Driver Action Prediction Using Deep (Bidirectional) Recurrent Neural Network

06/07/2017
by   Oluwatobi Olabiyi, et al.
0

Advanced driver assistance systems (ADAS) can be significantly improved with effective driver action prediction (DAP). Predicting driver actions early and accurately can help mitigate the effects of potentially unsafe driving behaviors and avoid possible accidents. In this paper, we formulate driver action prediction as a timeseries anomaly prediction problem. While the anomaly (driver actions of interest) detection might be trivial in this context, finding patterns that consistently precede an anomaly requires searching for or extracting features across multi-modal sensory inputs. We present such a driver action prediction system, including a real-time data acquisition, processing and learning framework for predicting future or impending driver action. The proposed system incorporates camera-based knowledge of the driving environment and the driver themselves, in addition to traditional vehicle dynamics. It then uses a deep bidirectional recurrent neural network (DBRNN) to learn the correlation between sensory inputs and impending driver behavior achieving accurate and high horizon action prediction. The proposed system performs better than other existing systems on driver action prediction tasks and can accurately predict key driver actions including acceleration, braking, lane change and turning at durations of 5sec before the action is executed by the driver.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/05/2021

A Deep-Learning Framework to Predict the Dynamics of a Human-Driven Vehicle Based on the Road Geometry

Many trajectory forecasting methods, implementing deterministic and stoc...
research
10/01/2019

Temporal Multimodal Fusion for Driver Behavior Prediction Tasks using Gated Recurrent Fusion Units

The Tactical Driver Behavior modeling problem requires understanding of ...
research
09/14/2021

Secure Your Ride: Real-time Matching Success Rate Prediction for Passenger-Driver Pairs

In recent years, online ride-hailing platforms have become an indispensa...
research
02/26/2019

Robust and Subject-Independent Driving Manoeuvre Anticipation through Domain-Adversarial Recurrent Neural Networks

Through deep learning and computer vision techniques, driving manoeuvres...
research
08/11/2021

Unsupervised Driver Behavior Profiling leveraging Recurrent Neural Networks

In the era of intelligent transportation, driver behavior profiling has ...
research
11/22/2019

Graph Convolution Networks for Probabilistic Modeling of Driving Acceleration

The ability to model and predict ego-vehicle's surrounding traffic is cr...
research
11/22/2018

Driver Behavior Recognition via Interwoven Deep Convolutional Neural Nets with Multi-stream Inputs

Recognizing driver behaviors is becoming vital for in-vehicle systems th...

Please sign up or login with your details

Forgot password? Click here to reset