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V2P Collision Warnings for Distracted Pedestrians: A Comparative Study with Traditional Auditory Alerts

Certad, Novel, Del Re, Enrico, Varughese, Joshua, Olaverri-Monreal, Cristina

arXiv.org Artificial Intelligence

V2P Collision Warnings for Distracted Pedestrians: A Comparative Study with Traditional Auditory Alerts Novel Certad ID Graduate Student Member, IEEE, Enrico Del Re ID Student Member, IEEE, Joshua V arughese ID Member, IEEE, and Cristina Olaverri-Monreal ID Senior Member, IEEE Abstract -- This study assesses a V ehicle-to-Pedestrian (V2P) collision warning system compared to conventional vehicle-issued auditory alerts in a real-world scenario simulating a vehicle on a fixed track, characterized by limited maneuverability and the need for timely pedestrian response. The results from analyzing speed variations show that V2P warnings are particularly effective for pedestrians distracted by phone use (gaming or listening to music), highlighting the limitations of auditory alerts in noisy environments. The findings suggest that V2P technology offers a promising approach to improving pedestrian safety in urban areas I. I NTRODUCTION Road traffic accidents are a significant global concern, with a disproportionate number of fatalities and injuries affecting Vulnerable Road Users (VRUs) [1]. Among the various factors contributing to these accidents, pedestrian distraction, particularly due to smartphone use, has become a critical issue. Studies have shown that a substantial percentage of pedestrians engage with their smartphones while walking, leading to reduced situational awareness, increased risky behavior, and a higher likelihood of near collisions and accidents [1] [2].


Want a Ride? Attitudes Towards Autonomous Driving and Behavior in Autonomous Vehicles

Del Re, Enrico, Sauer, Leonie, Polli, Marco, Olaverri-Monreal, Cristina

arXiv.org Artificial Intelligence

With the introduction of autonomous vehicles on the streets, exemplified by driverless taxis from companies like Cruise and Waymo in San Francisco, the conversation around autonomous cars has evolved from futuristic speculation to a pressing issue in contemporary society Panasewicz and Jorge (2023). Public discourse, shaped by personal experiences with existing automation technologies (e.g., adaptive cruise control, lane-keeping assistance), media coverage, and the automotive industry, has emerged to discuss both the opportunities and challenges of widespread adoption of autonomous


Automated Vehicle Driver Monitoring Dataset from Real-World Scenarios

Sabry, Mohamed, Morales-Alvarez, Walter, Olaverri-Monreal, Cristina

arXiv.org Artificial Intelligence

From SAE Level 3 of automation onwards, drivers are allowed to engage in activities that are not directly related to driving during their travel. However, in level 3, a misunderstanding of the capabilities of the system might lead drivers to engage in secondary tasks, which could impair their ability to react to challenging traffic situations. Anticipating driver activity allows for early detection of risky behaviors, to prevent accidents. To be able to predict the driver activity, a Deep Learning network needs to be trained on a dataset. However, the use of datasets based on simulation for training and the migration to real-world data for prediction has proven to be suboptimal. Hence, this paper presents a real-world driver activity dataset, openly accessible on IEEE Dataport, which encompasses various activities that occur in autonomous driving scenarios under various illumination and weather conditions. Results from the training process showed that the dataset provides an excellent benchmark for implementing models for driver activity recognition.


IAMCV Multi-Scenario Vehicle Interaction Dataset

Certad, Novel, del Re, Enrico, Korndörfer, Helena, Schröder, Gregory, Morales-Alvarez, Walter, Tschernuth, Sebastian, Gankhuyag, Delgermaa, del Re, Luigi, Olaverri-Monreal, Cristina

arXiv.org Artificial Intelligence

The acquisition and analysis of high-quality sensor data constitute an essential requirement in shaping the development of fully autonomous driving systems. This process is indispensable for enhancing road safety and ensuring the effectiveness of the technological advancements in the automotive industry. This study introduces the Interaction of Autonomous and Manually-Controlled Vehicles (IAMCV) dataset, a novel and extensive dataset focused on inter-vehicle interactions. The dataset, enriched with a sophisticated array of sensors such as Light Detection and Ranging, cameras, Inertial Measurement Unit/Global Positioning System, and vehicle bus data acquisition, provides a comprehensive representation of real-world driving scenarios that include roundabouts, intersections, country roads, and highways, recorded across diverse locations in Germany. Furthermore, the study shows the versatility of the IAMCV dataset through several proof-of-concept use cases. Firstly, an unsupervised trajectory clustering algorithm illustrates the dataset's capability in categorizing vehicle movements without the need for labeled training data. Secondly, we compare an online camera calibration method with the Robot Operating System-based standard, using images captured in the dataset. Finally, a preliminary test employing the YOLOv8 object-detection model is conducted, augmented by reflections on the transferability of object detection across various LIDAR resolutions. These use cases underscore the practical utility of the collected dataset, emphasizing its potential to advance research and innovation in the area of intelligent vehicles.


Uncertainty-Aware Vehicle Energy Efficiency Prediction using an Ensemble of Neural Networks

Khiari, Jihed, Olaverri-Monreal, Cristina

arXiv.org Artificial Intelligence

The transportation sector accounts for about 25% of global greenhouse gas emissions. Therefore, an improvement of energy efficiency in the traffic sector is crucial to reducing the carbon footprint. Efficiency is typically measured in terms of energy use per traveled distance, e.g. liters of fuel per kilometer. Leading factors that impact the energy efficiency are the type of vehicle, environment, driver behavior, and weather conditions. These varying factors introduce uncertainty in estimating the vehicles' energy efficiency. We propose in this paper an ensemble learning approach based on deep neural networks (ENN) that is designed to reduce the predictive uncertainty and to output measures of such uncertainty. We evaluated it using the publicly available Vehicle Energy Dataset (VED) and compared it with several baselines per vehicle and energy type. The results showed a high predictive performance and they allowed to output a measure of predictive uncertainty.


Evaluating the acceptance of autonomous vehicles in the future

Carrasco, Angel Madridano, Gankhuyag, Delgermaa, Paraiso, Miguel Angel de Miguel, Lorite, Martin Palos, Olaverri-Monreal, Cristina, Fernandez, Fernando Garcia

arXiv.org Artificial Intelligence

The continuous advance of the automotive industry is leading to the emergence of more advanced driver assistance systems that enable the automation of certain tasks and that are undoubtedly aimed at achieving vehicles in which the driving task can be completely delegated. All these advances will bring changes in the paradigm of the automotive market, as is the case of insurance. For this reason, CESVIMAP and the Universidad Carlos III de Madrid are working on an Autonomous Testing pLatform for insurAnce reSearch (ATLAS) to study this technology and obtain first-hand knowledge about the responsibilities of each of the agents involved in the development of the vehicles of the future. This work gathers part of the advancements made in ATLAS, which have made it possible to have an autonomous vehicle with which to perform tests in real environments and demonstrations bringing the vehicle closer to future users. As a result of this work, and in collaboration with the Johannes Kepler University Linz, the impact, degree of acceptance and confidence of users in autonomous vehicles has been studied once they have taken a trip on board a fully autonomous vehicle such as ATLAS. This study has found that, while most users would be willing to use an autonomous vehicle, the same users are concerned about the use of this type of technology. Thus, understanding the reasons for this concern can help define the future of autonomous cars.


Implementation of Road Safety Perception in Autonomous Vehicles in a Lane Change Scenario

Del Re, Enrico, Olaverri-Monreal, Cristina

arXiv.org Artificial Intelligence

Understanding human driving behavior is crucial to develop autonomous vehicles' algorithms. However, most low level automation, such as the one in advanced driving assistance systems (ADAS), is based on objective safety measures, which are not always aligned with what the drivers perceive as safe and their correspondent driving behavior. Finding the bridge between the subjective perception and objective safety measures has been analyzed in this paper focusing specifically on lane-change scenarios. Results showed statistically significant differences between what is perceived as safe by drivers and objective metrics depending on the specific maneuver and location of drivers.