SegNeXt: Rethinking Convolutional Attention Design for Semantic Segmentation
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Abstract
We present SegNeXt, a simple convolutional network architecture for semantic segmentation. Recent transformer-based models have dominated the field of semantic segmentation due to the efficiency of self-attention in encoding spatial information. In this paper, we show that convolutional attention is a more efficient and effective way to encode contextual information than the self-attention mechanism in transformers. By re-examining the characteristics owned by successful segmentation models, we discover several key components leading to the performance improvement of segmentation models. This motivates us to design a novel convolutional attention network that uses cheap convolutional operations. Without bells…
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Keywords
- Pascal (unit)
- Segmentation
- Computer science
- Transformer
- Convolutional neural network
- Convolutional code
- Artificial intelligence
- ENCODE
UN Sustainable Development Goals
- Sustainable cities and communities
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