Reducing Warning Errors in Driver Support with Personalized Risk Maps
- URL: http://arxiv.org/abs/2410.02148v1
- Date: Thu, 3 Oct 2024 02:13:40 GMT
- Title: Reducing Warning Errors in Driver Support with Personalized Risk Maps
- Authors: Tim Puphal, Ryohei Hirano, Takayuki Kawabuchi, Akihito Kimata, Julian Eggert,
- Abstract summary: We propose a warning system that estimates a personalized risk factor for the given driver based on the driver's behavior.
The system afterwards is able to adapt the warning signal with personalized Risk Maps.
- Score: 1.4230646728710978
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We consider the problem of human-focused driver support. State-of-the-art personalization concepts allow to estimate parameters for vehicle control systems or driver models. However, there are currently few approaches proposed that use personalized models and evaluate the effectiveness in the form of general risk warning. In this paper, we therefore propose a warning system that estimates a personalized risk factor for the given driver based on the driver's behavior. The system afterwards is able to adapt the warning signal with personalized Risk Maps. In experiments, we show examples for longitudinal following and intersection scenarios in which the novel warning system can effectively reduce false negative errors and false positive errors compared to a baseline approach which does not use personalized driver considerations. This underlines the potential of personalization for reducing warning errors in risk warning and driver support.
Related papers
- Optimal Driver Warning Generation in Dynamic Driving Environment [8.680694504513696]
Existing driver warning technologies can reduce the risk of collision caused by human errors.
The warning generation problem is formulated as a partially observed Markov decision process (POMDP)
An optimal warning generation framework is proposed as a solution to the proposed POMDP.
arXiv Detail & Related papers (2024-11-09T23:04:19Z) - Human-Based Risk Model for Improved Driver Support in Interactive Driving Scenarios [0.0]
We present a human-based risk model that uses driver information for improved driver support.
In extensive simulations, we show that our novel human-based risk model achieves earlier warning times and reduced warning errors.
arXiv Detail & Related papers (2024-10-03T02:10:13Z) - Considering Human Factors in Risk Maps for Robust and Foresighted Driver
Warning [1.4699455652461728]
We propose a warning system that uses human states in the form of driver errors.
The system consists of a behavior planner Risk Maps which directly changes its prediction of the surrounding driving situation.
In different simulations of a dynamic lane change and intersection scenarios, we show how the driver's behavior plan can become unsafe.
arXiv Detail & Related papers (2023-06-06T16:39:58Z) - Infrastructure-based End-to-End Learning and Prevention of Driver
Failure [68.0478623315416]
FailureNet is a recurrent neural network trained end-to-end on trajectories of both nominal and reckless drivers in a scaled miniature city.
It can accurately identify control failures, upstream perception errors, and speeding drivers, distinguishing them from nominal driving.
Compared to speed or frequency-based predictors, FailureNet's recurrent neural network structure provides improved predictive power, yielding upwards of 84% accuracy when deployed on hardware.
arXiv Detail & Related papers (2023-03-21T22:55:51Z) - Intersection Warning System for Occlusion Risks using Relational Local
Dynamic Maps [0.0]
This work addresses the task of risk evaluation in traffic scenarios with limited observability due to restricted sensorial coverage.
To identify the area of sight, we employ ray casting on a local dynamic map providing geometrical information and road infrastructure.
Resulting risk indicators are utilized to evaluate the driver's current behavior, to warn the driver in critical situations, to give suggestions on how to act safely or to plan safe trajectories.
arXiv Detail & Related papers (2023-03-13T16:01:55Z) - Cognitive Accident Prediction in Driving Scenes: A Multimodality
Benchmark [77.54411007883962]
We propose a Cognitive Accident Prediction (CAP) method that explicitly leverages human-inspired cognition of text description on the visual observation and the driver attention to facilitate model training.
CAP is formulated by an attentive text-to-vision shift fusion module, an attentive scene context transfer module, and the driver attention guided accident prediction module.
We construct a new large-scale benchmark consisting of 11,727 in-the-wild accident videos with over 2.19 million frames.
arXiv Detail & Related papers (2022-12-19T11:43:02Z) - Risk-Driven Design of Perception Systems [47.787943101699966]
It is important that we design perception systems to minimize errors that reduce the overall safety of the system.
We develop a risk-driven approach to designing perception systems that accounts for the effect of perceptual errors on the performance of the fully-integrated, closed-loop system.
We evaluate our techniques on a realistic vision-based aircraft detect and avoid application and show that risk-driven design reduces collision risk by 37% over a baseline system.
arXiv Detail & Related papers (2022-05-21T21:14:56Z) - Sample-Efficient Safety Assurances using Conformal Prediction [57.92013073974406]
Early warning systems can provide alerts when an unsafe situation is imminent.
To reliably improve safety, these warning systems should have a provable false negative rate.
We present a framework that combines a statistical inference technique known as conformal prediction with a simulator of robot/environment dynamics.
arXiv Detail & Related papers (2021-09-28T23:00:30Z) - Can Autonomous Vehicles Identify, Recover From, and Adapt to
Distribution Shifts? [104.04999499189402]
Out-of-training-distribution (OOD) scenarios are a common challenge of learning agents at deployment.
We propose an uncertainty-aware planning method, called emphrobust imitative planning (RIP)
Our method can detect and recover from some distribution shifts, reducing the overconfident and catastrophic extrapolations in OOD scenes.
We introduce an autonomous car novel-scene benchmark, textttCARNOVEL, to evaluate the robustness of driving agents to a suite of tasks with distribution shifts.
arXiv Detail & Related papers (2020-06-26T11:07:32Z) - Driver Intention Anticipation Based on In-Cabin and Driving Scene
Monitoring [52.557003792696484]
We present a framework for the detection of the drivers' intention based on both in-cabin and traffic scene videos.
Our framework achieves a prediction with the accuracy of 83.98% and F1-score of 84.3%.
arXiv Detail & Related papers (2020-06-20T11:56:32Z) - Who Make Drivers Stop? Towards Driver-centric Risk Assessment: Risk
Object Identification via Causal Inference [19.71459945458985]
We propose a driver-centric definition of risk, i.e., objects influencing drivers' behavior are risky.
We present a novel two-stage risk object identification framework based on causal inference with the proposed object-level manipulable driving model.
Our framework achieves a substantial average performance boost over a strong baseline by 7.5%.
arXiv Detail & Related papers (2020-03-05T04:14:35Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.