Sustainable & Resilient Societies
Humanity is facing unprecedented challenges driven by climate change. As we cannot only count on technological solutions, people must be incentivized to contribute to more resilient and sustainable societies.
Designing and adapting artificial intelligence models to include people can help us to take on these challenges. With their multidisciplinary expertise, Idiap researchers can help to include this human dimension. Their work contributes to tackling misinformation while reducing energy costs, and to identifying relevant social trends while helping us to understand our environment.
Expertise domains
#Bioinformatics&HealthInformatics
#DataScience&SocialComputing
#HumanComputerInteraction
#Imaging&ComputerVision
#MachineLearning
#NaturalLanguageProcessing
#Robotics&AutonomousSystems
#Security&Privacy
#SignalProcessing
#Speech&AudioProcessing
This program contributes to the following UN SDG
More... Ensure sustainable consumption and production patterns.
More... Take urgent action to combat climate change and its impacts.
More... Promote peaceful and inclusive societies for sustainable development, provide access to justice for all and build effective, accountable and inclusive institutions at all levels.
More...
People
ABBET, Philip
(Senior Research and Development Engineer)
- website
AKSTINAITE, Vita
(Postdoctoral Researcher)
- website
BEN MAHMOUD, Imen
(Research and Development Engineer)
- website
BHATTACHARJEE, Sushil (Kumar)
(Research Associate)
- website
BOGHETTI, Roberto
(PhD Student / Research Assistant)
- website
BORNET, Olivier
(Head of Research and Development Team)
- website
BURDISSO, Sergio (Gastón)
(R&D / Research Assistant)
CANÉVET, Olivier
(Senior Research and Development Engineer)
- website
CAROFILIS VASCO, Roberto Andrés
(Postdoctoral Researcher)
- website
CARRON, Daniel
(Research and Development Engineer)
- website
CHEN, Haolin
(PhD Student / Research Assistant)
- website
CLIVAZ, Guillaume
(Senior Research and Development Engineer)
- website
COLBOIS, Laurent
(PhD Student / Research Assistant)
- website
COPPIETERS DE GIBSON, Louise
(PhD Student / Research Assistant)
- website
COSTA BARBOSA, Lucas
(Research Intern)
DAYER, Yannick
(Research and Development Engineer)
- website
DROZ, William
(Senior Research and Development Engineer)
- website
ECABERT, Christophe
(Postdoctoral Researcher)
- website
EL HAJAL, Karl
(PhD Student / Research Assistant)
- website
GAIST, Samuel
(Senior Research and Development Engineer)
- website
GARNER, Philip
(Senior Research Scientist)
- website
GEISSBUHLER, David
(Research Associate)
- website
GENTILHOMME, Théophile
(Senior Research and Development Engineer)
- website
GEORGE, Anjith
(Research Associate)
- website
HE, Mutian
(PhD Student / Research Assistant)
- website
HERMANN, Enno
(Postdoctoral Researcher)
- website
HOVSEPYAN, Sevada
(Research Associate)
- website
ISMAYILZADA, Mahammad
(PhD Student / Research Assistant)
- website
JIMÉNEZ DEL TORO, Oscar (Alfonso)
(Postdoctoral Researcher)
- website
JUNG, Vincent
(PhD Student / Research Assistant)
- website
KÄMPF, Jérôme
(Senior Research Scientist)
- website
KAYAL, Salim
(Senior Research and Development Engineer)
- website
KHALIL, Driss
(Junior R&D / Research Assistant)
- website
KOMATY, Alain
(Research Associate)
- website
KORSHUNOV, Pavel
(Research Associate)
- website
KOTWAL, Ketan
(Research Associate)
- website
KRIVOKUĆA HAHN, Vedrana
(Research Associate)
- website
KULKARNI, Ajinkya (Vijay)
(Postdoctoral Researcher)
- website
KUMAR, Shashi
(PhD Student / Research Assistant)
- website
LIEBLING, Michael
(Senior Research Scientist with Academic Title)
- website
LUÉVANO GARCÍA, Luis Santiago
(Postdoctoral Researcher)
- website
MACEIRAS, Jérémy
(Research and Development Engineer)
- website
MAGIMAI DOSS, Mathew
(Senior Research Scientist)
- website
MARCEL, Christine
(Senior Research and Development Engineer)
- website
MARCEL, Sébastien
(Senior Research Scientist with Academic Title)
- website
MAYORAZ, André
(Research and Development Engineer)
- website
MICHEL, Samuel
(Research and Development Engineer)
- website
MOHAMMADI, Amir
(Research Associate)
- website
MOTLICEK, Petr
(Senior Research Scientist)
- website
MURALIDHAR, Skanda
(Research Associate)
- website
NANCHEN, Alexandre
(Senior Research and Development Engineer)
- website
NEUGBER, Samuel
(R&D / Research Assistant)
- website
OTROSHI SHAHREZA, Hatef
(Postdoctoral Researcher)
- website
PANNATIER, Yvan
(Research Intern)
PETERSEN, Molly (Rose)
(PhD Student / Research Assistant)
- website
PIRAS, Florian
(Junior R&D / Research Assistant)
- website
POLAC, Magdalena
(R&D / Research Assistant)
- website
PRASAD, Amrutha
(PhD Student / Research Assistant)
- website
PUROHIT, Tilak
(PhD Student / Research Assistant)
- website
RAHIMI NOSHANAGH, Parsa
(PhD Student / Research Assistant)
- website
RANGAPPA, Pradeep
(Postdoctoral Researcher)
- website
RODRIGUE, Dubon
(Research Intern)
- website
SANCHEZ LARA, Alejandra
(Research Intern)
- website
SANCHEZ-CORTES, Dairazalia
(Research Assistant)
- website
SARKAR, Eklavya
(PhD Student / Research Assistant)
- website
SYLA, Valmir
(Research Intern)
TARIGOPULA, Neha
(PhD Student / Research Assistant)
- website
THORBECKE (NIGMATULINA), Iuliia
(PhD Student / Research Assistant)
- website
TORNAY, Sandrine
(Postdoctoral Researcher)
- website
ULUCAN, Ibrahim
(Research Assistant)
- website
VAN DER MEER, Michiel
(Postdoctoral Researcher)
- website
VAN DER PLAS, Lonneke
(External Research Fellow)
- website
VÁSQUEZ RODRÍGUEZ, Laura
(Postdoctoral Researcher)
- website
VERZAT, Colombine
(Research and Development Engineer)
- website
VIDIT, Vidit
(Postdoctoral Researcher)
- website
VILLATORO TELLO, Esaú
(Research Associate)
- website
VLASENKO, Bogdan
(Research Associate)
- website
ZANGGER, Alicia
(Research and Development Engineer)
- website
ZHANG, Alice (Chi)
(Visitor)
- website
Publication highlights
Integrating daylight with general and task lighting: A longitudinal in-the-wild study in individual and open space working areas, Chantal Basurto, Michael Papinutto, Moreno Colombo, Roberto Boghetti, Kornelius Reutter, Julien Nembrini and Jérôme Kämpf, in: Solar Energy Advances, 2, 2022
This paper makes use of AI-based surrogate models to predict the indoor lighting conditions and control optimally the blinds and electric lighting to maintain visual comfort and achieve energy savings. More than 50% of electricity for lighting were saved without impacting significantly visual comfort over the course of our longitudinal experiment.
Comprehensive Vulnerability Evaluation of Face Recognition Systems to Template Inversion Attacks Via 3D Face Reconstruction, H. S. Otroshi and S. Marcel, IEEE TPAMI 2023, DOI ( https://ieeexplore.ieee.org/document/10239446 )
In this work, we propose a new method (called GaFaR) to reconstruct 3D faces from facial templates using a pretrained geometry-aware face generation network, and train a mapping from facial templates to the intermediate latent space of the face generator network. We train our mapping with a semi-supervised approach using real and synthetic face images. For real face images, we use a generative adversarial network (GAN)-based framework to learn the distribution of generator intermediate latent space. For synthetic face images, we directly learn the mapping from facial templates to the generator intermediate latent code. We demonstrated the transferability of our attack with state-of-the-art methods across other face recognition systems. We also performed practical presentation attacks on face recognition systems using the digital screen replay and printed photographs, and evaluated the vulnerability of face recognition systems to different template inversion attacks.
Claim-Dissector: An Interpretable Fact-Checking System with Joint Re-ranking and Veracity Prediction, Martin Fajcik, Petr Motlicek and Pavel Smrz, in: Association for Computational Linguistics, Findings of the Association for Computational Linguistics: ACL 2023:10184–10205, 2023.
This paper describes new latent variable model for fact-checking and fact-analysis, which given a claim and a set of retrieved provenances allows learning jointly: (i) what are the relevant provenances to this claim (ii) what is the veracity of this claim. We propose to disentangle the per-provenance relevance probability and its contribution to the final veracity probability in an interpretable way - the final veracity probability is proportional to a linear ensemble of per-provenance relevance probabilities. This way, it can be clearly identified the relevance of which sources contributes to what extent towards the final probability. We show that our system achieves state-of-the-art results on FEVER dataset comparable to two-stage systems typically used in traditional fact-checking pipelines, while it often uses significantly less parameters and computation.
Project highlights
Eguzki, 2020-2024, SFOE, KÄMPF: A simulation program for district heating networks based on artificial intelligence for the rapid and predictive resolution of complex looped networks
The project focuses on the pivotal role of district heating networks in harnessing lost heat for energy efficiency. It uses artificial intelligence to optimize network design, reduce costs, and minimize energy losses before significant investments are made.
TRESPASS, 2020-2024, H2020, MARCEL: Biometrics security and privacy preservation
The aim of this project is to combat rising security challenges with biometric technologies which are growing at a fast pace. More particularly, our researchers are investigating new types of security protection (e.g. presentation attack detection (PAD), morphing attack detection (MAD), deepfake detection (DD) or poisoning detection technologies) and privacy preservation (e.g. vulnerability assessment, template protection or computationally feasible encryption solutions).
CRiTERIA, 2021-2024, H2020, MOTLICEK: Comprehensive data-driven Risk and Threat Assessment Methods for the Early and Reliable Identification, Validation and Analysis of migration-related risks
The project aims to strengthen and expand existing risk analysis methods by introducing a novel, comprehensive but feasible and human-rights sensitive risk and vulnerability analysis framework for border agencies. The project started in 2021 and runs for three years. Idiap contributes to the project by developing innovative solutions automatically extracting relevant evidence from spoken and textual resources. Among technologies developed by Idiap are: (a) multilingual automatic speech recognition, (b) fact-checking system (i.e., system which can verify a claim formulated in natural language, whether it is true or not, by confirming against other factoid sources, and (c) reliability detector (i.e., a tool which can automatically evaluate the reliability of source (related to general OSINT data) as an unavoidable block for the fact-checking system.
Full list of related projects
Eguzki and IVECT, 2020-2023, SFOE, Kämpf
Built environment sustainability
SOTERIA, 2022-2024, EU, Marcel
Face recognition anti-spoofing
GRAIL, 2022-2025, US IARPA, Marcel
Person recognition at a distance
TRESPASS, 2020-2024, EU, Marcel
Biometrics security and privacy preservation
CRiTERIA, 2021-2024, EU, Motlicek
Comprehensive data-driven risk and threat assessment methods for the early and reliable Identification, validation and analysis of migration-related risks
ROXANNE, 2019-2023, EU, Motlicek
Real-time network, text and speaker analytics for combating organized crime
TRACY, 2023-2025, EU, Motlicek
Big-data analytics from base-stations registrations and e-evidence system