XAI-based Feature Ensemble for Enhanced Anomaly Detection in Autonomous Driving Systems
- URL: http://arxiv.org/abs/2410.15405v1
- Date: Sun, 20 Oct 2024 14:34:48 GMT
- Title: XAI-based Feature Ensemble for Enhanced Anomaly Detection in Autonomous Driving Systems
- Authors: Sazid Nazat, Mustafa Abdallah,
- Abstract summary: This paper proposes a novel feature ensemble framework that integrates multiple Explainable AI (XAI) methods.
By fusing top features identified by these XAI methods across six diverse AI models, the framework creates a robust and comprehensive set of features critical for detecting anomalies.
Our technique demonstrates improved accuracy, robustness, and transparency of AI models, contributing to safer and more trustworthy autonomous driving systems.
- Score: 1.3022753212679383
- License:
- Abstract: The rapid advancement of autonomous vehicle (AV) technology has introduced significant challenges in ensuring transportation security and reliability. Traditional AI models for anomaly detection in AVs are often opaque, posing difficulties in understanding and trusting their decision making processes. This paper proposes a novel feature ensemble framework that integrates multiple Explainable AI (XAI) methods: SHAP, LIME, and DALEX with various AI models to enhance both anomaly detection and interpretability. By fusing top features identified by these XAI methods across six diverse AI models (Decision Trees, Random Forests, Deep Neural Networks, K Nearest Neighbors, Support Vector Machines, and AdaBoost), the framework creates a robust and comprehensive set of features critical for detecting anomalies. These feature sets, produced by our feature ensemble framework, are evaluated using independent classifiers (CatBoost, Logistic Regression, and LightGBM) to ensure unbiased performance. We evaluated our feature ensemble approach on two popular autonomous driving datasets (VeReMi and Sensor) datasets. Our feature ensemble technique demonstrates improved accuracy, robustness, and transparency of AI models, contributing to safer and more trustworthy autonomous driving systems.
Related papers
- Graph-Based Multi-Modal Sensor Fusion for Autonomous Driving [3.770103075126785]
We introduce a novel approach to multi-modal sensor fusion, focusing on developing a graph-based state representation.
We present a Sensor-Agnostic Graph-Aware Kalman Filter, the first online state estimation technique designed to fuse multi-modal graphs.
We validate the effectiveness of our proposed framework through extensive experiments conducted on both synthetic and real-world driving datasets.
arXiv Detail & Related papers (2024-11-06T06:58:17Z) - Transforming In-Vehicle Network Intrusion Detection: VAE-based Knowledge Distillation Meets Explainable AI [0.0]
This paper introduces an advanced intrusion detection system (IDS) called KD-XVAE that uses a Variational Autoencoder (VAE)-based knowledge distillation approach.
Our model significantly reduces complexity, operating with just 1669 parameters and achieving an inference time of 0.3 ms per batch.
arXiv Detail & Related papers (2024-10-11T17:57:16Z) - Generative Diffusion-based Contract Design for Efficient AI Twins Migration in Vehicular Embodied AI Networks [55.15079732226397]
Embodied AI is a rapidly advancing field that bridges the gap between cyberspace and physical space.
In VEANET, embodied AI twins act as in-vehicle AI assistants to perform diverse tasks supporting autonomous driving.
arXiv Detail & Related papers (2024-10-02T02:20:42Z) - Explainable AI for Comparative Analysis of Intrusion Detection Models [20.683181384051395]
This research analyzes various machine learning models to the tasks of binary and multi-class classification for intrusion detection from network traffic.
We trained all models to the accuracy of 90% on the UNSW-NB15 dataset.
We also discover that Random Forest provides the best performance in terms of accuracy, time efficiency and robustness.
arXiv Detail & Related papers (2024-06-14T03:11:01Z) - AIDE: An Automatic Data Engine for Object Detection in Autonomous Driving [68.73885845181242]
We propose an Automatic Data Engine (AIDE) that automatically identifies issues, efficiently curates data, improves the model through auto-labeling, and verifies the model through generation of diverse scenarios.
We further establish a benchmark for open-world detection on AV datasets to comprehensively evaluate various learning paradigms, demonstrating our method's superior performance at a reduced cost.
arXiv Detail & Related papers (2024-03-26T04:27:56Z) - Drive Anywhere: Generalizable End-to-end Autonomous Driving with
Multi-modal Foundation Models [114.69732301904419]
We present an approach to apply end-to-end open-set (any environment/scene) autonomous driving that is capable of providing driving decisions from representations queryable by image and text.
Our approach demonstrates unparalleled results in diverse tests while achieving significantly greater robustness in out-of-distribution situations.
arXiv Detail & Related papers (2023-10-26T17:56:35Z) - Sampling - Variational Auto Encoder - Ensemble: In the Quest of
Explainable Artificial Intelligence [0.0]
This paper contributes to the discourse on XAI by presenting an empirical evaluation based on a novel framework.
It is a hybrid architecture where VAE combined with ensemble stacking and SHapley Additive exPlanations are used for imbalanced classification.
The finding reveals that combining ensemble stacking, VAE, and SHAP can. not only lead to better model performance but also provide an easily explainable framework.
arXiv Detail & Related papers (2023-09-25T02:46:19Z) - AutoFed: Heterogeneity-Aware Federated Multimodal Learning for Robust
Autonomous Driving [15.486799633600423]
AutoFed is a framework to fully exploit multimodal sensory data on autonomous vehicles.
We propose a novel model leveraging pseudo-labeling to avoid mistakenly treating unlabeled objects as the background.
We also propose an autoencoder-based data imputation method to fill missing data modality.
arXiv Detail & Related papers (2023-02-17T01:31:53Z) - AI Maintenance: A Robustness Perspective [91.28724422822003]
We introduce highlighted robustness challenges in the AI lifecycle and motivate AI maintenance by making analogies to car maintenance.
We propose an AI model inspection framework to detect and mitigate robustness risks.
Our proposal for AI maintenance facilitates robustness assessment, status tracking, risk scanning, model hardening, and regulation throughout the AI lifecycle.
arXiv Detail & Related papers (2023-01-08T15:02:38Z) - Robust Semi-supervised Federated Learning for Images Automatic
Recognition in Internet of Drones [57.468730437381076]
We present a Semi-supervised Federated Learning (SSFL) framework for privacy-preserving UAV image recognition.
There are significant differences in the number, features, and distribution of local data collected by UAVs using different camera modules.
We propose an aggregation rule based on the frequency of the client's participation in training, namely the FedFreq aggregation rule.
arXiv Detail & Related papers (2022-01-03T16:49:33Z) - Detecting 32 Pedestrian Attributes for Autonomous Vehicles [103.87351701138554]
In this paper, we address the problem of jointly detecting pedestrians and recognizing 32 pedestrian attributes.
We introduce a Multi-Task Learning (MTL) model relying on a composite field framework, which achieves both goals in an efficient way.
We show competitive detection and attribute recognition results, as well as a more stable MTL training.
arXiv Detail & Related papers (2020-12-04T15:10:12Z)
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.