no code implementations • 11 Jul 2024 • Antonio Hernández Martínez, Iván García Daza, Carlos Fernández López, David Fernández Llorca
However, it is still unclear how models trained on synthetic data can be effectively applied to real world conditions.
no code implementations • 21 Feb 2024 • David Fernández Llorca, Ronan Hamon, Henrik Junklewitz, Kathrin Grosse, Lars Kunze, Patrick Seiniger, Robert Swaim, Nick Reed, Alexandre Alahi, Emilia Gómez, Ignacio Sánchez, Akos Kriston
This study explores the complexities of integrating Artificial Intelligence (AI) into Autonomous Vehicles (AVs), examining the challenges introduced by AI components and the impact on testing procedures, focusing on some of the essential requirements for trustworthy AI.
1 code implementation • 11 Dec 2023 • David Fernández Llorca, Pedro Frau, Ignacio Parra, Rubén Izquierdo, Emilia Gómez
This paper addresses the often overlooked issue of fairness in the autonomous driving domain, particularly in vision-based perception and prediction systems, which play a pivotal role in the overall functioning of Autonomous Vehicles (AVs).
no code implementations • 11 Dec 2023 • Rubén Izquierdo, Javier Alonso, Ola Benderius, Miguel Ángel Sotelo, David Fernández Llorca
The internal and external HMIs were integrated with implicit communication techniques, incorporating a combination of gentle and aggressive braking maneuvers within the crosswalk.
1 code implementation • 7 Dec 2022 • Sandra Carrasco Limeros, Sylwia Majchrowska, Joakim Johnander, Christoffer Petersson, David Fernández Llorca
In this work, we aim to improve the explainability of motion prediction systems by using different approaches.
no code implementations • 3 Nov 2022 • David Fernández Llorca, Vicky Charisi, Ronan Hamon, Ignacio Sánchez, Emilia Gómez
New emerging technologies powered by Artificial Intelligence (AI) have the potential to disruptively transform our societies for the better.
1 code implementation • 28 Oct 2022 • Sandra Carrasco Limeros, Sylwia Majchrowska, Joakim Johnander, Christoffer Petersson, Miguel Ángel Sotelo, David Fernández Llorca
First, we comprehensively analyse the evaluation metrics, identify the main gaps of current benchmarks, and propose a new holistic evaluation framework.
no code implementations • 4 Jul 2022 • Rubén Izquierdo, Álvaro Quintanar, David Fernández Llorca, Iván García Daza, Noelia Hernández, Ignacio Parra, Miguel Ángel Sotelo
The U-net model has been selected as the prediction kernel to generate future visual representations of the scene using an image-to-image regression approach.
no code implementations • 25 Apr 2022 • Rubén Izquierdo Gonzalo, Carlota Salinas Maldonado, Javier Alonso Ruiz, Ignacio Parra Alonso, David Fernández Llorca, Miguel Á. Sotelo
Conventional vehicles are certified through classical approaches, where different physical certification tests are set up on test tracks to assess required safety levels.
no code implementations • 20 Apr 2021 • Antonio Hernández Martínez, Javier Lorenzo Díaz, Iván García Daza, David Fernández Llorca
In this paper we explore, for the first time, the use of synthetic images generated from a driving simulator (e. g., CARLA) to address vehicle speed detection using a learning-based approach.
no code implementations • 19 Mar 2021 • David Fernández Llorca
The terminological landscape is rather cluttered when referring to autonomous driving or vehicles.
no code implementations • 12 Feb 2021 • Sandra Carrasco, David Fernández Llorca, Miguel Ángel Sotelo
Autonomous vehicles navigate in dynamically changing environments under a wide variety of conditions, being continuously influenced by surrounding objects.
no code implementations • 15 Jan 2021 • David Fernández Llorca, Antonio Hernández Martínez, Iván García Daza
The need to accurately estimate the speed of road vehicles is becoming increasingly important for at least two main reasons.