Showing 281 - 300 results of 608 for search 'computing and networking point optimization', query time: 0.19s Refine Results
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    Enhancing Image Classification through Exploitation of Hue Cyclicity in Convolutional Neural Networks by Jiatao Kuang, Teryn Cha, Sung-Hyuk Cha

    Published 2024-05-01
    “…This research provides insights into optimizing CNN-based image classification by integrating hue cyclicity, thereby advancing the capabilities of computer vision systems.…”
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  5. 285

    An Accurate Book Spine Detection Network Based on Improved Oriented R-CNN by Haibo Ma, Chaobo Wang, Ang Li, Aide Xu, Dong Han

    Published 2024-12-01
    “…To further optimize the anchor box design, we introduce an adaptive initial cluster center selection method for K-median clustering. …”
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  6. 286

    Improving the Performance of Electrotactile Brain–Computer Interface Using Machine Learning Methods on Multi-Channel Features of Somatosensory Event-Related Potentials by Marija Novičić, Olivera Djordjević, Vera Miler-Jerković, Ljubica Konstantinović, Andrej M. Savić

    Published 2024-12-01
    “…Traditional tactile brain–computer interfaces (BCIs), particularly those based on steady-state somatosensory–evoked potentials, face challenges such as lower accuracy, reduced bit rates, and the need for spatially distant stimulation points. …”
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    Physical Information Neural Network-Based Seepage Behavior Analysis of Earth and Rock Dams by XUE binghan, HUANG zhenhua, LEI Jianwei, FANG Hongyuan

    Published 2025-01-01
    “…For the homogeneous case, the computed seepage exit point (8.401 m) shows merely 3.7% relative error relative to experimental measurements, representing a significant accuracy improvement (>45%) over literature-reported values. …”
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  13. 293

    Neural ODE-Based Dynamic Modeling and Predictive Control for Power Regulation in Distribution Networks by Libin Wen, Jinji Xi, Hong Hu, Li Xiong, Guangling Lu, Tannan Xiao

    Published 2025-06-01
    “…NODEs are employed to develop a data-driven, continuous-time dynamic model capturing the aggregate relationship between the voltage at the point of common coupling (PCC) and the network’s power consumption, using only PCC measurements. …”
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    AI-driven genetic algorithm-optimized lung segmentation for precision in early lung cancer diagnosis by Yahia Said, Riadh Ayachi, Mouna Afif, Taoufik Saidani, Saleh T. Alanezi, Oumaima Saidani, Ali Delham Algarni

    Published 2025-07-01
    “…This substantial reduction in model size and computational cost makes the system highly suitable for resource-constrained environments, including point-of-care diagnostic devices. …”
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    Distance-Aware Beamforming for Multiuser Secure Communication Systems by Nasrin Ravansalar, Vahid Pourahmadi

    Published 2020-06-01
    “…This condition makes the problem non-convex and so we propose an approximate solution for solving this optimization problem. Simulation results show the performance of the proposed scheme in a particular network setting.…”
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  18. 298

    Lightweight graph convolutional network with multi-attention mechanisms for intelligent action recognition in online physical education by Yuhao You

    Published 2025-07-01
    “…The model is trained end-to-end on 3D skeleton sequences and optimized for real-time efficiency. The computational cost is evaluated in terms of giga floating-point operations (GFLOPs), with the proposed model requiring only 6.2 GFLOPs per inference, over 60% less than the baseline ST-GCN. …”
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    Physics Informed Neural Networks for Modeling Large-Scale Wind Driven Ocean Circulation by Boohyun An, Mohammad Z. Shanti, Chan Yeob Yeun, Ernesto Damiani, Sungmun Lee, Tae-Yeon Kim

    Published 2025-01-01
    “…The architecture of the neural network was systematically optimized through hyperparameter tuning, including the selection of optimizers, activation functions, network configurations, and learning rate schedulers to ensure stable convergence and minimize fluctuations in training loss. …”
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