Algorithm data for the 2017 aesthetic value project (NESP TWQ 3.2.3, Griffith Institute for Tourism Research)
This dataset contains the caffe deep-learning framework along with the setup for image aesthetic train and test code for the Algorithm data. We used NVIDIA-digit 6 environment and this version use caffe 0.15.14 More details information can be found in http://caffe.berkeleyvision.org .
This dataset consists of two folders which are related to automatic aesthetic rating of images using Deep Learning. .
GBR-Aesthetics-Data: This folder contains few sub folders.
1. data-images: - 2500 images used to survey the score.
- 2500 images after resize to 224x224 pixels
- imagenet mean file - a file essential for neural network training
- train list files - list of file names used for training
- test list files – list of file names used for testing
2. lmdb : Two sets of converted images and score into lmdb format. Lmdb format is required during train and test process.
3. tar.gz : tar file contains model definition, trained models and information related to configuration (solver) parameters
4. Qualtrics.xls file contains files names along with their surveyed scores.
5. Infer Many Images.html – Contains generated score from 500 test images using our deep learning model.
GBR-Aesthetics-code: It contains a caffe deep learning framework code.
Methods:
The following step were used to prepare the dataset:
1. Flickr API was used to download more than 10,000 images using a keyword “Great Barrier Reef”. About 10,000 pictures were downloaded in August and September 2017.
2. 2500 images were manually selected to conduct an online survey for manual score assessment based on several research criteria: (i) underwater pictures of GBR, (ii) without humans, (iii) viewed from 1-2 metres from objects and (iv) of high resolution.
3. The survey was created on Qualtrics website and launched on 4th October 2017 using Qualtrics survey service. 772 survey completions were recorded and 705 questionnaires were eligible for data analysis after filtering unqualified questionnaires.
4. At least 10 participants were used to score one picture in a range of 1 to 10. An average score was considered as an actual score.
5. The GBR-aesthetic-code folder actually contains the caffe deep-learning framework along with the setup for image aesthetic train and test code. More details information can be found in http://caffe.berkeleyvision.org . We used NVIDIA-digit 6 environment and this version use caffe 0.15.14
Format:
1. All image files are stored as JPEG (.jpg format) – This images are used for training and testing. However, files are converted to lmdb format before used for actual training process.
2. All deep learning configuration files are saved as recommended prototxt files.
3. lmdb format is used to prepare the final training sets.
4. training and test file lists are stored in txt files.
5. surveyed information are stored in xls files.
6. train_val.prototxt file describes the network definition used for training.
7. solver.protxt contains information related to network configuration parameters
8. snapshot_iter_3360.caffemodel- It is a trained model after 3360 iterations
9. deploy.prototxt- contains network definition of test process.
Data Location:
This dataset is filed in the eAtlas enduring data repository at: data\nesp3\3.2.3_Aesthetic-value-GBR
Simple
Identification info
- Date (Creation)
- 2019-01-28
- Date (Publication)
- 2019-11-25T00:00:00
- Cited responsible party
-
Role Organisation Name Telephone Delivery point City Administrative area Postal code Country Electronic mail address Principal investigator Griffith Institute for Tourism, Griffith University Becken, Susanne, Professor Voice Voice facsimile Business (G27) Room 3.05Director of Griffith Institute for TourismGriffith University, Gold Coast campus Gold Coast Queensland 4222 Australia s.becken@griffith.edu.au Collaborator School of Environment & Australian Rivers Institute - Coast & Estuaries Griffith University Connolly, Rod, Professor Voice facsimile Science 1 (G24) Room 4.06School of Environment & Australian Rivers Institute - Coast & EstuariesGriffith University, Gold Coast campus Gold Coast Queensland 4222 Australia r.connolly@griffith.edu.au Collaborator School of Information and Communication Technology Director of "Big Data and Smart Analytics" Lab - IIIS Griffith Sciences Stantic, Bela, Professor Voice facsimile Head of School of Information and Communication TechnologyDirector of "Big Data and Smart Analytics" Lab - IIISGriffith Sciences, Griffith University, Gold Coast campus Gold Coast Queensland 4222 Australia b.stantic@griffith.edu.au Collaborator Griffith Institute for Tourism Research Griffith University Scott, Noel, Professor Voice facsimile Business 2 (G27) Room 3.12Deputy Director of Griffith Institute for Tourism ResearchGriffith University, Gold Coast campus Gold Coast Queensland 4222 Australia noel.scott@griffith.edu.au Collaborator School of Information and Communication Technology Griffith University Mandal, Ranju, Dr Voice Voice facsimile School of Information and Communication TechnologyGriffith University, Gold Coast campus Gold Coast Queensland 4222 Australia r.mandal@griffith.edu.au Collaborator Griffith Institute for Tourism Research Le, Dung Voice facsimile Griffith Institute for Tourism ResearchGriffith University, Gold Coast campus Gold Coast Queensland 4222 Australia dung.le@griffithuni.edu.au
- Point of contact
-
Role Organisation Name Telephone Delivery point City Administrative area Postal code Country Electronic mail address Point of contact Griffith Institute for Tourism, Griffith University Becken, Susanne, Professor Voice Voice facsimile Business (G27) Room 3.05Director of Griffith Institute for TourismGriffith University, Gold Coast campus Gold Coast Queensland 4222 Australia s.becken@griffith.edu.au
- Topic category
-
- Biota
Extent
Extent
- Description
- Great Barrier Reef, Australia

Temporal extent
- Time period
- 2017-01-28 2018-01-28
Resource constraints
- Linkage
-
http://i.creativecommons.org/l/by/3.0/au/88x31.png
License Graphic
- Title
- Creative Commons Attribution 3.0 Australia License
- Cited responsible party
-
Role Organisation Name Telephone Delivery point City Administrative area Postal code Country Electronic mail address
- Website
-
http://creativecommons.org/licenses/by/3.0/au/
License Text
- Language
- English
- Character encoding
- UTF8
Distribution Information
- OnLine resource
- NESP TWQ Project page
- OnLine resource
- eAtlas Web Mapping Service (WMS) (AIMS)
- OnLine resource
- Project web site
- OnLine resource
- CSV + excel files + textfiles + GZ file + Binaryproto file + data images + Metadata [Zip 615 MB]
- OnLine resource
- GBR-Aesthetics-code GitHub account
Metadata constraints
- Linkage
-
http://i.creativecommons.org/l/by/3.0/au/88x31.png
License Graphic
- Title
- Creative Commons Attribution 3.0 Australia License
- Cited responsible party
-
Role Organisation Name Telephone Delivery point City Administrative area Postal code Country Electronic mail address
- Website
-
http://creativecommons.org/licenses/by/3.0/au/
License Text
Metadata
- Metadata identifier
- urn:uuid/a1d03d57-ab56-4032-b121-32e981524270
- Language
- English
- Character encoding
- UTF8
- Contact
-
Role Organisation Name Telephone Delivery point City Administrative area Postal code Country Electronic mail address Point of contact Australian Institute of Marine Science (AIMS) eAtlas Data Manager Voice facsimile PRIVATE MAIL BAG 3, TOWNSVILLE MAIL CENTRE Townsville Queensland 4810 Australia e-atlas@aims.gov.au
- Parent metadata
Type of resource
- Resource scope
- Application
- Metadata linkage
-
https://eatlas.org.au/data/uuid/a1d03d57-ab56-4032-b121-32e981524270
Point of truth URL of this metadata record
- Date info (Creation)
- 2020-11-18T04:44:23
- Date info (Revision)
- 2024-07-05T01:12:59.611Z
Metadata standard
- Title
- ISO 19115-3:2018