Projects/Automatic translation software: Difference between revisions

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3. Minimize the work the decoder has to do by using a greedy search instead of a beam search, or have a very tight beam and other threshold.
3. Minimize the work the decoder has to do by using a greedy search instead of a beam search, or have a very tight beam and other threshold.
- Skills required: C++, statistical machine translation
- Skills required: C++, statistical machine translation

Other ideas and to-do's:
4. Diffrent language pairs
5. Speech-to-speech translation
6. Integrating Optical Character Recoginition (OCR) with translation



Revision as of 16:28, 13 March 2009

!!! Help from linguist, software developers and general dogs bodies gratefully received !!!

please email Mailing List for more info

Mission Statement and Objectives

We are creating a language translation application for the OLPC using the latest cutting-edge tools and systems taken from the automatic translation research community. Specifically, we are developing the application based on the Moses toolkit as the core component.

We are concentrating our effort developing a system for Quechua-Spanish translation to be deployed in Peru. However, the application framework and core will support any language pair.

Moses is an cutting-edge, open-source statistical machine translation (SMT) system. It is a widely used tool for academic research into automatic translation. Its reliability and maturity has also meant that the system has also gained traction outside of academia as a core component in commercial translation systems.

The challenge of creating an SMT system on the OLPC is immensed.

Firstly, it will be a challenge to run a complex translation system on a resource constrained device like the OLPC. We intend to use our expertise as the creators and developers of the Moses system to reduce the resource requirements thus enabling the application to run with acceptable performance.

Secondly, a front-end graphical user interface (GUI) needs to be developed. The Moses system was designed to work with GUI, however, only a command line interface has thus far been implemented for the research oriented user-base.

Lastly, parallel textual corpora need to be collated from which the translation ‘dictionary’ can be created for each language pair. The collection of such corpora is ad-hoc and may differ from country to country, however, such corpora are usually created from the output of governmental or mass media organisations. With the help of these resources, we will be able to build translation systems for languages pairs in many developing countries which are poorly served by commercial translation systems. The parallel corpora will be collated in collaboration with other researchers, volunteers and other interested parties.

Aside from the philanthropic aspects of the proposal, we hope that this project will increase interest and research into translation of minority languages in developing countries.

Project Ideas

Running a resource intensive application such as the Moses decoder is a challenge even on large servers in a well-funded academic institution.

We have outlined some ideas below to develop a system to enable school children in developing, equipped with a low resource laptop, to use our translation software.

 1. Create a client-server application which will run the resource intensive application on a server. Clients will be a Web browser or a custom Pythong app.
     - Skills required: Python, Apache, C++
 2. Fork the decoder source code to enable it to run on the OLPC. Minimize memory consumption, discard code not likely to be used by the application. 
     - Skills required: C++
 3. Minimize the work the decoder has to do by using a greedy search instead of a beam search, or have a very tight beam and other threshold.
     - Skills required: C++, statistical machine translation

Other ideas and to-do's:

 4. Diffrent language pairs
 5. Speech-to-speech translation
 6. Integrating Optical Character Recoginition (OCR) with translation


Progress

12th march 2009

OLPC laptops received ! It beautiful. And small

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