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Papers/BTS-Net: Bi-directional Transfer-and-Selection Network For...

BTS-Net: Bi-directional Transfer-and-Selection Network For RGB-D Salient Object Detection

Wenbo Zhang, Yao Jiang, Keren Fu, Qijun Zhao

2021-04-05Saliency PredictionSalient Object DetectionRGB-D Salient Object Detectionobject-detectionObject Detection
PaperPDFCode(official)

Abstract

Depth information has been proved beneficial in RGB-D salient object detection (SOD). However, depth maps obtained often suffer from low quality and inaccuracy. Most existing RGB-D SOD models have no cross-modal interactions or only have unidirectional interactions from depth to RGB in their encoder stages, which may lead to inaccurate encoder features when facing low quality depth. To address this limitation, we propose to conduct progressive bi-directional interactions as early in the encoder stage, yielding a novel bi-directional transfer-and-selection network named BTS-Net, which adopts a set of bi-directional transfer-and-selection (BTS) modules to purify features during encoding. Based on the resulting robust encoder features, we also design an effective light-weight group decoder to achieve accurate final saliency prediction. Comprehensive experiments on six widely used datasets demonstrate that BTS-Net surpasses 16 latest state-of-the-art approaches in terms of four key metrics.

Results

TaskDatasetMetricValueModel
Object DetectionNJU2KAverage MAE0.036BTS-Net
Object DetectionNJU2KS-Measure92.1BTS-Net
Object DetectionNJU2Kmax E-Measure95.4BTS-Net
Object DetectionNJU2Kmax F-Measure92.4BTS-Net
Object DetectionSTEREAverage MAE0.038BTS-Net
Object DetectionSTERES-Measure91.5BTS-Net
Object DetectionSTEREmax E-Measure94.9BTS-Net
Object DetectionSTEREmax F-Measure91.1BTS-Net
Object DetectionLFSDAverage MAE0.07BTS-Net
Object DetectionLFSDS-Measure86.7BTS-Net
Object DetectionLFSDmax E-Measure90.6BTS-Net
Object DetectionLFSDmax F-Measure87.4BTS-Net
Object DetectionSIPAverage MAE0.044BTS-Net
Object DetectionSIPS-Measure89.6BTS-Net
Object DetectionSIPmax E-Measure93.3BTS-Net
Object DetectionSIPmax F-Measure90.1BTS-Net
Object DetectionDESAverage MAE0.018BTS-Net
Object DetectionDESS-Measure94.3BTS-Net
Object DetectionDESmax E-Measure97.9BTS-Net
Object DetectionDESmax F-Measure94BTS-Net
3DNJU2KAverage MAE0.036BTS-Net
3DNJU2KS-Measure92.1BTS-Net
3DNJU2Kmax E-Measure95.4BTS-Net
3DNJU2Kmax F-Measure92.4BTS-Net
3DSTEREAverage MAE0.038BTS-Net
3DSTERES-Measure91.5BTS-Net
3DSTEREmax E-Measure94.9BTS-Net
3DSTEREmax F-Measure91.1BTS-Net
3DLFSDAverage MAE0.07BTS-Net
3DLFSDS-Measure86.7BTS-Net
3DLFSDmax E-Measure90.6BTS-Net
3DLFSDmax F-Measure87.4BTS-Net
3DSIPAverage MAE0.044BTS-Net
3DSIPS-Measure89.6BTS-Net
3DSIPmax E-Measure93.3BTS-Net
3DSIPmax F-Measure90.1BTS-Net
3DDESAverage MAE0.018BTS-Net
3DDESS-Measure94.3BTS-Net
3DDESmax E-Measure97.9BTS-Net
3DDESmax F-Measure94BTS-Net
2D ClassificationNJU2KAverage MAE0.036BTS-Net
2D ClassificationNJU2KS-Measure92.1BTS-Net
2D ClassificationNJU2Kmax E-Measure95.4BTS-Net
2D ClassificationNJU2Kmax F-Measure92.4BTS-Net
2D ClassificationSTEREAverage MAE0.038BTS-Net
2D ClassificationSTERES-Measure91.5BTS-Net
2D ClassificationSTEREmax E-Measure94.9BTS-Net
2D ClassificationSTEREmax F-Measure91.1BTS-Net
2D ClassificationLFSDAverage MAE0.07BTS-Net
2D ClassificationLFSDS-Measure86.7BTS-Net
2D ClassificationLFSDmax E-Measure90.6BTS-Net
2D ClassificationLFSDmax F-Measure87.4BTS-Net
2D ClassificationSIPAverage MAE0.044BTS-Net
2D ClassificationSIPS-Measure89.6BTS-Net
2D ClassificationSIPmax E-Measure93.3BTS-Net
2D ClassificationSIPmax F-Measure90.1BTS-Net
2D ClassificationDESAverage MAE0.018BTS-Net
2D ClassificationDESS-Measure94.3BTS-Net
2D ClassificationDESmax E-Measure97.9BTS-Net
2D ClassificationDESmax F-Measure94BTS-Net
2D Object DetectionNJU2KAverage MAE0.036BTS-Net
2D Object DetectionNJU2KS-Measure92.1BTS-Net
2D Object DetectionNJU2Kmax E-Measure95.4BTS-Net
2D Object DetectionNJU2Kmax F-Measure92.4BTS-Net
2D Object DetectionSTEREAverage MAE0.038BTS-Net
2D Object DetectionSTERES-Measure91.5BTS-Net
2D Object DetectionSTEREmax E-Measure94.9BTS-Net
2D Object DetectionSTEREmax F-Measure91.1BTS-Net
2D Object DetectionLFSDAverage MAE0.07BTS-Net
2D Object DetectionLFSDS-Measure86.7BTS-Net
2D Object DetectionLFSDmax E-Measure90.6BTS-Net
2D Object DetectionLFSDmax F-Measure87.4BTS-Net
2D Object DetectionSIPAverage MAE0.044BTS-Net
2D Object DetectionSIPS-Measure89.6BTS-Net
2D Object DetectionSIPmax E-Measure93.3BTS-Net
2D Object DetectionSIPmax F-Measure90.1BTS-Net
2D Object DetectionDESAverage MAE0.018BTS-Net
2D Object DetectionDESS-Measure94.3BTS-Net
2D Object DetectionDESmax E-Measure97.9BTS-Net
2D Object DetectionDESmax F-Measure94BTS-Net
16kNJU2KAverage MAE0.036BTS-Net
16kNJU2KS-Measure92.1BTS-Net
16kNJU2Kmax E-Measure95.4BTS-Net
16kNJU2Kmax F-Measure92.4BTS-Net
16kSTEREAverage MAE0.038BTS-Net
16kSTERES-Measure91.5BTS-Net
16kSTEREmax E-Measure94.9BTS-Net
16kSTEREmax F-Measure91.1BTS-Net
16kLFSDAverage MAE0.07BTS-Net
16kLFSDS-Measure86.7BTS-Net
16kLFSDmax E-Measure90.6BTS-Net
16kLFSDmax F-Measure87.4BTS-Net
16kSIPAverage MAE0.044BTS-Net
16kSIPS-Measure89.6BTS-Net
16kSIPmax E-Measure93.3BTS-Net
16kSIPmax F-Measure90.1BTS-Net
16kDESAverage MAE0.018BTS-Net
16kDESS-Measure94.3BTS-Net
16kDESmax E-Measure97.9BTS-Net
16kDESmax F-Measure94BTS-Net

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