Identity Recognition in Intelligent Cars with Behavioral Data and
LSTM-ResNet Classifier
- URL: http://arxiv.org/abs/2003.00770v1
- Date: Mon, 2 Mar 2020 11:24:05 GMT
- Title: Identity Recognition in Intelligent Cars with Behavioral Data and
LSTM-ResNet Classifier
- Authors: Michael Hammann, Maximilian Kraus, Sina Shafaei, Alois Knoll
- Abstract summary: We use gas and brake pedal pressure as input to our models.
Our classification approach is based on a combination of LSTM and ResNet.
We reach a final accuracy of 79.49 % on a 10-drivers subset of NUDrive and 96.90 % on a 5-drivers subset of UTDrive.
- Score: 5.238954896174913
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Identity recognition in a car cabin is a critical task nowadays and offers a
great field of applications ranging from personalizing intelligent cars to suit
drivers physical and behavioral needs to increasing safety and security.
However, the performance and applicability of published approaches are still
not suitable for use in series cars and need to be improved. In this paper, we
investigate Human Identity Recognition in a car cabin with Time Series
Classification (TSC) and deep neural networks. We use gas and brake pedal
pressure as input to our models. This data is easily collectable during driving
in everyday situations. Since our classifiers have very little memory
requirements and do not require any input data preproccesing, we were able to
train on one Intel i5-3210M processor only. Our classification approach is
based on a combination of LSTM and ResNet. The network trained on a subset of
NUDrive outperforms the ResNet and LSTM models trained solely by 35.9 % and
53.85 % accuracy respectively. We reach a final accuracy of 79.49 % on a
10-drivers subset of NUDrive and 96.90 % on a 5-drivers subset of UTDrive.
Related papers
- Cross-Camera Distracted Driver Classification through Feature Disentanglement and Contrastive Learning [13.613407983544427]
We introduce a robust model designed to withstand changes in camera position within the vehicle.
Our Driver Behavior Monitoring Network (DBMNet) relies on a lightweight backbone and integrates a disentanglement module.
Experiments conducted on the daytime and nighttime subsets of the 100-Driver dataset validate the effectiveness of our approach.
arXiv Detail & Related papers (2024-11-20T10:27:12Z) - Knowledge Distillation Neural Network for Predicting Car-following Behaviour of Human-driven and Autonomous Vehicles [2.099922236065961]
This study investigates the car-following behaviours of three vehicle pairs: HDV-AV, AV-HDV and HDV-HDV in mixed traffic.
We introduce a data-driven Knowledge Distillation Neural Network (KDNN) model for predicting car-following behaviour in terms of speed.
arXiv Detail & Related papers (2024-11-08T14:57:59Z) - MetaFollower: Adaptable Personalized Autonomous Car Following [63.90050686330677]
We propose an adaptable personalized car-following framework - MetaFollower.
We first utilize Model-Agnostic Meta-Learning (MAML) to extract common driving knowledge from various CF events.
We additionally combine Long Short-Term Memory (LSTM) and Intelligent Driver Model (IDM) to reflect temporal heterogeneity with high interpretability.
arXiv Detail & Related papers (2024-06-23T15:30:40Z) - Efficient Federated Learning with Spike Neural Networks for Traffic Sign
Recognition [70.306089187104]
We introduce powerful Spike Neural Networks (SNNs) into traffic sign recognition for energy-efficient and fast model training.
Numerical results indicate that the proposed federated SNN outperforms traditional federated convolutional neural networks in terms of accuracy, noise immunity, and energy efficiency as well.
arXiv Detail & Related papers (2022-05-28T03:11:48Z) - A Computer Vision-Based Approach for Driver Distraction Recognition
using Deep Learning and Genetic Algorithm Based Ensemble [1.8907108368038217]
distractions caused by mobile phones and other wireless devices pose a potential risk to road safety.
Our study aims to aid the already existing techniques in driver posture recognition by improving the performance in the driver distraction classification problem.
We present an approach using a genetic algorithm-based ensemble of six independent deep neural architectures, namely, AlexNet, VGG-16, EfficientNet B0, Vanilla CNN, Modified DenseNet, and InceptionV3 + BiLSTM.
arXiv Detail & Related papers (2021-07-28T13:39:31Z) - Learnable Online Graph Representations for 3D Multi-Object Tracking [156.58876381318402]
We propose a unified and learning based approach to the 3D MOT problem.
We employ a Neural Message Passing network for data association that is fully trainable.
We show the merit of the proposed approach on the publicly available nuScenes dataset by achieving state-of-the-art performance of 65.6% AMOTA and 58% fewer ID-switches.
arXiv Detail & Related papers (2021-04-23T17:59:28Z) - A Strong Baseline for Vehicle Re-Identification [1.9573380763700712]
Vehicle Re-ID aims to identify the same vehicle across different cameras.
In this paper, we first analyze the main factors hindering the Vehicle Re-ID performance.
We then present our solutions, specifically targeting the Track 2 of the 5th AI Challenge.
arXiv Detail & Related papers (2021-04-22T03:54:55Z) - A Driving Behavior Recognition Model with Bi-LSTM and Multi-Scale CNN [59.57221522897815]
We propose a neural network model based on trajectories information for driving behavior recognition.
We evaluate the proposed model on the public BLVD dataset, achieving a satisfying performance.
arXiv Detail & Related papers (2021-03-01T06:47:29Z) - Driving Style Representation in Convolutional Recurrent Neural Network
Model of Driver Identification [8.007800530105191]
We present a deep-neural-network architecture, we term D-CRNN, for building high-fidelity representations for driving style.
Using CNN, we capture semantic patterns of driver behavior from trajectories.
We then find temporal dependencies between these semantic patterns using RNN to encode driving style.
arXiv Detail & Related papers (2021-02-11T04:33:43Z) - Fine-Grained Vehicle Perception via 3D Part-Guided Visual Data
Augmentation [77.60050239225086]
We propose an effective training data generation process by fitting a 3D car model with dynamic parts to vehicles in real images.
Our approach is fully automatic without any human interaction.
We present a multi-task network for VUS parsing and a multi-stream network for VHI parsing.
arXiv Detail & Related papers (2020-12-15T03:03:38Z) - LaNet: Real-time Lane Identification by Learning Road
SurfaceCharacteristics from Accelerometer Data [12.334058883768977]
We develop a deep LSTM neural network model LaNet that determines the lane vehicles are on by periodically classifying accelerometer samples.
LaNet learns lane-specific sequences of road surface events (bumps, cracks etc.) and yields 100% lane classification accuracy with 200 meters of driving data.
arXiv Detail & Related papers (2020-04-06T17:09:50Z) - AutoFIS: Automatic Feature Interaction Selection in Factorization Models
for Click-Through Rate Prediction [75.16836697734995]
We propose a two-stage algorithm called Automatic Feature Interaction Selection (AutoFIS)
AutoFIS can automatically identify important feature interactions for factorization models with computational cost just equivalent to training the target model to convergence.
AutoFIS has been deployed onto the training platform of Huawei App Store recommendation service.
arXiv Detail & Related papers (2020-03-25T06:53:54Z)
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.