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Faces in Places: compound
query retrieval
Y. Zhong, R. Arandjelovic and A. Zisserman: Paper Link
BMVC 2016
1
Slides by Eva Mohedano and Andrea Calafell [GDoc]
UPC Computer Vision Reading Group (14/10/2016)
Outline
2
1. Introduction
2. Hybrid Network
3. The “Celebrity in Places” Dataset
4. Synthetic Training Images
5. Experiments and Results
6. Summary
Introduction
Large Image Dataset
System
3
Compound query
Introduction
Three contributions:
1. Hybrid CNN to produce place descriptors that are aware of faces and their
descriptors.
2. Collect and annotate a dataset of real images containing celebrities in different
places.
3. Image synthesis system to render high quality fully-labelled face-and-place
images to train the network.
4
Outline
5
1. Introduction
2. Hybrid Network
3. The “Celebrity in Places” Dataset
4. Synthetic Training Images
5. Experiments and Results
6. Summary
Basic Approach
6
Hybrid Network
7
Hybrid Network
8
AlexNet pre-trained on
Places205
VGG-16 trained on VGG
Face Dataset
FC7
FC7
Outline
9
1. Introduction
2. Hybrid Network
3. The “Celebrity in Places” Dataset
4. Synthetic Training Images
5. Experiments and Results
6. Summary
The “Celebrity in Places” Dataset
10
Example images from the CIP dataset
Includes:
● 4611 celebrities
● 16 places
Query texts in
Google Image
Search
2,5M
images Duplicate
removal
170K
images Mechanical
Turk
annotation
38K
images
The “Celebrity in Places” Dataset
11
Includes:
● 4611 celebrities
● 16 places
Query text in
Google Image
Search
2,5M
images Duplicate
removal
170k
images Mechanical
Turk
annotation
38k
images
Problems with this approach
● Difficult to obtain high quality images with
Image Search engines
● Obtained images highly unbalanced across
classes
Outline
12
1. Introduction
2. Hybrid Network
3. The “Celebrity in Places” Dataset
4. Synthetic Training Images
5. Experiments and Results
6. Summary
Synthetic Training Images
13
Synthetic Training Images
14
178k training images
8.7k validation images
Includes:
● 500 faces
● 16 places
Outline
15
1. Introduction
2. Hybrid Network
3. The “Celebrity in Places” Dataset
4. Synthetic Training Images
5. Experiments and Results
6. Summary
Experiments and Results
16
Comparison with 3 baselines of late fusion
● FC7 VGG faces + FC7 Places205 + L2norm
● FC7 VGG faces + FC7 Places205 finetuned on 16 places+ L2norm
● FC7 VGG faces + FC7 Places205 finetuned on 16 places+ Platt
Test sets statistics
Experiments and Results
17
Outline
18
1. Introduction
2. Hybrid Network
3. The “Celebrity in Places” Dataset
4. Synthetic Training Images
5. Experiments and Results
6. Summary
Summary
19
● They have presented a hybrid network for compound queries, where place
descriptors are aware of faces and face descriptors. This network outperforms
the baselines.
● They have designed an automatic pipeline to synthesize training images.
● They have collected a new dataset of real images to evaluate their methods.
Questions?
20

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Faces in Places: Compound Query Retrieval

  • 1. Faces in Places: compound query retrieval Y. Zhong, R. Arandjelovic and A. Zisserman: Paper Link BMVC 2016 1 Slides by Eva Mohedano and Andrea Calafell [GDoc] UPC Computer Vision Reading Group (14/10/2016)
  • 2. Outline 2 1. Introduction 2. Hybrid Network 3. The “Celebrity in Places” Dataset 4. Synthetic Training Images 5. Experiments and Results 6. Summary
  • 4. Introduction Three contributions: 1. Hybrid CNN to produce place descriptors that are aware of faces and their descriptors. 2. Collect and annotate a dataset of real images containing celebrities in different places. 3. Image synthesis system to render high quality fully-labelled face-and-place images to train the network. 4
  • 5. Outline 5 1. Introduction 2. Hybrid Network 3. The “Celebrity in Places” Dataset 4. Synthetic Training Images 5. Experiments and Results 6. Summary
  • 8. Hybrid Network 8 AlexNet pre-trained on Places205 VGG-16 trained on VGG Face Dataset FC7 FC7
  • 9. Outline 9 1. Introduction 2. Hybrid Network 3. The “Celebrity in Places” Dataset 4. Synthetic Training Images 5. Experiments and Results 6. Summary
  • 10. The “Celebrity in Places” Dataset 10 Example images from the CIP dataset Includes: ● 4611 celebrities ● 16 places Query texts in Google Image Search 2,5M images Duplicate removal 170K images Mechanical Turk annotation 38K images
  • 11. The “Celebrity in Places” Dataset 11 Includes: ● 4611 celebrities ● 16 places Query text in Google Image Search 2,5M images Duplicate removal 170k images Mechanical Turk annotation 38k images Problems with this approach ● Difficult to obtain high quality images with Image Search engines ● Obtained images highly unbalanced across classes
  • 12. Outline 12 1. Introduction 2. Hybrid Network 3. The “Celebrity in Places” Dataset 4. Synthetic Training Images 5. Experiments and Results 6. Summary
  • 14. Synthetic Training Images 14 178k training images 8.7k validation images Includes: ● 500 faces ● 16 places
  • 15. Outline 15 1. Introduction 2. Hybrid Network 3. The “Celebrity in Places” Dataset 4. Synthetic Training Images 5. Experiments and Results 6. Summary
  • 16. Experiments and Results 16 Comparison with 3 baselines of late fusion ● FC7 VGG faces + FC7 Places205 + L2norm ● FC7 VGG faces + FC7 Places205 finetuned on 16 places+ L2norm ● FC7 VGG faces + FC7 Places205 finetuned on 16 places+ Platt Test sets statistics
  • 18. Outline 18 1. Introduction 2. Hybrid Network 3. The “Celebrity in Places” Dataset 4. Synthetic Training Images 5. Experiments and Results 6. Summary
  • 19. Summary 19 ● They have presented a hybrid network for compound queries, where place descriptors are aware of faces and face descriptors. This network outperforms the baselines. ● They have designed an automatic pipeline to synthesize training images. ● They have collected a new dataset of real images to evaluate their methods.