Projects: Difference between revisions

From FDHwiki
Jump to navigation Jump to search
Line 30: Line 30:


The group will look at different cultural institutions and how they evolved hand in hand with the Paris Metro system.  
The group will look at different cultural institutions and how they evolved hand in hand with the Paris Metro system.  
The different maps selected for the project are the following:
[https://gallica.bnf.fr/ark:/12148/btv1b8442039n.r=metro%20paris?rk=64378;0 Supplément au journal "le Temps" du 14 avril 1886. Chemin de fer métropolitain de Paris]


- Valentine
- Valentine

Revision as of 06:48, 19 October 2018

Projects 2018

  • (1) Choose a Map on Gallica https://gallica.bnf.fr/accueil/?mode=desktop
  • (2) Extract the maximum information out of it (Train a segmenter, Train a handwritten recognition system)
  • (3) Export this information in other places in the Web or Build a website with specific services

Shortest-Path Route Extraction From City Map

This group will extract roads and intersections from a city map, assign coordinates to intersections, and build a web-interface that will allow a user to find the shortest-path route between two points.

Members: Jonathan and Florian

Train schedules

This project aims to find out the journeys, schedules and prices of train tickets between Paris, Geneva and Marseille in the middle of the 19th century and to compare them to actual ones. These data will be extracted from a document from 1858 by using modern tools such as handwritten recognition system. Eventually, a small program similar to the CFF app will be created so that one can put oneself in the shoes of a railway user of the 1850's.

Members: Anna Fredrikson and Olivier Dietrich

Recreating a cultural geography of Paris at the beginning of the XX century

A century in Beijing (Jimin & Anton)

Using this map by France's Service Géographique de l'Armée from 1900 we will follow the evolution of the urban landscape of the central part of China's capital through the decline of Qing dynasty, the birth of a republic, the establishment communism to the modern times. The city grew vey quickly over the last century and is now way past its old borders. While some things remained pretty unchanged like the Tiananmen Imperial Palace, numerous old constructions were demolished in an effort to modernize the town.

Paris Metropolitan, an evolution (Evgeniy Chervonenko and Valentine Bernasconi)

This group will analyze the evolution of the Paris Metropolitan system from its inception. The group will look at the maps of the planning as well as the execution of the metro. The goal is to analyze how different areas of high population densities, due to cultural attractions, evolved around the metro stations - basically answering the chicken and the egg question. The group will also look at the impact of the metro system during catastrophic events such as wars.


The group will look at different cultural institutions and how they evolved hand in hand with the Paris Metro system.

The different maps selected for the project are the following: Supplément au journal "le Temps" du 14 avril 1886. Chemin de fer métropolitain de Paris

- Valentine - Evgeniy

Past projects

All the projects are pieces of a larger puzzle. The goal is to experiment a new approach to knowledge production and negociation based on a platform intermediary between Wikipedia and Twitter.

The platform is called ClioWire

ClioWire: Platform management and development

This group will manage the experimental platform of the course. They will have to run platform and develop additional features for processing and presenting the pulses. The initial code base is Mastodon.

The group will write bots for rewritting pulses and progressively converging towards articulation/datafication of the pulses.

Knowledge required : Python, Javascript, basic linux administration.

Resp. Vincent and Orlin

- Albane - Cédric
Platform management and development : State of art and Bibliography

Platform management and development : methodology

Platform management and development : Quantitative analysis of performance

GitHub page of the project : [1]

Secondary sources

The goal is to extract from a collection of 3000 scanned books about Venice all the sentences containing at least two named entities and transforming them into pulses. This should consiste a de facto set of relevant information taking a large base of Venetian documents.

Resp. Giovanni / Matteo

- Hakim - Marion

Named Entity Recognition

GitHub page of the project : [2]

Primary sources

This group will look for named entities in digiitized manuscript and post pulses about these mentions.

  • The group will use Wordspotting methods based on commercial algorithm. During the project, the group will have to set up a dedicated pipeline for indexing and searching the document digitized in the Venice Time Machine project and other primary sources using the software component provided.
  • The group will have to search for list of names or regular expressions. A method based on predefined list will be compared with a recursive method based on the results provided by the Wordspotting components.
  • Two types of Pulses will be produced : (a) "Mention of Francesco Raspi in document X" (b) "Franseco Raspi and Battista Nanni linked (document Y)"
  • The creation of simple web Front end to test the Wordspotting algorithm would help assessing the quality of the method

Supervisor : Sofia

Skills : Java, simple Linux administration

- Raphael - Mathieu

Primary sources

Image banks

The goal is to transform the metadata of CINI which have been OCRed into pulses. One challenge is to deal with OCR errors and possible disambiguation.

Supervision: Lia

Newspaper, Wikipedia, Semantic Web

The goal is to find all the sentences in a large newspaper archive that contains at least 2 names entities. These sentences should be posted as pulses.

The named entity detection have already been done. The only challenge to retrieve the corresponding sentences in the digitized transcriptions.

In addition, this group should look for ways for importing massively element of knowledge from other sources (DBPedia, RDF databases)

Resp. Maud

Skills: Python or Java

- Laurene and Santiago


Newspaper, Wikipedia, Semantic Web : State of art and Bibliography