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Page 1: Semisupervised Multiview  Distance Metric Learning for Cartoon Synthesis

SEMISUPERVISED MULTIVIEW DISTANCE METRIC LEARNING FOR CARTOON SYNTHESIS

Jun Yu, Meng Wang, Member, IEEE, and Dacheng Tao, Senior Member, IEEE

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OUTLINE

Introduction Visual Feature Extraction for Character

Descriptions Semisupervised Multiview Distance Metric

Learning Results Conclusion

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INTRODUCTION

Paperless system MFBA algorithm Graph based Cartoon Synthesis (GCS) system Retrieval based Cartoon Synthesis (RCS)

system Unsupervised Bi-Distance Metric Learning (UB-DML) algorithm Semisupervised Multiview Distance Metric

Learning (SSM-DML)

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INTRODUCTION

They introduce three visual features, color histogram, shape context, and skeleton, to characterize the color, shape, and action, respectively, of a cartoon character.

These three features are complementary to each other, and each feature set is regarded as a single view.

They propose a semisupervised multiview distance metric learning (SSM-DML). SSM-DML can simultaneously accomplish cartoon character classification and dissimilarity measurement.

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INTRODUCTION

Distance metric

Suppose we have a dataset X consisting of N samples xi (1 ≤ i ≤ N) in space Rm, i.e., X = [x1, . . . , xN] ∈ Rm×N.

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VISUAL FEATURE EXTRACTION FOR CHARACTER DESCRIPTIONS

Color Histogram - Color Histogram (CH) is an effective representation of the

color information.

Shape Context - The shape context descriptor is a way of describing the

relative spatial distribution (distance and orientation) of the landmark points around feature points.

Skeleton Feature - Skeleton, which integrates both geometrical and

topological features of an object, is an important descriptor for object representation

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VISUAL FEATURE EXTRACTION FOR CHARACTER DESCRIPTIONS

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SEMISUPERVISED MULTIVIEW DISTANCE METRIC LEARNING

The traditional graph-based semi-supervised classification, named Local and Global Consistency (LLGC)

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SEMISUPERVISED MULTIVIEW DISTANCE METRIC LEARNING

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SEMISUPERVISED MULTIVIEW DISTANCE METRIC LEARNING

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SEMISUPERVISED MULTIVIEW DISTANCE METRIC LEARNING

Multiview Cartoon Character Classification -The module of multiview cartoon character classification is

used as data preprocessing step, which clusters characters into groups specified by the users.

Multiview Retrieval-Based Cartoon Synthesis -The main tasks of multiview retrieval based cartoon

synthesis are character initialization and path drawing.

Multiview Graph-Based Cartoon Synthesis

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RESULTS

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RESULTS

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RESULTS

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RESULTS

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RESULTS

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RESULTS

http://www.youtube.com/watch?v=lR_M7DBk8BU

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CONCLUSION

They investigate three visual features: color histogram, shape context and skeleton feature, to characterize the color, shape and action information of a cartoon character.

The Experimental evaluations based on the modules of Multiview Cartoon Character Classification (Multi-CCC), Multiview Graph based Cartoon Synthesis (Multi-GCS) and Multiview Retrieval based Cartoon Synthesis (Multi-RCS) suggest the effectiveness of the visual features and SSM-DML.

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ENDTHANKS FOR LISTENING