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Light Field Angular Super-Resolution via Spatial-Angular Correlation Extracted by Deformable Convolutional Network
Published 2025-02-01“…To solve this problem, we introduce Deformable Convolutional Network (DCN), which adaptively changes the position of limited sampling point using offsets, so as to extract SAC from distant pixels. …”
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Graph convolutional network as a fast statistical emulator for numerical ice sheet modeling
Published 2025-01-01Get full text
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Adaptive Weighted CNN Features Integration for Correlation Filter Tracking
Published 2019-01-01Get full text
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Research on rolling bearing compound fault diagnosis based on AMOMCKD and convolutional neural network
Published 2025-04-01Get full text
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Future variation and uncertainty source decomposition in deep learning bias-corrected CMIP6 global extreme precipitation historical simulation
Published 2025-07-01“…This study explores a bias correction approach based on convolutional neural networks (CNNs) to improve the accuracy of Expert Team on Climate Change Detection and Indices (ETCCDI) extreme precipitation indices calculated from the Coupled Model Intercomparison Project Phase Six (CMIP6) daily predictions. …”
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Identification of line status changes using phasor measurements through deep learning networks
Published 2021-03-01“…To consider the problem of detecting changes in a power grid topology that occurs as a result of the power line outage / turning on. …”
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APPLICATION OF NON-TEST METHODS FOR CHANEL ESTIMATION
Published 2018-08-01“…Approaches for solving problems of non-test adaptive signals correction and channel state estimation in serial data communication systems using convolutional encoder are proposed. …”
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Urban Water-Energy consumption Prediction Influenced by Climate Change utilizing an innovative deep learning method
Published 2024-12-01“…The results show a strong correlation between the simulated and observed data, with a correlation coefficient of 0.87 for water consumption and 0.91 for energy consumption, indicating a high level of agreement between the simulated and real-world data. …”
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Improved Convolutional Neural Networks for Course Teaching Quality Assessment
Published 2022-01-01“…The cultivation of innovative talents is closely related to the quality of course teaching, and there is a correlation between facial expressions and the effectiveness of classroom teaching. …”
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Integrating Graph Convolution and Attention Mechanism for Kinase Inhibition Prediction
Published 2025-07-01“…Kinase is an enzyme responsible for cell signaling and other complex processes. Mutations or changes in kinase can cause cancer and other diseases in humans, including leukemia, neuroblastomas, glioblastomas, and more. …”
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Improved Hierarchical Convolutional Features for Robust Visual Object Tracking
Published 2021-01-01“…Thus, to improve the tracking performance and robustness, an improved hierarchical convolutional features model is proposed into a correlation filter framework for visual object tracking. …”
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Invertible Attention-Guided Adaptive Convolution and Dual-Domain Transformer for Pansharpening
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Comparative convolutional neural networks for perovskite solar cell PCE predictions
Published 2025-08-01“…The approach predicts relative changes in PCE by comparing images of the same device in different states (e.g., before and after encapsulation) or against a reference image. …”
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Graph neural network driven traffic prediction technology:review and challenge
Published 2021-12-01“…With the rapid development of Internet of things and artificial intelligence technology, accurate analysis and prediction of traffic data have become the primary target of intelligent transportations.In recent years, the method of traffic forecasting has gradually changed from the classical model-driven type to the data-driven type.However, how to effectively analyze the spatial-temporal characteristics of road networks through big data is one of the key issues in the traffic prediction process.Spatiotemporal big data analysis is a powerful tool for the traffic prediction.The traffic network can be modeled as a graph network, while the deep learning method can be extended on the graph network.Utilizing graph neural networks, we can build the spatiotemporal prediction model, and obtain the spatial-temporal correlation between the sensor nodes in road networks effectively by using graph convolution, which can significantly improve the accuracy of traffic prediction models.The traffic forecasting technology driven by graph neural networks was explored, and two kinds of traffic prediction models based on the analysis of deep spatial-temporal characteristics were extracted.The actual cases were analyzed and evaluated to discuss the technical advantages and key challenges of graph neural networks in the traffic prediction.The potential issues of graph neural network driven prediction mechanisms were also excavated.…”
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Graph neural network driven traffic prediction technology:review and challenge
Published 2021-12-01“…With the rapid development of Internet of things and artificial intelligence technology, accurate analysis and prediction of traffic data have become the primary target of intelligent transportations.In recent years, the method of traffic forecasting has gradually changed from the classical model-driven type to the data-driven type.However, how to effectively analyze the spatial-temporal characteristics of road networks through big data is one of the key issues in the traffic prediction process.Spatiotemporal big data analysis is a powerful tool for the traffic prediction.The traffic network can be modeled as a graph network, while the deep learning method can be extended on the graph network.Utilizing graph neural networks, we can build the spatiotemporal prediction model, and obtain the spatial-temporal correlation between the sensor nodes in road networks effectively by using graph convolution, which can significantly improve the accuracy of traffic prediction models.The traffic forecasting technology driven by graph neural networks was explored, and two kinds of traffic prediction models based on the analysis of deep spatial-temporal characteristics were extracted.The actual cases were analyzed and evaluated to discuss the technical advantages and key challenges of graph neural networks in the traffic prediction.The potential issues of graph neural network driven prediction mechanisms were also excavated.…”
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STFGCN: Spatio-Temporal Fusion Graph Convolutional Networks for Subway Traffic Prediction
Published 2024-01-01“…Furthermore, we introduce trend similarity-aware attention to capture the evolutionary trends of time series and adopt a dynamic correlation graph convolutional network to dynamically adjust spatial correlation strengths based on changes in different time periods. …”
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Construction of a new class of (2k, k, 1) convolutional codes
Published 2014-06-01Get full text
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Multistation Wind Speed Forecasting Based on Dynamic Spatiotemporal Graph Convolutional Networks
Published 2025-01-01“…However, spatiotemporal correlations of wind speed are dynamically influenced by weather conditions, seasonal variations, and diurnal fluctuations, resulting in constantly changing spatiotemporal patterns. …”
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Temperature Forecasting via Convolutional Recurrent Neural Networks Based on Time-Series Data
Published 2020-01-01“…The model can learn the time correlation and space correlation of temperature changes from historical data through neural networks. …”
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