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REU Presentation Week 3 Nicholas Baker
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What features “pop out” in a scene? No prior information/goal Identify areas of large feature contrasts in center-surround condition Luminance, color, orientation, motion Bottom Up Visual Salience
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Identify areas of high intrinsic dimensionality by analyzing the signal as Shannon information (Vig 2012) Identify areas of low level surprisal in a scene (Itti 2005) Weight continuity and visual clutter as well as local feature contrasts (He 2011) Separate feature matrix into low rank non-salient matrix and sparse salient matrix (Souly) Bottom up Visual Salience in Computer Vision
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Goal driven analysis of scene Direct visual attention to area/features of probable importance Locate objects/actions/features of exogenous significance Top Down Visual Salience
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Use CRF modulated dictionary learning to construct top down saliency map (Yang 2012) Use online Reinforced Learning to interactively teach machine how to correctly allocate attention using U-Tree algorithm (Borji 2009) Top Down Visual Salience in Computer Vision
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Most current top-down visual saliency work is on static images Choose one promising top-down method for static images Implement the algorithm if code is not available Extend it to perform on videos instead of static images My Work
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