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Published byRoxanne Wilkinson Modified over 9 years ago
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Semi-supervised Mesh Segmentation and Labeling
asd Semi-supervised Mesh Segmentation and Labeling Jiajun Lv, Xinlei Chen, Jin Huang, Hujun Bao State Key Lab of CAD&CG, Zhejiang University
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Motivation Recognition of Mesh Semantic Meanings Head Torso Upper arm
asd Motivation Recognition of Mesh Semantic Meanings Head Torso Upper arm Lower arm Hand Upper leg Lower leg Foot
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asd Motivation 3D Modeling
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Related Work Geometric Structure Based Approaches
asd Related Work Geometric Structure Based Approaches Drawbacks: No Suitable Geometric Feature Data-driven Supervised Approaches Drawbacks: Large Size of Training Dataset Unsupervised Co-Segmentation Approaches Drawbacks: Inferior to Supervised Method
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Related Work Head Neck Torso Leg Tail Ear
asd Related Work Head Neck Torso Leg Tail Ear Learning 3d mesh segmentation and labeling, KALOGERAKIS E., 2010 Unsupervised co-segmentation of a set of shapes via descriptor-space spectral clustering, SIDI O., 2011 Learning boundary edges for 3D-mesh segmentation, BENHABILES H., 2011 Joint shape segmentation with linear programming, HUANG Q., 2011
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Semi-Supervised Learning
asd Semi-Supervised Learning
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Semi-Supervised Learning
asd Semi-Supervised Learning
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asd Method
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Key Technical Points Per-mesh Conditional Random Fields Model
asd Key Technical Points Per-mesh Conditional Random Fields Model Incorporation of unlabeled mesh information with an entropy term Learning Parameters with Virtual Evidence Boosting
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Definition Unary Features Labeled Meshes Semi-supervised
asd Definition Unary Features Labeled Meshes Semi-supervised Mesh Segmentation Pairwise Features Unlabeled Meshes
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Per-mesh Conditional Random Fields Model
asd Per-mesh Conditional Random Fields Model
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Incorporation of unlabeled mesh information with an entropy term
asd Incorporation of unlabeled mesh information with an entropy term Information Gain: Negative Conditional Entropy of the CRF on Unlabeled Meshes Greater Certainty
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Learning Parameters with Virtual Evidence Boosting
asd Learning Parameters with Virtual Evidence Boosting
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asd Learning Parameters with Virtual Evidence Boosting----Belief Propagation Information about distribution of sending node Information about which values recipient node should prefer
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Learning Parameters with Virtual Evidence Boosting----LogitBoost
asd Learning Parameters with Virtual Evidence Boosting----LogitBoost 1. Unary Energy Term 2. Pairwise Energy Term
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Results and Discussion
asd Results and Discussion
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asd Results The segmentation and labeling results of our semi-supervised mesh segmentation algorithm on the whole Princeton Segmentation Benchmark
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asd Results Experimental results of the semi-supervised mesh segmentation method. For each kind of dataset, the left column three are the labeled training dataset, and the right column three are the segmented meshes.
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asd Results Comparison of Supervised and Semi-supervised Approaches
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asd Results Semi-supervised Approach with Different Labeled Training Meshes
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asd Robustness Noise of the labeled set is inevitable, such as human mislabeling Entropy term acts as a regularizer, avoiding over- fitting to training data
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asd Robustness Comparison of Supervised and Semi-supervised Approaches on Inconsistent Labeled Data
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Complexity of The Method
asd Complexity of The Method Training Complexity Each Belief Propagation: Each Boosting Iteration: Labeling Complexity All Belief Propagation: All Boosting Iteration: Time Consumption Training: 7-12hours Labeling: a few minutes
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Limitation Manually tuning parameters Jagged and Disconnect Patches
asd Limitation Manually tuning parameters Jagged and Disconnect Patches Mesh with weak features
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Future Work Hierarchical Models
asd Future Work Hierarchical Models Partially Labeled Semi-supervised Mesh Segmentation
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Thank You For Your Attention !
asd Thank You For Your Attention !
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