ART Track: Your personal Art Space

Improve and enhance a person's interaction with Art through personalised statistics and Machine Learning.

My Art Cave App

This is work in progress. Currently only a skeleton of the code is written and some basic functionalities. I am very much open for collaboration!

The purpose of this App is to improve and enhance a person's interaction with Art. It aims at enabling two main capabilities:

  1. Allow the user to learn more about and track the art works that he/she encounters over time and allow to answer questions like:
  2. Which art works have I seen in which galleries?
  3. Where can I see more work of an artist?
  4. How do the works that I've seen/liked relate to each other (e.g. based on art period, art school)?
  5. Which artists/art movements have I seen most often? They will also be able to give inputs about how they feel about the art works (e.g. inspiration, loneliness, connection). Furthermore the users will be able to share and connect with friends.

  6. Allow the users to enhance their art experience through Machine Learning, e.g. by using the following functionalities:

  7. Generate a poem from an image (ref. https://github.com/researchmm/img2poem)

  8. Classify an art work to an art movement

Technologies

The App is written in Python using the library Kivy. Based on the input for an artist name, it queries the API of WikiArt to retrieve artist details. This details are then stored in a DB.

Installing

Clone the GitHub and run pipenv install

Authors

  • Simona Doneva - Initial work
This content is a preview from an external site.
 

⚠️ This challenge has been pitched, but currently there is no team working on this project.

Event finished

17.04.2021 17:30

Edited content

16.04.2021 11:05 ~ loleg

Event started

16.04.2021 08:30

Joined the team

15.04.2021 22:28 ~ vieiragiulia

Repository updated

13.04.2021 20:50 ~ FH

Joined the team

13.04.2021 20:50 ~ FH

Repository updated

13.04.2021 16:55 ~ simonada

Joined the team

13.04.2021 16:43 ~ simonada

Challenge posted

13.04.2021 16:43 ~ simonada
 
Contributed 2 years ago by simonada for GLAMhack 2021

Connect to our community on: forum.opendata.ch | twitter | facebook

All attendees, sponsors, partners, volunteers and staff at our hackathon are required to agree with the Hack Code of Conduct. Organisers will enforce this code throughout the event. We expect cooperation from all participants to ensure a safe environment for everybody. For more details on how the event is run, see the Guidelines on our wiki.

Creative Commons LicenceThe contents of this website, unless otherwise stated, are licensed under a Creative Commons Attribution 4.0 International License.

GLAMhack 2021