Learning adaptive contrast combinations for visual saliency detection

Volume: 79, Issue: 21-22, Pages: 14419 - 14447
Published: Nov 7, 2018
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...
Paper Details
Title
Learning adaptive contrast combinations for visual saliency detection
Published Date
Nov 7, 2018
Volume
79
Issue
21-22
Pages
14419 - 14447
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