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EMCAD: Efficient Multi-scale Convolutional Attention Decoding for Medical Image Segmentation

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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 on salient regions. By employing group and depth-wise convolution, EMCAD is very efficient and scales well (e.g., only 1.91M parameters and 0.381G FLOPs are needed when using a standard encoder). Our rigorous evaluations across 12 datasets that belong to six medical image segmentation tasks reveal that EMCAD achieves state-of-the-art (SOTA) performance with 79.4% and 80.3% reduction in #Params and #FLOPs, respectively. Moreover, EMCAD's adaptability to different encoders and versatility across segmentation tasks further establish EMCAD as a promising tool, advancing the field towards more efficient and accurate medical image analysis. Our implementation is available at https://github.com/SLDGroup/EMCAD.

Md Mostafijur Rahman, Mustafa Munir, Radu Marculescu• 2024

Related benchmarks

TaskDatasetResultRank
Cardiac SegmentationACDC (test)
Avg Dice92.12
141
Medical Image SegmentationBUSI (test)
Dice80.25
121
Medical Image SegmentationSynapse (test)
Dice83.63
111
Skin Lesion SegmentationISIC 2017 (test)
Dice Score90.06
100
Medical Image SegmentationKvasir-Seg
Dice Score90.37
75
Medical Image SegmentationCVC-ClinicDB
Dice Score93.39
68
Binary SegmentationKvasir-SEG (test)
DSC0.9275
67
Medical Image SegmentationBUSI
Dice Score79.22
61
Medical Image SegmentationCVC-ClinicDB (test)
Dice95.21
60
Medical Image SegmentationISIC 2018 (test)
Dice Score90.96
57
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