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101
Seismic data denoising based on attention dual dilated CNN
Published 2025-08-01“…Traditional noise suppression methods often result in the loss of critical signals, affecting subsurface structure characterization. This study introduces an innovative Attention Dual-Dilated Convolutional Neural Network (ADDC-Net) to address random noise in seismic data. …”
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102
HEAT: Incorporating hierarchical enhanced attention transformation into urban road detection
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103
Multi-scale conv-attention U-Net for medical image segmentation
Published 2025-04-01“…Abstract U-Net-based network structures are widely used in medical image segmentation. …”
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104
Complex Network Analytics for Structural–Functional Decoding of Neural Networks
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105
CCTNet: CNN and Cross-Shaped Transformer Hybrid Network for Remote Sensing Image Semantic Segmentation
Published 2024-01-01“…This model follows an encoder–decoder structure. It employs ResNet18 as an encoder to extract hierarchical feature information, and constructs a transformer decoder based on efficient cross-shaped self-attention to fully model local and global feature information and achieve lightweighting of the network. …”
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106
Honeycomb lung segmentation network based on P2T with CNN two-branch parallelism
Published 2024-12-01“…Aiming at the problem that honeycomb lung lesions are difficult to accurately segment due to diverse morphology and complex distribution, a network with parallel two-branch structure is proposed. In the encoder, the Pyramid Pooling Transformer (P2T) backbone is used as the Transformer branch to obtain the global features of the lesions, the convolutional branch is used to extract the lesions’ local feature information, and the feature fusion module is designed to effectively fuse the features in the dual branches; subsequently, in the decoder, the channel prior convolutional attention is used to enhance the localization ability of the model to the lesion region. …”
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107
ViT-DualAtt: An efficient pornographic image classification method based on Vision Transformer with dual attention
Published 2024-12-01“…The model adopts a CNN-Transformer hierarchical structure, combining the strengths of Convolutional Neural Networks (CNNs) and Transformers to effectively capture and integrate both local and global features, thereby enhancing feature representation accuracy and diversity. …”
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108
Two-stream spatio-temporal GCN-transformer networks for skeleton-based action recognition
Published 2025-02-01“…This study proposes a novel architecture addressing this limitation by implementing a parallel configuration of GCNs and the Transformer model (SA-TDGFormer). This parallel structure integrates the advantages of both the GCN model and the Transformer model, facilitating the extraction of both local and global spatio-temporal features, leading to more accurate motion information encoding and improved recognition performance. …”
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109
A Rotation Target Detection Network Based on Multi-Kernel Interaction and Hierarchical Expansion
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110
Image Inpainting Algorithm Based on Structure-Guided Generative Adversarial Network
Published 2025-07-01“…The proposed methodology advances a two-stage restoration paradigm: (1) Structural Prior Extraction, where adaptive edge detection algorithms identify residual contours in corrupted regions, and a transformer-enhanced network reconstructs globally consistent structural maps through contextual feature propagation; (2) Structure-Constrained Texture Synthesis, wherein a multi-scale generator with hybrid dilated convolutions and channel attention mechanisms iteratively refines high-fidelity textures under explicit structural guidance. …”
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111
CNN–Transformer gated fusion network for medical image super-resolution
Published 2025-05-01“…The network consists of two branches, one is the global branch based on residual Transformer network, and the other is the local branch based on dynamic convolutional neural network. …”
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112
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113
VE-GCN: A Geography-Aware Approach for Polyline Simplification in Cartographic Generalization
Published 2025-02-01“…To enhance the graph convolutional structure for capturing crucial geographic element features and simultaneously learning vertex and edge features within map polylines, this study introduces a joint vertex–edge feature graph convolutional network (VE-GCN). …”
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114
Classification of Structural and Functional Development Stage of Cardiomyocytes Using Machine Learning Techniques
Published 2024-12-01“…A pre-processed and augmented dataset is used for training of the convolutional neural network having an architecture with hierarchical structure and residual block usage. …”
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115
PoseAlign network for hybrid structure in 2D human pose estimation
Published 2025-05-01“…We introduce a novel 2D HPE method called the PoseAlign Network for Hybrid Structure (PAN-HS). PAN-HS leverages the conceptually simple yet effective depth-wise convolution to design two feature extraction blocks: the Spatial Align Block and the Channel Align Block. …”
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116
Infant cry classification using an efficient graph structure and attention-based model
Published 2024-07-01“…Additionally, in order to better classify the efficient graph structure, a local-to-global convolutional neural network (AlgNet) based on convolutional neural networks and attention mechanisms is proposed. …”
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117
MT-SCnet: multi-scale token divided and spatial-channel fusion transformer network for microscopic hyperspectral image segmentation
Published 2024-12-01“…IntroductionHybrid architectures based on convolutional neural networks and Transformers, effectively captures both the local details and the overall structural context of lesion tissues and cells, achieving highly competitive segmentation results in microscopic hyperspectral image (MHSI) segmentation tasks. …”
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118
A Parallel Image Denoising Network Based on Nonparametric Attention and Multiscale Feature Fusion
Published 2025-01-01“…The lower branch network used multiple dilation convolution residual blocks with different dilation rates to increase the receptive field and extend more contextual information to obtain the global features of the noise in the image. …”
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119
MSA-Net: multiple self-attention mechanism for 3D lung nodule classification in CT images
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120
A Feature-Driven Inception Dilated Network for Infrared Image Super-Resolution Reconstruction
Published 2024-10-01“…Therefore, an Inception Dilated Super-Resolution (IDSR) network with multiple branches is proposed. A dilated convolutional branch captures high-frequency information to reconstruct edge details, while a non-local operation branch captures long-range dependencies between any two positions to maintain the global structure. …”
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