Review — BR²Net: Defocus Blur Detection via a Bidirectional Channel Attention Residual Refining Network (Blur Detection)

Fusing Low and High Level Features Using CAM, Outperforms DHDE and BTBNet

Some challenging cases for defocus blur detection

Outline

1. BR²Net: Network Architecture

BR²Net: Network Architecture

2. Residual Learning and Refining Module (RLRM)

The detailed structure of the proposed RLRM

3. Channel Attention Module (CAM)

Channel Attention Module (CAM)

4. Defocus Map Fusion

4.1. Final Output

4.2. Training

5. Experimental Results

5.1. Quantitative Comparison

The comparison of different methods in terms of the MAE, F-measure and AUC scores
Comparison of the precision-recall curves, F-measure curves and ROC curves of the different methods on the Shi’s
Comparison of the precision-recall curves, F-measure curves and ROC curves of the different methods on the DUT
Comparison of the precision-recall curves, F-measure curves and ROC curves of the different methods on the CTCUG

5.2. Qualitative Comparison

Visual comparison of the detected defocus blur maps generated from the different methods

5.3. Running Efficiency Comparison

Running Platform and Average Running Time (seconds)

6. Ablation Study

Ablation Study

6.1. Effectiveness of the RLRM

The training loss of BR²Net with and without the RLRM

6.2. Effectiveness of the Final Defocus Blur Map Fusion Step

The intermediate outputs of the two feature-refining pathways

6.3. Effectiveness of the Different Backbone Network Architectures

6.4. Failure Cases

Failure cases generated by using the proposed method. Left: Input, Middle: GT, Right: Predicted Results

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