defined in the Kyoto Encyclopedia of Genes and Genomes
by Erik D. Huckvale and Hunter N. B. Moseley
Metabolites 2024, 14(11), 582; https://doi.org/10.3390/metabo14110582 (registering DOI) - 27 Oct 2024
Abstract
Background/Objectives: Predicting the biochemical pathway involvement of a compound could facilitate the interpretation of biological and biomedical research. Prior prediction approaches have largely focused on metabolism, training machine learning models to solely predict based on metabolic pathways. However, there are many other [...] Read more.
Background/Objectives: Predicting the biochemical pathway involvement of a compound could facilitate the interpretation of biological and biomedical research. Prior prediction approaches have largely focused on metabolism, training machine learning models to solely predict based on metabolic pathways. However, there are many other types of pathways in cells and organisms that are of interest to biologists. Methods: While several publications have made use of the metabolites and metabolic pathways available in the Kyoto Encyclopedia of Genes and Genomes (KEGG), we downloaded all the compound entries with pathway annotations available in the KEGG. From these data, we constructed a dataset where each entry contained features representing compounds combined with features representing pathways, followed by a binary label indicating whether the given compound is associated with the given pathway. We trained multi-layer perceptron binary classifiers on variations of this dataset. Results: The models trained on 6485 KEGG compounds and 502 pathways scored an overall mean Matthews correlation coefficient (MCC) performance of 0.847, a median MCC of 0.848, and a standard deviation of 0.0098. Conclusions: This performance on all 502 KEGG pathways represents a roughly 6% improvement over the performance of models trained on only the 184 KEGG metabolic pathways, which had a mean MCC of 0.800 and a standard deviation of 0.021. These results demonstrate the capability to effectively predict biochemical pathways in general, in addition to those specifically related to metabolism. Moreover, the improvement in the performance demonstrates additional transfer learning with the inclusion of non-metabolic pathways. Full article
(This article belongs to the Special Issue Machine Learning Applications in Metabolomics Analysis)
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15 pages, 10196 KiB  
Article
A Force Control Method Integrating Human Skills for Complex Surface Finishing
by Kang Min, Fenglei Ni, Zhaoyang Chen and Hong Liu
Machines 2024, 12(11), 756; https://doi.org/10.3390/machines12110756 (registering DOI) - 26 Oct 2024
Abstract
Force control is one of the core modules for surface finishing such as grinding, polishing and sanding. However, the current force control methods based on human skills lack in-depth analysis of data patterns or are only applicable to flat surfaces. In addition, surface [...] Read more.
Force control is one of the core modules for surface finishing such as grinding, polishing and sanding. However, the current force control methods based on human skills lack in-depth analysis of data patterns or are only applicable to flat surfaces. In addition, surface finishing is mainly performed by hand, resulting in low processing efficiency and poor product consistency. Therefore, this paper proposes a force control method that incorporates human skills to achieve relatively accurate force skill transfer and complex surface finishing. Firstly, human skills consisting of the force skill and the motion skill are learned. The force skill is used to generate the desired force. Then, a series of discrete poses are obtained based on human demonstration and combined with the motion skill to generate the desired trajectory. Finally, a computed-torque impedance control method is proposed to achieve relatively accurate force skill transfer and complex surface finishing by incorporating the desired trajectory and the desired force. The experiments are conducted on a platform composed of a 7-DOF collaborative robot manipulator from Franka Emika and a complex violin surface. The results demonstrate that the proposed force control method can achieve relatively accurate force skill transfer and improve the surface quality of the workpiece. Full article
(This article belongs to the Section Advanced Manufacturing)
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24 pages, 11586 KiB  
Article
Integrating Thermal Infrared Imaging and Weather Data for Short-Term Prediction of Building Envelope Thermal Appearance
by Nikolay Golosov and Guido Cervone
Remote Sens. 2024, 16(21), 3981; https://doi.org/10.3390/rs16213981 (registering DOI) - 26 Oct 2024
Abstract
This study presents a novel deep-learning framework for predicting the thermal appearance of building envelopes under varying weather conditions based on a new dataset collected using a thermal infrared camera at 10 min intervals over a one-and-a-half-year period. Unlike existing studies that rely [...] Read more.
This study presents a novel deep-learning framework for predicting the thermal appearance of building envelopes under varying weather conditions based on a new dataset collected using a thermal infrared camera at 10 min intervals over a one-and-a-half-year period. Unlike existing studies that rely on simulated data or physical models that do not always accurately reflect the complex heat transfer processes in real buildings, we have collected a large dataset showing how a building behaves under different climatic conditions. We propose a novel deep-learning approach that integrates weather data and thermal imagery to predict the temperature distribution on the building façade for the next 24 and 48 h. The model uses a state-of-the-art recurrent neural network architecture, PredRNN V2, with an action conditioning mechanism to incorporate weather forecasting data into the prediction process. We evaluate this approach in terms of average accuracy, prediction accuracy in specific regions, and visual-perceptual performance of the images. The proposed framework achieves a prediction accuracy of 1.5 °C (root mean square error—RMSE) for the 24 h prediction and 2.04 °C (RMSE) for the 48 h prediction, outperforming baseline models in terms of temperature prediction accuracy and structural similarity of the predicted images. Full article
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49 pages, 1442 KiB  
Review
Theories and Methods for Indoor Positioning Systems: A Comparative Analysis, Challenges, and Prospective Measures
by Tesfay Gidey Hailu, Xiansheng Guo, Haonan Si, Lin Li and Yukun Zhang
Sensors 2024, 24(21), 6876; https://doi.org/10.3390/s24216876 (registering DOI) - 26 Oct 2024
Abstract
In the era of the Internet of Things (IoT), the demand for accurate positioning services has become increasingly critical, as location-based services (LBSs) depend on users’ location data to deliver contextual functionalities. While the Global Positioning System (GPS) is widely regarded as the [...] Read more.
In the era of the Internet of Things (IoT), the demand for accurate positioning services has become increasingly critical, as location-based services (LBSs) depend on users’ location data to deliver contextual functionalities. While the Global Positioning System (GPS) is widely regarded as the standard for outdoor localization due to its reliability and comprehensive coverage, its effectiveness in indoor positioning systems (IPSs) is limited by the inherent complexity of indoor environments. This paper examines the various measurement techniques and technological solutions that address the unique challenges posed by indoor environments. We specifically focus on three key aspects: (i) a comparative analysis of the different wireless technologies proposed for IPSs based on various methodologies, (ii) the challenges of IPSs, and (iii) forward-looking strategies for future research. In particular, we provide an in-depth evaluation of current IPSs, assessing them through multidimensional matrices that capture diverse architectural and design considerations, as well as evaluation metrics established in the literature. We further examine the challenges that impede the widespread deployment of IPSs and highlight the potential risk that these systems may not be recognized with a single, universally accepted standard method, unlike GPS for outdoor localization, which serves as the golden standard for positioning. Moreover, we outline several promising approaches that could address the existing challenges of IPSs. These include the application of transfer learning, feature engineering, data fusion, multisensory technologies, hybrid techniques, and ensemble learning methods, all of which hold the potential to significantly enhance the accuracy and reliability of IPSs. By leveraging these advanced methodologies, we aim to improve the overall performance of IPSs, thus paving the way for more robust and dependable LBSs in indoor environments. Full article
21 pages, 61088 KiB  
Article
CMDN: Pre-Trained Visual Representations Boost Adversarial Robustness for UAV Tracking
by Ruilong Yu, Zhewei Wu, Qihe Liu, Shijie Zhou, Min Gou and Bingchen Xiang
Drones 2024, 8(11), 607; https://doi.org/10.3390/drones8110607 - 23 Oct 2024
Abstract
Visual object tracking is widely adopted to unmanned aerial vehicle (UAV)-related applications, which demand reliable tracking precision and real-time performance. However, UAV trackers are highly susceptible to adversarial attacks, while research on developing effective adversarial defense methods for UAV tracking remains limited. To [...] Read more.
Visual object tracking is widely adopted to unmanned aerial vehicle (UAV)-related applications, which demand reliable tracking precision and real-time performance. However, UAV trackers are highly susceptible to adversarial attacks, while research on developing effective adversarial defense methods for UAV tracking remains limited. To tackle these challenges, we propose CMDN, a novel pre-processing defense network that effectively purifies adversarial perturbations by reconstructing video frames. This network learns robust visual representations from video frames, guided by meaningful features from both the search region and the template. Comprehensive experiments on three benchmarks demonstrate that CMDN is capable of enhancing a UAV tracker’s adversarial robustness in both adaptive and non-adaptive attack scenarios. In addition, CMDN maintains stable defense effectiveness when transferred to heterogeneous trackers. Real-world tests on the UAV platform also validate its reliable defense effectiveness and real-time performance, with CMDN achieving 27 FPS on NVIDIA Jetson Orin 16 GB (25 W mode). Full article
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22 pages, 27370 KiB  
Article
Dynamic Temporal Denoise Neural Network with Multi-Head Attention for Fault Diagnosis Under Noise Background
by Zhongzhi Li, Rong Fan, Jinyi Ma, Jianliang Ai and Yiqun Dong
Sensors 2024, 24(21), 6813; https://doi.org/10.3390/s24216813 - 23 Oct 2024
Abstract
Fault diagnosis plays a crucial role in maintaining the operational safety of mechanical systems. As intelligent data-driven approaches evolve, deep learning (DL) has emerged as a pivotal technique in fault diagnosis research. However, the collected vibrational signals from mechanical systems are usually corrupted [...] Read more.
Fault diagnosis plays a crucial role in maintaining the operational safety of mechanical systems. As intelligent data-driven approaches evolve, deep learning (DL) has emerged as a pivotal technique in fault diagnosis research. However, the collected vibrational signals from mechanical systems are usually corrupted by unrelated noises due to complicated transfer path modulations and component coupling. To solve the above problems, this paper proposed the dynamic temporal denoise neural network with multi-head attention (DTDNet). Firstly, this model transforms one-dimensional signals into two-dimensional tensors based on the periodic self-similarity of signals, employing multi-scale two-dimensional convolution kernels to extract signal features both within and across periods. Secondly, for the problem of lacking denoising structure in traditional convolutional neural networks, a temporal variable denoise (TVD) module with dynamic nonlinear processing is proposed to filter the noises. Lastly, a multi-head attention fusion (MAF) module is used to weight the denoted features of signals with different periods. Evaluation on two datasets, Case Western Reserve University bearing dataset (single sensor) and Real aircraft sensor dataset (multiple sensors), demonstrates that the DTDNet can reduce the useless noises in signals and achieve a remarkable improvement in classification performance compared with the state-of-the-art method. DTDNet provides a high-performance solution for potential noise that may occur in actual fault diagnosis tasks, which has important application value. Full article
(This article belongs to the Section Fault Diagnosis & Sensors)
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15 pages, 3239 KiB  
Article
Small-Sample Data Pricing Based on Data Augmentation and Meta-Learning
by Junxin Shen, Yi Yang and Fanghao Xiao
Electronics 2024, 13(21), 4150; https://doi.org/10.3390/electronics13214150 - 22 Oct 2024
Abstract
Data trading platforms play a crucial role in facilitating data circulation and promoting the sustainable allocation of data resources. Establishing a transparent, fair, and efficient pricing mechanism is key to ensuring the long-term stability and development of such platforms. However, these platforms face [...] Read more.
Data trading platforms play a crucial role in facilitating data circulation and promoting the sustainable allocation of data resources. Establishing a transparent, fair, and efficient pricing mechanism is key to ensuring the long-term stability and development of such platforms. However, these platforms face challenges in pricing due to the small sample problem, as traditional machine learning methods typically rely on large amounts of data. To address this issue, this paper proposes a data resource pricing model that combines WGAN-GP data augmentation and the Reptile algorithm. Data augmentation generates related datasets to increase sample size, enhancing the renewability of data resources, while meta-learning transfers knowledge across tasks, improving the model’s ability to quickly adapt to new tasks and efficiently utilize resources. Validation using actual trading data from the data trading platform shows that the proposed model accurately predicts data resource prices under small-sample conditions, outperforming other models. This study addresses the limitations of existing pricing methods in small-sample scenarios, providing a sustainable pricing solution for small-sample data resources and improving the accuracy and long-term stability of data pricing in the market. Full article
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17 pages, 2458 KiB  
Article
Data Augmentation Method Using Room Transfer Function for Monitoring of Domestic Activities
by Minhan Kim and Seokjin Lee
Appl. Sci. 2024, 14(21), 9644; https://doi.org/10.3390/app14219644 - 22 Oct 2024
Abstract
Monitoring domestic activities helps us to understand user behaviors in indoor environments, which has garnered interest as it aids in understanding human activities in context-aware computing. In the field of acoustics, this goal has been achieved through studies employing machine learning techniques, which [...] Read more.
Monitoring domestic activities helps us to understand user behaviors in indoor environments, which has garnered interest as it aids in understanding human activities in context-aware computing. In the field of acoustics, this goal has been achieved through studies employing machine learning techniques, which are widely used for classification tasks involving sound recognition and other objectives. Machine learning typically achieves better performance with large amounts of high-quality training data. Given the high cost of data collection, development datasets often suffer from imbalanced data or lack high-quality samples, leading to performance degradations in machine learning models. The present study aims to address this data issue through data augmentation techniques. Specifically, since the proposed method targets indoor activities in domestic activity detection, room transfer functions were used for data augmentation. The results show that the proposed method achieves a 0.59% improvement in the F1-Score (micro) from that of the baseline system for the development dataset. Additionally, test data including microphones that were not used during training achieved an F1-Score improvement of 0.78% over that of the baseline system. This demonstrates the enhanced model generalization performance of the proposed method on samples having different room transfer functions to those of the trained dataset. Full article
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22 pages, 15428 KiB  
Article
Towards Self-Conscious AI Using Deep ImageNet Models: Application for Blood Cell Classification
by Mohamad Abou Ali, Fadi Dornaika and Ignacio Arganda-Carreras
Mach. Learn. Knowl. Extr. 2024, 6(4), 2400-2421; https://doi.org/10.3390/make6040118 - 21 Oct 2024
Abstract
The exceptional performance of ImageNet competition winners in image classification has led AI researchers to repurpose these models for a whole range of tasks using transfer learning (TL). TL has been hailed for boosting performance, shortening learning time and reducing computational effort. Despite [...] Read more.
The exceptional performance of ImageNet competition winners in image classification has led AI researchers to repurpose these models for a whole range of tasks using transfer learning (TL). TL has been hailed for boosting performance, shortening learning time and reducing computational effort. Despite these benefits, issues such as data sparsity and the misrepresentation of classes can diminish these gains, occasionally leading to misleading TL accuracy scores. This research explores the innovative concept of endowing ImageNet models with a self-awareness that enables them to recognize their own accumulated knowledge and experience. Such self-awareness is expected to improve their adaptability in various domains. We conduct a case study using two different datasets, PBC and BCCD, which focus on blood cell classification. The PBC dataset provides high-resolution images with abundant data, while the BCCD dataset is hindered by limited data and inferior image quality. To compensate for these discrepancies, we use data augmentation for BCCD and undersampling for both datasets to achieve balance. Subsequent pre-processing generates datasets of different size and quality, all geared towards blood cell classification. We extend conventional evaluation tools with novel metrics—“accuracy difference” and “loss difference”—to detect overfitting or underfitting and evaluate their utility as potential indicators for learning behavior and promoting the self-confidence of ImageNet models. Our results show that these metrics effectively track learning progress and improve the reliability and overall performance of ImageNet models in new applications. This study highlights the transformative potential of turning ImageNet models into self-aware entities that significantly improve their robustness and efficiency in various AI tasks. This groundbreaking approach opens new perspectives for increasing the effectiveness of transfer learning in real-world AI implementations. Full article
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25 pages, 2595 KiB  
Article
Appearance-Based Gaze Estimation as a Benchmark for Eye Image Data Generation Methods
by Dmytro Katrychuk and Oleg V. Komogortsev
Appl. Sci. 2024, 14(20), 9586; https://doi.org/10.3390/app14209586 - 21 Oct 2024
Abstract
Data augmentation is commonly utilized to increase the size and diversity of training sets for deep learning tasks. In this study, we propose a novel application of an existing image generation approach in the domain of realistic eye images that leverages data collected [...] Read more.
Data augmentation is commonly utilized to increase the size and diversity of training sets for deep learning tasks. In this study, we propose a novel application of an existing image generation approach in the domain of realistic eye images that leverages data collected from 40 subjects. This hybrid method combines the benefits of precise control over the image content provided by 3D rendering, while introducing the previously lacking photorealism and diversity into synthetic images through neural style transfer. We prove its general efficacy as a data augmentation tool for appearance-based gaze estimation when generated data are mixed with a sparse train set of real images. It improved the results for 39 out of 40 subjects, with an 11.22% mean and a 19.75% maximum decrease in gaze estimation error, achieving similar metrics for train and held-out subjects. We release our data repository of eye images with gaze labels used in this work for public access. Full article
(This article belongs to the Special Issue Latest Research on Eye Tracking Applications)
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15 pages, 258 KiB  
Article
Politico-Administrative Culture and Public Service Reform in Post-Independence Kazakhstan
by Artan Karini
Adm. Sci. 2024, 14(10), 268; https://doi.org/10.3390/admsci14100268 - 21 Oct 2024
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Abstract
Classical organizational management literature draws clear parallels between organizational culture and climate and effective use of power and influence as key to successful policy implementation of reforms in public sector organizations. On the other hand, the public policy literature, in particular, policy transfer [...] Read more.
Classical organizational management literature draws clear parallels between organizational culture and climate and effective use of power and influence as key to successful policy implementation of reforms in public sector organizations. On the other hand, the public policy literature, in particular, policy transfer as a strand within policy studies, emphasizes the role of the national context, more specifically, ‘facilitators’ and ‘constraints’ of ‘‘politico-administrative culture” within the national context, as crucial to understanding processes of transfer, convergence, and diffusion of public policy. There is a plethora of studies by Western scholars of public management who have successfully utilized these theoretical underpinnings to study the effectiveness of public service reforms in mature policy environments such as the UK, the US, Australia, New Zealand, and others. However, the public policy and comparative public management literature only offers a limited number of case studies from developing, middle-/upper-middle countries, which rely on concepts of organizational management in addition to narratives on the impact of policy learning from global doctrines, such as Weberianism, New Public Management (NPM), and New Public Governance (NPG), and national politics, on the implementation of administrative reforms in those contexts. Kazakhstan, as a resource-affluent post-Soviet country and a bastion of modernization and ‘open government’ in Central Asia or the Commonwealth of Independent States (CIS) in the post-Soviet era is a case in point. Based on ethnographic research consisting of interviews with elite academics, civil servants, and think-tank activists, as well as reviews of OECD and government strategy reports in Astana, the findings point to a potential abatement of the impact of context constraints such as large power distance and collectivist behavior by context facilitators such as those surrounding the use of ‘trilingualism’ and public diplomacy towards reforms in Kazakhstan particularly in recent years. Full article
(This article belongs to the Special Issue Current Challenges in Strategy and Public Policy)
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