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A Framework for Photo-Quality Assessment and Enhancement based on Visual Aesthetics Subhabrata Bhattacharya Rahul Sukthankar Mubarak Shah
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Reference http://www.cs.ucf.edu/~subh/
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Outline Introduction Learning Aesthetics Enhancing Composition Experimental Results
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Introduction Assessing the quality of photographs is challenging. Experienced photographers adhere to several rules of composition. Rule of Thirds Visual Weight Balance
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Subject of interest is aligned to one of the stress points. Rule of Thirds
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Rule of Thirds : Example
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In a well composed image the visual weights of different regions satisfy the Golden Ratio. Visual Weight Balance Sea Sky k ~1.618k
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Visual Weight Balance : Example
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Introduction In this paper, will use these two rules to assess an image. Formulate photo quality evaluation as a machine learning problem.
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Overview
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Learning Aesthetics Dataset User Survey Aesthetic Features Learning and Prediction
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Dataset Single subject Compositions (384)Landscapes/Seascapes (248)
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User Survey 15 participants were asked to assign integer rank from 1 to 5. Each user was asked to rank no more than 30 images. Generate single ground truth for each image (F a ).
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User Survey
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Aesthetic Feature Extract a relative foreground position feature for images with single-foreground compositions. A visual weight ratio feature for photographs of seascapes or landscapes.
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Defined as the normalized Euclidean distance between foreground’s mass to each four stress points. Relative foreground position
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The ratio of the sky region, to that in the support region ( ground or sea). Visual weight ratio YgYg YkYk
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Learning and Prediction We use SVR to learn the mappings. 150 random images for training and resting for testing.
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Enhancing Composition Relocate the foreground object to increase the predicted appeal factor. Better balancing the visual weights of the sky and support region.
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Why Cropping does not work? Optimal Crop
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Semantic Segmentation Input Image Geometric Context Classifier* *D. Hoiem, A.A. Efros, and M. Hebert, "Geometric Context from a Single Image", ICCV 2005 Sky Support Post Processing Horizon Segmented Foreground
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Optimal object placement Support Neighborhood s.t. neighbors stay “like neighbors” + Intensity Term Gradient Term
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Example PAF = 3.22 Original Image PAF = 4.53 Optimal Solution
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Rescaling Scaling Factor Vanishing Point Optimal location Visual Attention Center
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Inpainting Foreground Hole Yunjun Zhang. Jiangjian Xiao. Mubarak Shah, “Region Completion in a Single Image”, EUROGRAPHICS 04 Inpaint Hole
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Balancing visual weights YkYk YgYg Ratio of Current extents Y k +h YgYg h = vertical extent of the balanced image
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Experimental Results PAF = 3.77 PAF = 4.25 Before After
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Experimental Results PAF = 3.92PAF = 4.11 Before After
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PAF = 3.98 PAF = 4.46 Experimental Results Before After
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PAF = 4.02PAF = 4.34 BeforeAfter Experimental Results
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PAF = 3.13 PAF = 4.19 Experimental Results BeforeAfter
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PAF = 3.83 PAF = 4.02 Experimental Results Before After
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PAF = 3.92 PAF = 4.38 Experimental Results Before After
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Experimental Results PAF = 4.02 PAF = 4.71 Before After
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Experimental Results PAF = 4.17 PAF = 4.49 Before After
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Optimal Placement
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Visual Weights
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Failure case PAF = 2.34 Fa = 2.41 (Ground Truth) Before PAF = 3.63Fa = 2.54 (Ground Truth) After
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Thank You
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