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301
Diagnosis of Alzheimer’s disease using brain $$^{18}\textrm{F}$$ -FDG PET imaging based on a state space model
Published 2025-07-01“…Building on this, we optimized the original purely convolutional structure into a hybrid architecture combining convolution and Transformer layers. …”
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302
DFAST: A Differential-Frequency Attention-Based Band Selection Transformer for Hyperspectral Image Classification
Published 2025-07-01“…A 3D convolution and a spectral–spatial attention mechanism are applied to perform fine-grained modeling of spectral and spatial features, further enhancing the global dependency capture of spectral–spatial features. …”
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303
YOLO-SWD—An Improved Ship Recognition Algorithm for Feature Occlusion Scenarios
Published 2025-03-01“…Three improved modules are introduced: the DLKA module enhances the perception of local details and global context through dynamic deformable convolution and large receptive field attention mechanisms; the CKSP module improves the model’s ability to extract target boundaries and shapes; and the WTHead enhances the diversity and robustness of feature extraction. …”
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304
Hierarchical Semi-Supervised Representation Learning for Cyber Physical Social Intelligence
Published 2025-06-01“…Simultaneously, a learnable graph neural network captures global topology using a graph structure-level reconstruction loss. …”
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305
Feature Interaction and Adaptive Fusion Network With Spectral Modulation for Pansharpening
Published 2025-01-01“…In addition, a residual structure-based self-guided spatial-channel adaptive convolution is introduced to accommodate diverse features within FASA adaptively. …”
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306
Surface Defect and Malformation Characteristics Detection for Fresh Sweet Cherries Based on YOLOv8-DCPF Method
Published 2025-05-01“…First, the dilation-wise residual (DWR) module replaces the conventional C2f structure, allowing for the adaptive capture of both local and global features through multi-scale convolution. …”
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307
Enhanced Cross-stage-attention U-Net for esophageal target volume segmentation
Published 2024-12-01“…WRA was employed to capture global attention, whose large convolution kernel was further decomposed to simplify the calculation. …”
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308
DDANet: A deep dilated attention network for intracerebral haemorrhage segmentation
Published 2024-12-01“…Additionally, the authors incorporate a self‐attention mechanism to capture global semantic information of high‐level features to guide the extraction and processing of low‐level features, thereby enhancing the model's understanding of the overall structure while maintaining details. …”
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309
Robust SAR-assisted cloud removal via supervised align-guided fusion and bidirectional hybrid reconstruction
Published 2025-08-01“…The bidirectional hybrid reconstruction module integrates global and local information via the parallel combination of convolution and transformer layers to ensure consistent filling in both the central and boundary areas. …”
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310
DeSPPNet: A Multiscale Deep Learning Model for Cardiac Segmentation
Published 2024-12-01“…By processing features at different spatial resolutions, the multiscale densely connected layer in the form of the Pyramid Pooling Dense Module (PPDM) helps the network to capture both local and global context, preserving finer details of the cardiac structure while also capturing the broader context required to accurately segment larger cardiac structures. …”
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311
YOLOv10-kiwi: a YOLOv10-based lightweight kiwifruit detection model in trellised orchards
Published 2025-08-01“…Second, to further reduce model complexity, a novel C2fDualHet module is proposed by integrating two consecutive Heterogeneous Kernel Convolution (HetConv) layers as a replacement for the traditional Bottleneck structure. …”
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312
Detection Method for Bolts with Mission Pins on Transmission Lines Based on DBSCAN-FPN
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313
Improved stereo matching network based on dense multi-scale feature guided cost aggregation
Published 2024-02-01“…Firstly, a dense multi-scale feature extraction module was designed based on the dense atrous spatial pyramid pooling structure. This module extracted region-level features of different scales by using atrous convolution of different expansion rates, and effectively fused image features of different scales through dense connection, so that the network can capture contextual information. …”
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314
A Spatial–Frequency Combined Transformer for Cloud Removal of Optical Remote Sensing Images
Published 2025-04-01“…In order to further enhance the features extracted by DBSA and FreSA, we design the dual-domain feed-forward network (DDFFN), which effectively improves the detail fidelity of the restored image by multi-scale convolution for local refinement and frequency transformation for global structural optimization. …”
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315
Lightweight U-Net for Blood Vessels Segmentation in X-Ray Coronary Angiography
Published 2025-03-01“…The pruning method systematically removes entire convolutional filters from each layer based on a global reduction factor, generating compact subnetworks that retain key representational capacity. …”
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316
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317
An industrial carbon block instance segmentation algorithm based on improved YOLOv8
Published 2025-03-01“…YOLOv8-HDSA adds a convolutional self-attention mechanism with residual structure to the head, preserving important local information of carbon blocks and improving the ability to extract fine-grained edge details and global features of carbon blocks. …”
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318
BDSER-InceptionNet: A Novel Method for Near-Infrared Spectroscopy Model Transfer Based on Deep Learning and Balanced Distribution Adaptation
Published 2025-06-01“…The key contributions include: (1) RX-Inception multi-scale structure: Combines Xception’s depthwise separable convolution with ResNet’s residual connections to strengthen global–local feature coupling. (2) Squeeze-and-Excitation (SE) attention: Dynamically recalibrates spectral band weights to enhance discriminative feature representation. (3) Systematic evaluation of six transfer strategies: Comparative analysis of their impacts on model adaptation performance. …”
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319
Cross-Domain Person Re-Identification Based on Multi-Branch Pose-Guided Occlusion Generation
Published 2025-01-01“…Secondly, a multi-branch feature fusion structure is constructed. By fusing different feature information from the global and occlusion branches, the diversity of features is enriched. …”
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320
Research on SeaTreasure Target Detection Technology Based on Improved YOLOv7-Tiny
Published 2025-01-01“…First, based on the YOLOv7-Tiny network, the MAFPN neck structure is used to replace the ELAN structure to achieve the multi-scale capture of semantic information of underwater sea treasures, and to enhance the UPA-YOLO model to accurately locate the targets of underwater sea treasures; second, the P2ELAN module is constructed and added to the backbone network, which makes use of the redundancy information in the feature map and dynamically adjusts the convolution kernel to adapt to data The P2ELAN module is added to the backbone network, using the redundant information in the feature map, dynamically adjusting the convolutional kernel to adapt to the lack of data, reducing the number of parameters in the model, and introducing the MSCA attention mechanism to inhibit the complex and changeable background features underwater, to improve the semantic feature extraction ability of the UPA-YOLO model for underwater targets, adding the MPDiou loss function to the improved algorithm model and completing the data validation of the detection model; finally, based on the TensorRT acceleration framework, the optimisation of the target detection Finally, based on the TensorRT acceleration framework, the target detection model is optimised, and the Jetson Nano edge device is used to complete the localisation deployment and realise the real-time target detection task of underwater sea treasures. …”
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