Short Overview: The development of deep learning provides powerful support for disease classification of neuroimaging data.

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Lightweight Spatial Attention Module with Adaptive Receptive Fields in 3D CNN for AD Classification

Lightweight Spatial Attention Module with Adaptive Receptive Fields in 3D CNN for AD Classification

The development of deep learning provides powerful support for disease classification of neuroimaging data. However, in the ...

Convolutional Block Attention Module (CBAM) Paper Explained

Convolutional Block Attention Module (CBAM) Paper Explained

Read more details and related context about Convolutional Block Attention Module (CBAM) Paper Explained.

283 - Rotate to Attend: Convolutional Triplet Attention Module

283 - Rotate to Attend: Convolutional Triplet Attention Module

Read more details and related context about 283 - Rotate to Attend: Convolutional Triplet Attention Module.

Attention Neural Networks: Boosting CNNs with SE and CBAM Attention

Attention Neural Networks: Boosting CNNs with SE and CBAM Attention

Read more details and related context about Attention Neural Networks: Boosting CNNs with SE and CBAM Attention.

Efficient Face Detector Using Spatial Attention Module in Real-Time Application on an Edge Device

Efficient Face Detector Using Spatial Attention Module in Real-Time Application on an Edge Device

Read more details and related context about Efficient Face Detector Using Spatial Attention Module in Real-Time Application on an Edge Device.

Spatial Attention

Spatial Attention

Read more details and related context about Spatial Attention.

[CVPRW 2026] CylinderDepth: Cylindrical Spatial Attention for Multi-View Consistent Depth Estimation

[CVPRW 2026] CylinderDepth: Cylindrical Spatial Attention for Multi-View Consistent Depth Estimation

Read more details and related context about [CVPRW 2026] CylinderDepth: Cylindrical Spatial Attention for Multi-View Consistent Depth Estimation.

Attention Mechanism: Spatial Attention & CBAM Implementation in CNNs Using Tensorflow Deep Learning

Attention Mechanism: Spatial Attention & CBAM Implementation in CNNs Using Tensorflow Deep Learning

Read more details and related context about Attention Mechanism: Spatial Attention & CBAM Implementation in CNNs Using Tensorflow Deep Learning.

CBAM | Lecture 8 (Part 3) | Applied Deep Learning (Supplementary)

CBAM | Lecture 8 (Part 3) | Applied Deep Learning (Supplementary)

Read more details and related context about CBAM | Lecture 8 (Part 3) | Applied Deep Learning (Supplementary).

Multi-Object 3D Grounding with Dynamic Modules and Language Informed Spatial Attention

Multi-Object 3D Grounding with Dynamic Modules and Language Informed Spatial Attention

5 min video introduction for our NeurIPS 2024 work Project Page: