Article written at the occasion of the XRCE 20th anniversary celebration.
…but in fact, the first markup appeared hundreds of years ago.
Irish monks in the sixth century A.D. who were unfamiliar with the Latin language from the continent first …
Article written at the occasion of the XRCE 20th anniversary celebration .
His grammar contained 3,959 rules of the Sanskrit language, which describe how words are composed, how they combine into sentences, and what they mean.
This grammar probably didn’t …
Article written at the occasion of the XRCE 20th anniversary celebration, co-authored by Eduardo Cardenas, Christopher R. Dance, Stéphane Clinchant and Onno Zoeter.
However, as we all know, we do not live in an ideal world. And when we …
Article written at the occasion of the XRCE 20th anniversary celebration .
Since its beginnings in the 1940s, machine translation has been a subject of fascination for computer scientists. It has a unique position among artificial intelligence problems because …
Long read
This article describes a method to mine and discover how documents are organized in terms of layout and information using Sequential Pattern Mining techniques. This step is key in enabling Information Extraction, a critical task for archival …
This article is the first in a mini-series on Business Process Management (BPM), a widely adopted methodology to manage and improve processes across organizations*. This piece looks at ‘process design’, also known as ‘process modeling’ which is where you capture …
Blog author: Luis R. Ulloa
If you live in a city you’re probably spoilt for choice on how to get around – public transport, bike, car sharing, ride sharing or taxi. Yet, despite being faced with all these options, most …
“We’re working at pushing the boundaries of what’s possible, and that’s very exciting.”
In his role with Xerox research, Julien has been able to follow an unconventional approach for a research scientist …
Computer vision is important work in the field of artificial intelligence. Improvements in how machines observe and interpret their surroundings could bring about the kind of technological developments that, until now, have been the stuff of sci-fi movies.
But will …
This article was written for the occasion of the XRCE 20th anniversary celebration. Author: Jacki O’Neill
PDF version of the article
Since everyone from office worker to police officer uses computers nowadays, their design has a major impact on …
4th October 2013 – Article written at the occasion of the XRCE 20th anniversary celebration.
PDF version of the article
In the late 1880s a Russian-born doctor Leyzer Leyvi Zamengov created an easy-to-learn, politically neutral language aimed at transcending …
We love visual content. While the power of words is limited by language and cultural barriers, pictures and videos are a universal communication media which transcends such differences.
04 October 2013
With the availability of
NAVER LABS Europe 6-8 chemin de Maupertuis 38240 Meylan France Contact
To make robots autonomous in real-world everyday spaces, they should be able to learn from their interactions within these spaces, how to best execute tasks specified by non-expert users in a safe and reliable way. To do so requires sequential decision-making skills that combine machine learning, adaptive planning and control in uncertain environments as well as solving hard combinatorial optimization problems. Our research combines expertise in reinforcement learning, computer vision, robotic control, sim2real transfer, large multimodal foundation models and neural combinatorial optimization to build AI-based architectures and algorithms to improve robot autonomy and robustness when completing everyday complex tasks in constantly changing environments. More details on our research can be found in the Explore section below.
For a robot to be useful it must be able to represent its knowledge of the world, share what it learns and interact with other agents, in particular humans. Our research combines expertise in human-robot interaction, natural language processing, speech, information retrieval, data management and low code/no code programming to build AI components that will help next-generation robots perform complex real-world tasks. These components will help robots interact safely with humans and their physical environment, other robots and systems, represent and update their world knowledge and share it with the rest of the fleet. More details on our research can be found in the Explore section below.
Visual perception is a necessary part of any intelligent system that is meant to interact with the world. Robots need to perceive the structure, the objects, and people in their environment to better understand the world and perform the tasks they are assigned. Our research combines expertise in visual representation learning, self-supervised learning and human behaviour understanding to build AI components that help robots understand and navigate in their 3D environment, detect and interact with surrounding objects and people and continuously adapt themselves when deployed in new environments. More details on our research can be found in the Explore section below.
Details on the gender equality index score 2024 (related to year 2023) for NAVER France of 87/100.
1. Difference in female/male salary: 34/40 points
2. Difference in salary increases female/male: 35/35 points
3. Salary increases upon return from maternity leave: Non calculable
4. Number of employees in under-represented gender in 10 highest salaries: 5/10 points
The NAVER France targets set in 2022 (Indicator n°1: +2 points in 2024 and Indicator n°4: +5 points in 2025) have been achieved.
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Index NAVER France de l’égalité professionnelle entre les femmes et les hommes pour l’année 2024 au titre des données 2023 : 87/100
Détail des indicateurs :
1. Les écarts de salaire entre les femmes et les hommes: 34 sur 40 points
2. Les écarts des augmentations individuelles entre les femmes et les hommes : 35 sur 35 points
3. Toutes les salariées augmentées revenant de congé maternité : Incalculable
4. Le nombre de salarié du sexe sous-représenté parmi les 10 plus hautes rémunérations : 5 sur 10 points
Les objectifs de progression de l’Index définis en 2022 (Indicateur n°1 : +2 points en 2024 et Indicateur n°4 : +5 points en 2025) ont été atteints.
To make robots autonomous in real-world everyday spaces, they should be able to learn from their interactions within these spaces, how to best execute tasks specified by non-expert users in a safe and reliable way. To do so requires sequential decision-making skills that combine machine learning, adaptive planning and control in uncertain environments as well as solving hard combinatorial optimisation problems. Our research combines expertise in reinforcement learning, computer vision, robotic control, sim2real transfer, large multimodal foundation models and neural combinatorial optimisation to build AI-based architectures and algorithms to improve robot autonomy and robustness when completing everyday complex tasks in constantly changing environments.
The research we conduct on expressive visual representations is applicable to visual search, object detection, image classification and the automatic extraction of 3D human poses and shapes that can be used for human behavior understanding and prediction, human-robot interaction or even avatar animation. We also extract 3D information from images that can be used for intelligent robot navigation, augmented reality and the 3D reconstruction of objects, buildings or even entire cities.
Our work covers the spectrum from unsupervised to supervised approaches, and from very deep architectures to very compact ones. We’re excited about the promise of big data to bring big performance gains to our algorithms but also passionate about the challenge of working in data-scarce and low-power scenarios.
Furthermore, we believe that a modern computer vision system needs to be able to continuously adapt itself to its environment and to improve itself via lifelong learning. Our driving goal is to use our research to deliver embodied intelligence to our users in robotics, autonomous driving, via phone cameras and any other visual means to reach people wherever they may be.
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