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Edge Preserving and Multi-Scale Contextual Neural Network for Salient Object Detection

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arxiv 1608.08029 v2 pith:3HGEFCGE submitted 2016-08-29 cs.CV

Edge Preserving and Multi-Scale Contextual Neural Network for Salient Object Detection

classification cs.CV
keywords detectionmulti-scaleobjectachievescontextualfirstframeworkmethods
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we propose a novel edge preserving and multi-scale contextual neural network for salient object detection. The proposed framework is aiming to address two limits of the existing CNN based methods. First, region-based CNN methods lack sufficient context to accurately locate salient object since they deal with each region independently. Second, pixel-based CNN methods suffer from blurry boundaries due to the presence of convolutional and pooling layers. Motivated by these, we first propose an end-to-end edge-preserved neural network based on Fast R-CNN framework (named RegionNet) to efficiently generate saliency map with sharp object boundaries. Later, to further improve it, multi-scale spatial context is attached to RegionNet to consider the relationship between regions and the global scenes. Furthermore, our method can be generally applied to RGB-D saliency detection by depth refinement. The proposed framework achieves both clear detection boundary and multi-scale contextual robustness simultaneously for the first time, and thus achieves an optimized performance. Experiments on six RGB and two RGB-D benchmark datasets demonstrate that the proposed method achieves state-of-the-art performance.

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