Enhanced Transfer Learning for Autonomous Driving with Systematic Accident Simulation

07/23/2020
by   Shivam Akhauri, et al.
10

Simulation data can be utilized to extend real-world driving data in order to cover edge cases, such as vehicle accidents. The importance of handling edge cases can be observed in the high societal costs in handling car accidents, as well as potential dangers to human drivers. In order to cover a wide and diverse range of all edge cases, we systemically parameterize and simulate the most common accident scenarios. By applying this data to autonomous driving models, we show that transfer learning on simulated data sets provide better generalization and collision avoidance, as compared to random initialization methods. Our results illustrate that information from a model trained on simulated data can be inferred to a model trained on real-world data, indicating the potential influence of simulation data in real world models and advancements in handling of anomalous driving scenarios.

READ FULL TEXT

page 2

page 3

page 5

page 7

page 8

research
07/25/2021

DR2L: Surfacing Corner Cases to Robustify Autonomous Driving via Domain Randomization Reinforcement Learning

How to explore corner cases as efficiently and thoroughly as possible ha...
research
02/27/2023

(Re)^2H2O: Autonomous Driving Scenario Generation via Reversely Regularized Hybrid Offline-and-Online Reinforcement Learning

Autonomous driving and its widespread adoption have long held tremendous...
research
02/05/2018

Real-time Prediction of Intermediate-Horizon Automotive Collision Risk

Advanced collision avoidance and driver hand-off systems can benefit fro...
research
05/30/2023

Scaling Planning for Automated Driving using Simplistic Synthetic Data

We challenge the perceived consensus that the application of deep learni...
research
05/19/2019

Multimodal 3D Object Detection from Simulated Pretraining

The need for simulated data in autonomous driving applications has becom...
research
03/15/2021

Improving Generalization of Transfer Learning Across Domains Using Spatio-Temporal Features in Autonomous Driving

Training vision-based autonomous driving in the real world can be ineffi...
research
11/30/2017

Transferring Autonomous Driving Knowledge on Simulated and Real Intersections

We view intersection handling on autonomous vehicles as a reinforcement ...

Please sign up or login with your details

Forgot password? Click here to reset