learning visual similarity measures for comparing never seen objects

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Learning Visual Similarity Measures for Comparing Never Seen Objects By: Eric Nowark, Frederic Juric Presented by: Khoa Tran

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Learning Visual Similarity Measures for Comparing Never Seen Objects. By: Eric Nowark , Frederic Juric Presented by: Khoa Tran. Outline. 1.) Purpose 2.) Methodology 3.) Results. Purpose. Object Recognition. Train Images. Test Images. Methodology Preview. - PowerPoint PPT Presentation

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Page 1: Learning Visual Similarity Measures for Comparing Never Seen Objects

Learning Visual Similarity Measures for Comparing Never Seen Objects

By: Eric Nowark, Frederic Juric

Presented by: Khoa Tran

Page 2: Learning Visual Similarity Measures for Comparing Never Seen Objects

Outline 1.) Purpose 2.) Methodology 3.) Results

Page 3: Learning Visual Similarity Measures for Comparing Never Seen Objects

Purpose

Object Recognition

Train Images

Test Images

Page 4: Learning Visual Similarity Measures for Comparing Never Seen Objects

Methodology Preview

A.) Corresponding patch pair

B.) Quantizing patch pair

C.) Patch pair similarity measure

Page 5: Learning Visual Similarity Measures for Comparing Never Seen Objects

Object Recognition 1.) Images 2.) Feature

Extraction 3.) Model Database 4.) Matching

a.) Hypothesis Generation

b.) Hypothesis Verification

Images

FeaturesExtraction

Model Database

Hypothesis Generation

Hypothesis Verification

Matching

Page 6: Learning Visual Similarity Measures for Comparing Never Seen Objects

Images Total: - 225 images,

- 21 different objects

Training Data Set - 1185 positive image pairs

- 7330 negative image pairs

- 14 different objects

Testing Data Set - 1044 positive image pairs

- 6337 negative image pairs

- 7 different objects

Page 7: Learning Visual Similarity Measures for Comparing Never Seen Objects

Feature Extraction Patches

Normalized Cross Correlation

SIFT Descriptors Matrix representation

Page 8: Learning Visual Similarity Measures for Comparing Never Seen Objects

Model Database Extremely

Randomized Binary Decision Tree SIFT Descriptors Geometric

Information

Information Gain

Page 9: Learning Visual Similarity Measures for Comparing Never Seen Objects

Model Database – SIFT Descriptors

Page 10: Learning Visual Similarity Measures for Comparing Never Seen Objects

Model Database

Page 11: Learning Visual Similarity Measures for Comparing Never Seen Objects

Hypothesis Generation – Similar Measure Similar Measure Support Vector Machine

Page 12: Learning Visual Similarity Measures for Comparing Never Seen Objects

Hypothesis Generation

Ferencz and Malik Faces in the NewsDataset Dataset

Page 13: Learning Visual Similarity Measures for Comparing Never Seen Objects

C.) Hypothesis Verification

Sammon mapping for toy cars

Page 14: Learning Visual Similarity Measures for Comparing Never Seen Objects

Results

1.) Toy Cars 2.) Ferencz

3.) Faces 4.) Coil 100

Page 15: Learning Visual Similarity Measures for Comparing Never Seen Objects

Reference Eric Nowak and Fredric Jurie; "Learning Visual

Similarity Measures for Comparing Never Seen Objects” ;Computer Vision and Pattern Recognition 2007 (CVPR'07);