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SIGGRAPH 2010 Structure-based ASCII Art Xuemiao Xu, Linling Zhang, Tien-Tsin Wong The Chinese University of Hong Kong
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Since the 1860s, text art emerged… Since the 1860s, text art emerged…
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From the 1970s, ASCII art has been widely u sed… From the 1970s, ASCII art has been widely used…
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Today, ASCII art remains popular…
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ASCII Art Classification Structure-based Tone-based –Halftone approaches Regarded as dithering –O’Grady and Rickard [2008] Dithering essentially
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Structure-based –Manual Tedious ASCII Art Classification Automatic generation of structure-based ASCII art Tone-based –Halftone approaches Regarded as dithering –O’Grady and Rickard [2008] Dithering essentially
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Arbitrary image content Main Challenge
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Arbitrary image content Extremely limited character shapes Restrictive placement of characters Main Challenge
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_ _) Matching Strategies Character matching –Misalignment tolerance –Transformation awareness
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Matching Strategies Character matching –Misalignment tolerance –Transformation awareness Image deformation –Increase the chance of matching –Avoid over-deformation (_ _ _)
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Character matching –Misalignment tolerance –Transformation awareness Image deformation –increase the chance of matching –Avoid over-deformation Alignment-insensitive shape similarity metric Constrained deformation Matching Strategies
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Vectorized polylines Framework Input Rasterized image Current best matched characters Matching error map
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^ ) Current best matched characters Framework Matching error map Good matching Poor matching _ ; r ;
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Current best matched characters Framework Matching error map (') (_)
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Current best matched characters Framework Matching error map Deformation cost map Combined cost map
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Current best matched characters Framework Deformed image Optimal ASCII art
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Deformation cost of the vectorized images Objective Function E = D AISS. D deform Shape dissimilarity between ASCII and deformed images
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Main Contribution Shape Matching Alignment-Insensitive Shape Similarity (AISS) Metric Constrained Deformation Deformation Metric
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Matching requirements Misalignment tolerance Transformation awareness Scope Pattern recognition and image analysis, e.g. OCR AISS OCR O O 6 9
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Misalignment tolerance Log-polar diagram (5x12) Design of AISS log-polar diagram Log-polar histogram
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Transformation awareness Design of AISS h New sampling layout
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Query Shape Context Our metric Translation and scale invariant Metrics Comparison (1) Transformation-invariant metrics
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Over-emphasize overlapping Metrics Comparison (2) SSIM Query Our metric RMSE after blurring Alignment-sensitive metrics
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Main Contribution Shape Matching Alignment-Insensitive Shape Similarity (AISS) Metric Constrained Deformation Deformation Metric
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Constrained Deformation Local deformation constraint Accessibility constraint
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A B r’ r Local Deformation Constraint B’ A’
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Accessibility Constraint
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Optimization Corresponding ASCII art InputVectorized image
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Resolution=30X20 Resolution=20X15 Comparison InputO’Grady & RickardOur method
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Test set 3:Test set 2: Input By Artist Our Method O’Grady & Rickard Test set 1: Clarity Artists7.18 Our method7.09 O’Grady & Rickard4.15 User Study Similarity Artists6.86 Our method7.36 O’Grady & Rickard4.42 Input By Artist Our Method O’Grady & Rickard
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More Results
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Other Results
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Conclusion Mimic ASCII artists’ work by an optimization process Propose a novel alignment-insensitive shape similarity metric - also benefits pattern recognition Propose a new deformation metric to control over-deformation
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Do not consider the stylish variation of line thickness within a font Do not handle proportional placement of characters Affected by the quality of the vectorization Limitation AA
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Q&A
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