This work is licensed under the Creative Commons Attribution 4.0 International License.
Wachs, J.P., et al., Vision-based hand-gesture applications. Communications of the ACM, 2011. 54(2): p. 60-71.Search in Google Scholar
Ratcliffe, L. and S. Puthusserypady, Importance of Graphical User Interface in the design of P300 based Brain– Computer Interface systems. Computers in Biology and Medicine, 2020. 117: p. 103599.Search in Google Scholar
Gaouar, L., et al., HCIDL: Human-computer interface description language for multi-target, multimodal, plastic user interfaces. Future Computing and Informatics Journal, 2018. 3(1): p. 110-130.Search in Google Scholar
Mulfari, D., A. Celesti and M. Villari, A computer system architecture providing a user-friendly man machine interface for accessing assistive technology in cloud computing. Journal of Systems and Software, 2015. 100: p. 129-138.Search in Google Scholar
Messaoud, S., et al., Deep convolutional neural networks-based Hardware–Software on-chip system for computer vision application. Computers & Electrical Engineering, 2022. 98: p. 107671.Search in Google Scholar
Cárdenas-Sainz, B.A., et al., Integration and acceptance of Natural User Interfaces for interactive learning environments. International Journal of Child-Computer Interaction, 2022. 31: p. 100381.Search in Google Scholar
Moore, B.A. and J. Urakami, The impact of the physical and social embodiment of voice user interfaces on user distraction. International Journal of Human-Computer Studies, 2022. 161: p. 102784.Search in Google Scholar
Goodman-Deane, J., et al., A comparison of methods currently used in inclusive design. Applied Ergonomics, 2014. 45(4): p. 886-894.Search in Google Scholar
Ielegems, E., et al., ’Light up for all’ - Building Knowledge on Universal Design Through Direct User Contact in Design Workshops. Stud Health Technol Inform, 2021. 282: p. 102-119.Search in Google Scholar
Hurtienne, J., et al., Designing with Image Schemas: Resolving the Tension Between Innovation, Inclusion and Intuitive Use. Interacting with Computers, 2015. 27(3): p. 235-255.Search in Google Scholar
Abascal, J. and C. Nicolle, Moving towards inclusive design guidelines for socially and ethically aware HCI. Interacting with Computers, 2005. 17(5): p. 484-505.Search in Google Scholar
Langdon, P., U. Persad and P. John Clarkson, Developing a model of cognitive interaction for analytical inclusive design evaluation. Interacting with Computers, 2010. 22(6): p. 510-529.Search in Google Scholar
Yang, J., et al., Incidence and Cost of Sexual Violence in Iowa. American Journal of Preventive Medicine, 2014. 47(2): p. 198-202.Search in Google Scholar
Mulfari, D., A. Celesti and M. Villari, A computer system architecture providing a user-friendly man machine interface for accessing assistive technology in cloud computing. The Journal of systems and software, 2015. 100: p. 129-138.Search in Google Scholar
Alomari, H.W., et al., A User Interface (UI) and User eXperience (UX) evaluation framework for cyberlearning environments in computer science and software engineering education. Heliyon, 2020. 6(5): p. e03917.Search in Google Scholar
Yang, J. and R. Horie, An Improved Computer Interface Comprising a Recurrent Neural Network and a Natural User Interface. Procedia Computer Science, 2015. 60: p. 1386-1395.Search in Google Scholar
Yang, J., et al., Incidence and Cost of Sexual Violence in Iowa. American Journal of Preventive Medicine, 2014. 47(2): p. 198-202.Search in Google Scholar
Kastner, P. and T. Dogan, Eddy3D: A toolkit for decoupled outdoor thermal comfort simulations in urban areas. Building and Environment, 2022. 212: p. 108639.Search in Google Scholar
Maskarenj, M., B. Deroisy and S. Altomonte, A new tool and workflow for the simulation of the non-image forming effects of light. Energy and Buildings, 2022. 262: p. 112012.Search in Google Scholar
He, L., et al., Optimization-driven conceptual design of truss structures in a parametric modelling environment. Structures, 2022. 37: p. 469-482.Search in Google Scholar
Hsu, M., et al., An interactive geometry modeling and parametric design platform for isogeometric analysis. Computers & mathematics with applications (1987), 2015. 70(7): p. 1481-1500.Search in Google Scholar
Hughes, T.J.R., J.A. Evans and A. Reali, Finite element and NURBS approximations of eigenvalue, boundary-value, and initial-value problems. Computer Methods in Applied Mechanics and Engineering, 2014. 272: p. 290-320.Search in Google Scholar
Zhang, J., N. Liu and S. Wang, Generative design and performance optimization of residential buildings based on parametric algorithm. Energy and Buildings, 2021. 244: p. 111033.Search in Google Scholar
Herrema, A.J., et al., A framework for parametric design optimization using isogeometric analysis. Computer Methods in Applied Mechanics and Engineering, 2017. 316: p. 944-965.Search in Google Scholar
Esfahani, S.K., et al., Optimizing the solar energy capture of residential roof design in the southern hemisphere through Evolutionary Algorithm. Energy and Built Environment, 2021. 2(4): p. 406-424.Search in Google Scholar
Feng, K. and Z. Fan, A novel bidirectional LSTM network based on scale factor for atrial fibrillation signals classification. Biomedical Signal Processing and Control, 2022. 76: p. 103663.Search in Google Scholar
Augustyniak, Ł., T. Kajdanowicz and P. Kazienko, Comprehensive analysis of aspect term extraction methods using various text embeddings. Computer Speech & Language, 2021. 69: p. 101217.Search in Google Scholar
Lindemann, B., et al., A survey on anomaly detection for technical systems using LSTM networks. Computers in Industry, 2021. 131: p. 103498.Search in Google Scholar
Wang, J., et al., Weighted IForest and siamese GRU on small sample anomaly detection in healthcare. Computer Methods and Programs in Biomedicine, 2022. 218: p. 106706.Search in Google Scholar
ArunKumar, K.E., et al., Comparative analysis of Gated Recurrent Units (GRU), long Short-Term memory (LSTM) cells, autoregressive Integrated moving average (ARIMA), seasonal autoregressive Integrated moving average (SARIMA) for forecasting COVID-19 trends. Alexandria engineering journal, 2022. 61(10): p. 7585-7603.Search in Google Scholar
Busari, G.A. and D.H. Lim, Crude oil price prediction: A comparison between AdaBoost-LSTM and AdaBoost-GRU for improving forecasting performance. Computers & Chemical Engineering, 2021. 155: p. 107513.Search in Google Scholar
Wang, J., et al., Weighted IForest and siamese GRU on small sample anomaly detection in healthcare. Computer Methods and Programs in Biomedicine, 2022. 218: p. 106706.Search in Google Scholar
Shahid, F., A. Zameer and M. Muneeb, Predictions for COVID-19 with deep learning models of LSTM, GRU and Bi-LSTM. Chaos, Solitons & Fractals, 2020. 140: p. 110212.Search in Google Scholar
Ćalasan, M., S.H.E. Abdel Aleem and A.F. Zobaa, On the root mean square error (RMSE) calculation for parameter estimation of photovoltaic models: A novel exact analytical solution based on Lambert W function. Energy Conversion and Management, 2020. 210: p. 112716.Search in Google Scholar
Mohammadpourfard, M., et al., Cyber-Resilient Smart Cities: Detection of Malicious Attacks in Smart Grids. Sustainable Cities and Society, 2021. 75: p. 103116.Search in Google Scholar