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Papers/Is Depth Really Necessary for Salient Object Detection?

Is Depth Really Necessary for Salient Object Detection?

Jia-Wei Zhao, Yifan Zhao, Jia Li, Xiaowu Chen

2020-05-30Salient Object DetectionRGB-D Salient Object Detectionobject-detectionObject DetectionRGB Salient Object Detection
PaperPDFCode

Abstract

Salient object detection (SOD) is a crucial and preliminary task for many computer vision applications, which have made progress with deep CNNs. Most of the existing methods mainly rely on the RGB information to distinguish the salient objects, which faces difficulties in some complex scenarios. To solve this, many recent RGBD-based networks are proposed by adopting the depth map as an independent input and fuse the features with RGB information. Taking the advantages of RGB and RGBD methods, we propose a novel depth-aware salient object detection framework, which has following superior designs: 1) It only takes the depth information as training data while only relies on RGB information in the testing phase. 2) It comprehensively optimizes SOD features with multi-level depth-aware regularizations. 3) The depth information also serves as error-weighted map to correct the segmentation process. With these insightful designs combined, we make the first attempt in realizing an unified depth-aware framework with only RGB information as input for inference, which not only surpasses the state-of-the-art performances on five public RGB SOD benchmarks, but also surpasses the RGBD-based methods on five benchmarks by a large margin, while adopting less information and implementation light-weighted. The code and model will be publicly available.

Results

TaskDatasetMetricValueModel
Object DetectionNJU2KAverage MAE0.042DASNet
Object DetectionNJU2KS-Measure90.2DASNet
Object DetectionNJU2Kmax F-Measure91.1DASNet
Object DetectionSTEREAverage MAE0.037DASNet
Object DetectionSTERES-Measure91DASNet
Object DetectionSTEREmax F-Measure91.5DASNet
Object DetectionRGBD135Average MAE0.042DASNet
Object DetectionRGBD135S-Measure88.5DASNet
Object DetectionRGBD135max F-Measure88.1DASNet
Object DetectionNLPRAverage MAE0.021DASNet
Object DetectionNLPRS-Measure92.9DASNet
Object DetectionNLPRmax F-Measure92.9DASNet
Object DetectionDESAverage MAE0.023DASNet
Object DetectionDESS-Measure90.8DASNet
Object DetectionDESmax F-Measure92.8DASNet
3DNJU2KAverage MAE0.042DASNet
3DNJU2KS-Measure90.2DASNet
3DNJU2Kmax F-Measure91.1DASNet
3DSTEREAverage MAE0.037DASNet
3DSTERES-Measure91DASNet
3DSTEREmax F-Measure91.5DASNet
3DRGBD135Average MAE0.042DASNet
3DRGBD135S-Measure88.5DASNet
3DRGBD135max F-Measure88.1DASNet
3DNLPRAverage MAE0.021DASNet
3DNLPRS-Measure92.9DASNet
3DNLPRmax F-Measure92.9DASNet
3DDESAverage MAE0.023DASNet
3DDESS-Measure90.8DASNet
3DDESmax F-Measure92.8DASNet
2D ClassificationNJU2KAverage MAE0.042DASNet
2D ClassificationNJU2KS-Measure90.2DASNet
2D ClassificationNJU2Kmax F-Measure91.1DASNet
2D ClassificationSTEREAverage MAE0.037DASNet
2D ClassificationSTERES-Measure91DASNet
2D ClassificationSTEREmax F-Measure91.5DASNet
2D ClassificationRGBD135Average MAE0.042DASNet
2D ClassificationRGBD135S-Measure88.5DASNet
2D ClassificationRGBD135max F-Measure88.1DASNet
2D ClassificationNLPRAverage MAE0.021DASNet
2D ClassificationNLPRS-Measure92.9DASNet
2D ClassificationNLPRmax F-Measure92.9DASNet
2D ClassificationDESAverage MAE0.023DASNet
2D ClassificationDESS-Measure90.8DASNet
2D ClassificationDESmax F-Measure92.8DASNet
2D Object DetectionNJU2KAverage MAE0.042DASNet
2D Object DetectionNJU2KS-Measure90.2DASNet
2D Object DetectionNJU2Kmax F-Measure91.1DASNet
2D Object DetectionSTEREAverage MAE0.037DASNet
2D Object DetectionSTERES-Measure91DASNet
2D Object DetectionSTEREmax F-Measure91.5DASNet
2D Object DetectionRGBD135Average MAE0.042DASNet
2D Object DetectionRGBD135S-Measure88.5DASNet
2D Object DetectionRGBD135max F-Measure88.1DASNet
2D Object DetectionNLPRAverage MAE0.021DASNet
2D Object DetectionNLPRS-Measure92.9DASNet
2D Object DetectionNLPRmax F-Measure92.9DASNet
2D Object DetectionDESAverage MAE0.023DASNet
2D Object DetectionDESS-Measure90.8DASNet
2D Object DetectionDESmax F-Measure92.8DASNet
16kNJU2KAverage MAE0.042DASNet
16kNJU2KS-Measure90.2DASNet
16kNJU2Kmax F-Measure91.1DASNet
16kSTEREAverage MAE0.037DASNet
16kSTERES-Measure91DASNet
16kSTEREmax F-Measure91.5DASNet
16kRGBD135Average MAE0.042DASNet
16kRGBD135S-Measure88.5DASNet
16kRGBD135max F-Measure88.1DASNet
16kNLPRAverage MAE0.021DASNet
16kNLPRS-Measure92.9DASNet
16kNLPRmax F-Measure92.9DASNet
16kDESAverage MAE0.023DASNet
16kDESS-Measure90.8DASNet
16kDESmax F-Measure92.8DASNet

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