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Object Modeling with Layers

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Presentation on theme: "Object Modeling with Layers"— Presentation transcript:

1 Object Modeling with Layers
Charudatta Phatak Computational Photography (15-862) Final Project Presentation

2 Appearance Models A statistical model describing the shape and texture of the object of interest. Description of objects of D-dimensions in d-dimensional space with d < D. Objective - Object matching and recognition. Commonly used for faces.

3 Principal Component Analysis (PCA)
Given a point set , in an M-dim space, PCA finds a basis such that coefficients of the point set in that basis are uncorrelated first r < M basis vectors provide an approximate basis that minimizes the mean-squared-error (MSE) in the approximation (over all bases with dimension r) x1 x0 1st principal component 2nd principal component * Course Notes

4 PCA Problems - Objects with features completely absent, occluded are not modeled very well.

5 Layered Appearance Models
Define layers describing each feature Weights for each layer PCA for each layer

6 Results First eigenvector for Layered model
First eigenvector for Normal model

7 Random Sampling Normal model Layered model

8 Additional Functionality
Adding Features

9 Replacing Features

10 Feature Matching

11 Local Linear Embedding (LLE)
Similar to PCA Select nearest neighbors Compute Reconstruction weights Compute embedded space coordinates

12 LLE Results Roweis, 2000.

13 Normal vs. Layered LLE Layers Normal

14 LLE Results

15 Summary Layered PCA model successful for objects like car
LLE model - needs more images in dataset for comprehensive analysis

16 Questions ? Comments ?


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