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5 months ago

M$^3$Net: Multilevel, Mixed and Multistage Attention Network for Salient Object Detection

Yao Yuan; Pan Gao; XiaoYang Tan

M$^3$Net: Multilevel, Mixed and Multistage Attention Network for Salient Object Detection

Abstract

Most existing salient object detection methods mostly use U-Net or feature pyramid structure, which simply aggregates feature maps of different scales, ignoring the uniqueness and interdependence of them and their respective contributions to the final prediction. To overcome these, we propose the M$^3$Net, i.e., the Multilevel, Mixed and Multistage attention network for Salient Object Detection (SOD). Firstly, we propose Multiscale Interaction Block which innovatively introduces the cross-attention approach to achieve the interaction between multilevel features, allowing high-level features to guide low-level feature learning and thus enhancing salient regions. Secondly, considering the fact that previous Transformer based SOD methods locate salient regions only using global self-attention while inevitably overlooking the details of complex objects, we propose the Mixed Attention Block. This block combines global self-attention and window self-attention, aiming at modeling context at both global and local levels to further improve the accuracy of the prediction map. Finally, we proposed a multilevel supervision strategy to optimize the aggregated feature stage-by-stage. Experiments on six challenging datasets demonstrate that the proposed M$^3$Net surpasses recent CNN and Transformer-based SOD arts in terms of four metrics. Codes are available at https://github.com/I2-Multimedia-Lab/M3Net.

Code Repositories

I2-Multimedia-Lab/M3Net
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
salient-object-detection-on-dut-omronM3Net-R
MAE: 0.061
S-Measure: 0.848
Weighted F-Measure: 0.769
salient-object-detection-on-dut-omronM3Net-S
MAE: 0.045
S-Measure: 0.872
Weighted F-Measure: 0.811
salient-object-detection-on-duts-teM3Net-R
MAE: 0.036
S-Measure: 0.897
Weighted F-Measure: 0.849
salient-object-detection-on-duts-teM3Net-S
MAE: 0.024
S-Measure: 0.927
Weighted F-Measure: 0.902
salient-object-detection-on-ecssdM3Net-R
MAE: 0.029
S-Measure: 0.931
Weighted F-Measure: 0.919
salient-object-detection-on-ecssdM3Net-S
MAE: 0.021
S-Measure: 0.948
Weighted F-Measure: 0.947
salient-object-detection-on-hku-isM3Net-S
MAE: 0.019
S-Measure: 0.943
Weighted F-Measure: 0.937
salient-object-detection-on-hku-isM3Net-R
MAE: 0.026
S-Measure: 0.929
Weighted F-Measure: 0.913
salient-object-detection-on-pascal-sM3Net-R
MAE: 0.06
S-Measure: 0.868
Weighted F-Measure: 0.827
salient-object-detection-on-pascal-sM3Net-S
MAE: 0.047
S-Measure: 0.889
Weighted F-Measure: 0.864

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M$^3$Net: Multilevel, Mixed and Multistage Attention Network for Salient Object Detection | Papers | HyperAI