EMCAD: Efficient Multi-Scale Convolutional Attention Decoding for Medical Image Segmentation
The University of Texas at Austin
Abstract
An efficient and effective decoding mechanism is crucial in medical image segmentation, especially in scenarios with limited computational resources. However, these decoding mechanisms usually come with high computational costs. To address this concern, we introduce EMCAD, a new efficient multi-scale convolutional attention decoder, designed to optimize both performance and computational efficiency. EMCAD leverages a unique multi-scale depth-wise convolution block, significantly enhancing feature maps through multi-scale convolutions. EMCAD also employs channel, spatial, and grouped (large-kernel) gated attention mechanisms, which are highly effective at capturing intricate spatial relationships while focusing…
Citation impact
- FWCI
- 82.93
- Percentile
- 100%
- References
- 72
Authors
3- MMMd Mostafijur RahmanCorresponding
The University of Texas at Austin
- MMMustafa Munir
The University of Texas at Austin
- RMRadu Marculescu
The University of Texas at Austin
Topics & keywords
- Computer science
- Decoding methods
- Artificial intelligence
- Image segmentation
- Convolutional code
- Segmentation
- Scale (ratio)
- Computer vision