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Papers/Deep Contrast Learning for Salient Object Detection

Deep Contrast Learning for Salient Object Detection

Guanbin Li, Yizhou Yu

2016-03-07CVPR 2016 6Salient Object Detectionobject-detectionObject DetectionRGB Salient Object Detection
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Abstract

Salient object detection has recently witnessed substantial progress due to powerful features extracted using deep convolutional neural networks (CNNs). However, existing CNN-based methods operate at the patch level instead of the pixel level. Resulting saliency maps are typically blurry, especially near the boundary of salient objects. Furthermore, image patches are treated as independent samples even when they are overlapping, giving rise to significant redundancy in computation and storage. In this CVPR 2016 paper, we propose an end-to-end deep contrast network to overcome the aforementioned limitations. Our deep network consists of two complementary components, a pixel-level fully convolutional stream and a segment-wise spatial pooling stream. The first stream directly produces a saliency map with pixel-level accuracy from an input image. The second stream extracts segment-wise features very efficiently, and better models saliency discontinuities along object boundaries. Finally, a fully connected CRF model can be optionally incorporated to improve spatial coherence and contour localization in the fused result from these two streams. Experimental results demonstrate that our deep model significantly improves the state of the art.

Results

TaskDatasetMetricValueModel
Object DetectionDUTS-TEMAE0.081DCL
Object DetectionDUTS-TEmax F-measure0.786DCL
3DDUTS-TEMAE0.081DCL
3DDUTS-TEmax F-measure0.786DCL
RGB Salient Object DetectionDUTS-TEMAE0.081DCL
RGB Salient Object DetectionDUTS-TEmax F-measure0.786DCL
2D ClassificationDUTS-TEMAE0.081DCL
2D ClassificationDUTS-TEmax F-measure0.786DCL
2D Object DetectionDUTS-TEMAE0.081DCL
2D Object DetectionDUTS-TEmax F-measure0.786DCL
16kDUTS-TEMAE0.081DCL
16kDUTS-TEmax F-measure0.786DCL

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