Superpixel attention guided network for accurate and real-time salient object detection

被引:0
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作者
Zhiheng Zhou
Yongfan Guo
Junchu Huang
Ming Dai
Ming Deng
Qingjun Yu
机构
[1] South China University of Technology,School of Electronic and Information Engineering
[2] South China University of Technology,Key Laboratory of Big Data and Intelligent Robot
[3] Ministry of Education,School of Digital Arts & Design
[4] Dalian Neusoft University of Information,undefined
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关键词
Salient object detection; Superpixel segmentation; Deep clustering; Image segmentation;
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暂无
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学科分类号
摘要
Edge information has been proven to be effective for remedying the unclear boundaries of salient objects. Current salient object detection (SOD) methods usually utilize edge detection as an auxiliary task to introduce explicit edge information. However, edge detection is unable to provide the indispensable regional information for SOD, which may result in incomplete salient objects. To alleviate this risk, observing that superpixels hold the inherent property that contains both edge and regional information, we propose a superpixel attention guided network (SAGN) in this paper. Specifically, we first devise a novel supervised deep superpixel clustering (DSC) method to form the relation between superpixels and SOD. Based on the DSC, we build a superpixel attention module (SAM), which provides superpixel attention maps that can neatly separate different salient foreground and background regions, while preserving accurate boundaries of salient objects. Under the guidance of the SAM, a lightweight decoder with a simple but effective structure is able to yield high-quality salient objects with accurate and sharp boundaries. Hence, our model only contains less than 5 million parameters and achieves a real-time speed of around 40 FPS. Whilst offering a lightweight model and fast speed, our method still outperforms other 11 state-of-the-art approaches on six benchmark datasets.
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页码:38921 / 38944
页数:23
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