TL;DR
The paper introduces A-CubeNet, an innovative neural network with a three-dimensional attention mechanism that enhances feature extraction and aggregation for superior image restoration performance.
Contribution
It proposes a novel three-dimensional attention mechanism and an attention-in-attention structure to improve feature representation and contextual information aggregation in image restoration.
Findings
Outperforms state-of-the-art methods in quantitative metrics.
Provides superior visual restoration quality.
Demonstrates effective long-range contextual information capture.
Abstract
Recently, deep convolutional neural network (CNN) have been widely used in image restoration and obtained great success. However, most of existing methods are limited to local receptive field and equal treatment of different types of information. Besides, existing methods always use a multi-supervised method to aggregate different feature maps, which can not effectively aggregate hierarchical feature information. To address these issues, we propose an attention cube network (A-CubeNet) for image restoration for more powerful feature expression and feature correlation learning. Specifically, we design a novel attention mechanism from three dimensions, namely spatial dimension, channel-wise dimension and hierarchical dimension. The adaptive spatial attention branch (ASAB) and the adaptive channel attention branch (ACAB) constitute the adaptive dual attention module (ADAM), which can…
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Taxonomy
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