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Papers/PiCANet: Learning Pixel-wise Contextual Attention for Sali...

PiCANet: Learning Pixel-wise Contextual Attention for Saliency Detection

Nian Liu, Junwei Han, Ming-Hsuan Yang

2017-08-21CVPR 2018 6RGB Salient Object DetectionSaliency Detection
PaperPDFCode(official)Code

Abstract

Contexts play an important role in the saliency detection task. However, given a context region, not all contextual information is helpful for the final task. In this paper, we propose a novel pixel-wise contextual attention network, i.e., the PiCANet, to learn to selectively attend to informative context locations for each pixel. Specifically, for each pixel, it can generate an attention map in which each attention weight corresponds to the contextual relevance at each context location. An attended contextual feature can then be constructed by selectively aggregating the contextual information. We formulate the proposed PiCANet in both global and local forms to attend to global and local contexts, respectively. Both models are fully differentiable and can be embedded into CNNs for joint training. We also incorporate the proposed models with the U-Net architecture to detect salient objects. Extensive experiments show that the proposed PiCANets can consistently improve saliency detection performance. The global and local PiCANets facilitate learning global contrast and homogeneousness, respectively. As a result, our saliency model can detect salient objects more accurately and uniformly, thus performing favorably against the state-of-the-art methods.

Results

TaskDatasetMetricValueModel
Object DetectionDUTS-TEMAE0.05PiCANet
Object DetectionDUTS-TES-Measure0.842PiCANet
Object DetectionDUTS-TEmax F-measure0.863PiCANet
Object DetectionDUTS-TEmean E-Measure0.853PiCANet
Object DetectionDUTS-TEmean F-Measure0.757PiCANet
Object DetectionSOCAverage MAE0.133PiCANet
Object DetectionSOCS-Measure0.801PiCANet
Object DetectionSOCmean E-Measure0.81PiCANet
3DDUTS-TEMAE0.05PiCANet
3DDUTS-TES-Measure0.842PiCANet
3DDUTS-TEmax F-measure0.863PiCANet
3DDUTS-TEmean E-Measure0.853PiCANet
3DDUTS-TEmean F-Measure0.757PiCANet
3DSOCAverage MAE0.133PiCANet
3DSOCS-Measure0.801PiCANet
3DSOCmean E-Measure0.81PiCANet
RGB Salient Object DetectionDUTS-TEMAE0.05PiCANet
RGB Salient Object DetectionDUTS-TES-Measure0.842PiCANet
RGB Salient Object DetectionDUTS-TEmax F-measure0.863PiCANet
RGB Salient Object DetectionDUTS-TEmean E-Measure0.853PiCANet
RGB Salient Object DetectionDUTS-TEmean F-Measure0.757PiCANet
RGB Salient Object DetectionSOCAverage MAE0.133PiCANet
RGB Salient Object DetectionSOCS-Measure0.801PiCANet
RGB Salient Object DetectionSOCmean E-Measure0.81PiCANet
2D ClassificationDUTS-TEMAE0.05PiCANet
2D ClassificationDUTS-TES-Measure0.842PiCANet
2D ClassificationDUTS-TEmax F-measure0.863PiCANet
2D ClassificationDUTS-TEmean E-Measure0.853PiCANet
2D ClassificationDUTS-TEmean F-Measure0.757PiCANet
2D ClassificationSOCAverage MAE0.133PiCANet
2D ClassificationSOCS-Measure0.801PiCANet
2D ClassificationSOCmean E-Measure0.81PiCANet
2D Object DetectionDUTS-TEMAE0.05PiCANet
2D Object DetectionDUTS-TES-Measure0.842PiCANet
2D Object DetectionDUTS-TEmax F-measure0.863PiCANet
2D Object DetectionDUTS-TEmean E-Measure0.853PiCANet
2D Object DetectionDUTS-TEmean F-Measure0.757PiCANet
2D Object DetectionSOCAverage MAE0.133PiCANet
2D Object DetectionSOCS-Measure0.801PiCANet
2D Object DetectionSOCmean E-Measure0.81PiCANet
16kDUTS-TEMAE0.05PiCANet
16kDUTS-TES-Measure0.842PiCANet
16kDUTS-TEmax F-measure0.863PiCANet
16kDUTS-TEmean E-Measure0.853PiCANet
16kDUTS-TEmean F-Measure0.757PiCANet
16kSOCAverage MAE0.133PiCANet
16kSOCS-Measure0.801PiCANet
16kSOCmean E-Measure0.81PiCANet

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