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Deeply supervised salient object detection with short connections

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Recent progress on saliency detection is substantial, benefiting mostly from the explosive development of Convolutional Neural Networks (CNNs). Semantic segmentation and saliency detection algorithms developed lately have been mostly based on Fully Convolutional Neural Networks (FCNs). There is still a large room for improvement over the generic FCN models that do not explicitly deal with the scale-space problem. Holistically-Nested Edge Detector (HED) provides a skip-layer structure with deep supervision for edge and boundary detection, but the performance gain of HED on salience detection is not obvious. In this paper, we propose a new method for saliency detection by introducing short connections to the skip-layer structures within the HED architecture. Our framework provides rich multi-scale feature maps at each layer, a property that is critically needed to perform segment detection. Our method produces state-of-the-art results on 5 widely tested salient object detection benchmarks, with advantages in terms of efficiency (0.15 seconds per image), effectiveness, and simplicity over the existing algorithms.

Qibin Hou, Ming-Ming Cheng, Xiao-Wei Hu, Ali Borji, Zhuowen Tu, Philip Torr• 2016

Related benchmarks

TaskDatasetResultRank
Salient Object DetectionDUTS (test)
M (MAE)0.057
302
Salient Object DetectionECSSD
MAE0.052
202
Salient Object DetectionPASCAL-S
MAE0.094
186
Salient Object DetectionHKU-IS
MAE0.041
155
Salient Object DetectionPASCAL-S (test)
MAE0.081
149
Salient Object DetectionDUT-OMRON
MAE0.092
120
Salient Object DetectionNLPR (test)
F-beta70.7
76
Saliency DetectionNJUD (test)
MAE0.071
68
Salient Object DetectionHRSOD (test)
F-beta0.826
65
Salient Object DetectionFBMS (test)
MAE0.083
58
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