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301
Color Night-Light Remote Sensing Image Fusion With Two-Branch Convolutional Neural Network
Published 2025-01-01“…To address the low-resolution limitation of NLRSI, this study proposes a multisource remote sensing image fusion framework based on the two-branch convolutional neural network (TbCNN), which fuses Landsat-8 and NPP/VIIRS data to generate high-resolution color night-light remote sensing imagery (CNLRSI). …”
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302
Using deep convolutional networks combined with signal processing techniques for accurate prediction of surface quality
Published 2025-02-01“…Abstract This paper uses deep learning techniques to present a framework for predicting and classifying surface roughness in milling parts. …”
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303
Grape Leaf Diseases Identification System Using Convolutional Neural Networks and LoRa Technology
Published 2022-01-01“…To achieve this objective, the framework utilizes a combination of on-site and simulation experiments along with different LoRa parameters and Convolutional Neural Model (CNN) model fine-tuning. …”
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304
Inferring free surface disturbance properties from Kelvin wakes using convolutional neural network
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305
Complementary performances of convolutional and capsule neural networks on classifying microfluidic images of dividing yeast cells.
Published 2021-01-01“…This work lays a useful framework for sophisticated deep-learning processing of microfluidic-based assays of yeast replicative aging.…”
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306
Lung Nodule Malignancy Prediction From Longitudinal CT Scans With Siamese Convolutional Attention Networks
Published 2020-01-01“…<italic>Goal:</italic> We propose a convolutional attention-based network that allows for use of pre-trained 2-D convolutional feature extractors and is extendable to multi-time-point classification in a Siamese structure. …”
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307
Employing convolutional neural networks and explainable artificial intelligence for the detection of seizures from electroencephalogram signal
Published 2024-12-01“…Evaluation criteria like specificity and accuracy are used to assess the models' performance. This framework's objective is to create simple seizure detection systems that assist early epilepsy patient identification and individualized treatment plans. …”
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308
Improving Performance of the Convolutional Neural Networks for Electricity Theft Detection by using Cheetah Optimization Algorithm
Published 2022-12-01“…Today, one of the most widely used methods is convolutional neural networks (CNNs). These networks contain a large number of hyper-parameters. …”
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309
Enhancing Brain Tumor Detection Through Custom Convolutional Neural Networks and Interpretability-Driven Analysis
Published 2024-10-01“…This approach contributes a highly accurate and interpretable framework for brain tumor detection, with the potential to significantly enhance diagnostic accuracy and personalized treatment planning in neuro-oncology.…”
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310
Improved convolutional neural network for precise exercise posture recognition and intelligent health indicator prediction
Published 2025-07-01“…Abstract This paper presents a novel framework for accurate exercise posture recognition and health indicator prediction based on improved convolutional neural networks. …”
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311
Lightweight Transformer traffic scene semantic segmentation algorithm integrating multi-scale depth convolution
Published 2023-10-01“…Aiming at the problems of discontinuous segmentation of thin strip objects that were easy to blend into the surrounding background and a large number of model parameters in the semantic segmentation algorithm of traffic scenes, a lightweight Transformer traffic scene semantic segmentation algorithm integrating multi-scale depth convolution was proposed.First, a multi-scale strip feature extraction module (MSEM) was constructed based on deep convolution to enhance the representation ability of thin strip target features at different scales.Secondly, a spatial detail auxiliary module (SDAM) was designed using the convolutional inductive bias feature in the shallow network to compensate for the loss of deep spatial detail information to optimize object edge segmentation.Finally, an asymmetric encoding-decoding network based on the Transformer-CNN framework (TC-AEDNet) was proposed.The encoder combined Transformer and CNN to alleviate the loss of detail information and reduce the amount of model parameters; while the decoder adopted a lightweight multi-level feature fusion design to further model the global context.The proposed algorithm achieves the mean intersection over union (mIoU) of 78.63% and 81.06% respectively on the Cityscapes and CamVid traffic scene public datasets.It can achieve a trade-off between segmentation accuracy and model size in traffic scene semantic segmentation and has a good application prospect.…”
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312
Blink Detection Using 3D Convolutional Neural Architectures and Analysis of Accumulated Frame Predictions
Published 2025-01-01“…The cropped eye regions are organized as three-dimensional (3D) input with the third dimension spanning time of 300 ms. Two different 3D convolutional neural networks are utilized (a simple 3D CNN and 3D ResNet), as well as a 3D autoencoder combined with a classifier coupled to the latent space. …”
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313
Temporal representation learning enhanced dynamic adversarial graph convolutional network for traffic flow prediction
Published 2025-03-01“…Additionally, we design an adversarial graph convolutional framework, which optimizes the loss through adversarial training, thereby reducing the trend discrepancy between predicted and actual values. …”
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314
Knowledge based convolutional transformer for joint estimation of PM2.5 and O3 concentrations
Published 2025-07-01“…In addition, the joint estimation framework for pollutants proposed in this study can be applied to multivariate retrieval or estimation in multiple fields.…”
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315
Topological Attention-Based Convolution Neural Networks in Analyzing and Predicting Particulate Matter Pollution Level
Published 2025-06-01“…Methods The proposed framework combines CNNs, self-attention mechanisms, and persistent homology-derived topological features from three key environmental variables. …”
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316
Node-Based Graph Convolutional Network With SLIC Method for Breast Cancer Ultrasound Images Classification
Published 2024-01-01“…This research presents a novel node-based Graph Convolutional Network (GCN) approach for the classification of breast cancer from ultrasound images. …”
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317
Optimizing non small cell lung cancer detection with convolutional neural networks and differential augmentation
Published 2025-05-01“…The study concludes that the novel CNN + DA architecture provides a robust, accurate, and computationally efficient framework for lung cancer detection, positioning it as a valuable tool for clinical applications and paving the way for future research in medical image diagnostics.…”
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318
Damage identification based on the inner product matrix and parallel convolution neural network for frame structure
Published 2024-12-01“…Mainstream machine learning techniques, such as convolutional neural networks (CNN), often rely on single-domain inputs, which may provide limited information for accurate damage identification. …”
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319
Ensemble-based sesame disease detection and classification using deep convolutional neural networks (CNN)
Published 2025-08-01“…By enabling timely interventions, this ensemble-based framework can contribute to the sustainability and productivity of sesame cultivation, ultimately supporting food security and agricultural resilience.…”
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320
Optimizing Fractional-Order Convolutional Neural Networks for Groove Classification in Music Using Differential Evolution
Published 2024-10-01“…This study presents a differential evolution (DE)-based optimization approach for fractional-order convolutional neural networks (FOCNNs) aimed at enhancing the accuracy of groove classification in music. …”
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