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Learning adaptive contrast combinations for visual saliency detection
Authors:Zhou  Quan  Cheng  Jie  Lu  Huimin  Fan  Yawen  Zhang  Suofei  Wu  Xiaofu  Zheng  Baoyu  Ou  Weihua  Latecki  Longin Jan
Affiliation:1.National Engineering Research Center of Communications and Networking, Nanjing University of Posts & Telecommunications, Nanjing, People’s Republic of China
;2.State Key Laboratory for Novel Software Technology, Nanjing University, Nanjing, People’s Republic of China
;3.Huawei Technologies Co. Ltd., ShenZhen, People’s Republic of China
;4.Department of Mechanical and Control Engineering, Kyushu Institute of Technology, Kitakyushu, Japan
;5.School of Internet of Things, Nanjing University of Posts & Telecommunications, Nanjing, People’s Republic of China
;6.School of Big Data and Computer Science, Guizhou Normal University, Guiyang, People’s Republic of China
;7.Department of Computer and Information Sciences, Temple University, Philadelphia, USA
;
Abstract:

Visual saliency detection plays a significant role in the fields of computer vision. In this paper, we introduce a novel saliency detection method based on weighted linear multiple kernel learning (WLMKL) framework, which is able to adaptively combine different contrast measurements in a supervised manner. As most influential factor is contrast operation in bottom-up visual saliency, an average weighted corner-surround contrast (AWCSC) is first designed to measure local visual saliency. Combined with common-used center-surrounding contrast (CESC) and global contrast (GC), three types of contrast operations are fed into our WLMKL framework to produce the final saliency map. We show that the assigned weights for each contrast feature maps are always normalized in our WLMKL formulation. In addition, the proposed approach benefits from the advantages of the contribution of each individual contrast feature maps, yielding more robust and accurate saliency maps. We evaluated our method for two main visual saliency detection tasks: human fixed eye prediction and salient object detection. The extensive experimental results show the effectiveness of the proposed model, and demonstrate the integration is superior than individual subcomponent.

Keywords:
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