Conformer: Local Features Coupling Global Representations for Visual Recognition
Within Convolutional Neural Network (CNN), the convolution operations are good at extracting local features but experience difficulty to capture global representations. Within visual transformer, the cascaded self-attention modules can capture long-distance feature dependencies but unfortunately det...
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Zusammenfassung: | Within Convolutional Neural Network (CNN), the convolution operations are
good at extracting local features but experience difficulty to capture global
representations. Within visual transformer, the cascaded self-attention modules
can capture long-distance feature dependencies but unfortunately deteriorate
local feature details. In this paper, we propose a hybrid network structure,
termed Conformer, to take advantage of convolutional operations and
self-attention mechanisms for enhanced representation learning. Conformer roots
in the Feature Coupling Unit (FCU), which fuses local features and global
representations under different resolutions in an interactive fashion.
Conformer adopts a concurrent structure so that local features and global
representations are retained to the maximum extent. Experiments show that
Conformer, under the comparable parameter complexity, outperforms the visual
transformer (DeiT-B) by 2.3% on ImageNet. On MSCOCO, it outperforms ResNet-101
by 3.7% and 3.6% mAPs for object detection and instance segmentation,
respectively, demonstrating the great potential to be a general backbone
network. Code is available at https://github.com/pengzhiliang/Conformer. |
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DOI: | 10.48550/arxiv.2105.03889 |