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Papers/Learning Uncertain Convolutional Features for Accurate Sal...

Learning Uncertain Convolutional Features for Accurate Saliency Detection

Pingping Zhang, Dong Wang, Huchuan Lu, Hongyu Wang, Bao-Cai Yin

2017-08-07ICCV 2017 10Salient Object Detectionobject-detectionObject DetectionRGB Salient Object DetectionSaliency Detection
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Abstract

Deep convolutional neural networks (CNNs) have delivered superior performance in many computer vision tasks. In this paper, we propose a novel deep fully convolutional network model for accurate salient object detection. The key contribution of this work is to learn deep uncertain convolutional features (UCF), which encourage the robustness and accuracy of saliency detection. We achieve this via introducing a reformulated dropout (R-dropout) after specific convolutional layers to construct an uncertain ensemble of internal feature units. In addition, we propose an effective hybrid upsampling method to reduce the checkerboard artifacts of deconvolution operators in our decoder network. The proposed methods can also be applied to other deep convolutional networks. Compared with existing saliency detection methods, the proposed UCF model is able to incorporate uncertainties for more accurate object boundary inference. Extensive experiments demonstrate that our proposed saliency model performs favorably against state-of-the-art approaches. The uncertain feature learning mechanism as well as the upsampling method can significantly improve performance on other pixel-wise vision tasks.

Results

TaskDatasetMetricValueModel
Saliency DetectionDUT-OMRONMAE0.1203UCF
Object DetectionDUTS-TEMAE0.116UCF
Object DetectionDUTS-TEmax F-measure0.771UCF
3DDUTS-TEMAE0.116UCF
3DDUTS-TEmax F-measure0.771UCF
RGB Salient Object DetectionDUTS-TEMAE0.116UCF
RGB Salient Object DetectionDUTS-TEmax F-measure0.771UCF
2D ClassificationDUTS-TEMAE0.116UCF
2D ClassificationDUTS-TEmax F-measure0.771UCF
2D Object DetectionDUTS-TEMAE0.116UCF
2D Object DetectionDUTS-TEmax F-measure0.771UCF
16kDUTS-TEMAE0.116UCF
16kDUTS-TEmax F-measure0.771UCF

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