Wei Sun, Kannan Srinivsan (The Ohio State University)

ZOOX Best Paper Award Runner-Up!

Being followed by other vehicles during driving is scary and causes privacy leakage (e.g., location), which can make our blood run cold and even make run moves. Moreover, deliberately following the other vehicles may cause significant traffic accidents. The following vehicle needs to maintain an appropriate separation from the following vehicle without getting lost and uncovered. To put the driver’s privacy and safety first, it is essential to discriminate between stalking vehicles (i.e., following abnormal vehicles) and normal following vehicles. However, there are no infrastructure-free and ubiquitous in-vehicle systems that can achieve abnormal following vehicle detection while driving.

To this end, we propose P2D2, a Privacy-Preserving Defensive Driving system that can detect the abnormal following vehicles through the sensor fusion. Specifically, we will use the camera to extract each following vehicle’s following time, and use the IMU sensors (e.g., Gyroscope ) to extract our vehicle’s critical driving behavior (e.g., making a left or right turn). We harness the space diversity of IMU sensing data to remove the artifacts of road surface conditions (e.g., bumps on the road surface) on critical driving behavior (CDB) detection. Then, we leverage the machine learning-based anomaly detection algorithm to detect the abnormal following vehicles based on the following vehicle’s following time and our vehicle’s critical driving behavior within the following time. Our experimental results show the F-1 score of 97.45% for the abnormal following vehicle detection in different driving scenarios during our daily traffic commute.

View More Papers

The “Beatrix” Resurrections: Robust Backdoor Detection via Gram Matrices

Wanlun Ma (Swinburne University of Technology), Derui Wang (CSIRO’s Data61), Ruoxi Sun (The University of Adelaide & CSIRO's Data61), Minhui Xue (CSIRO's Data61), Sheng Wen (Swinburne University of Technology), Yang Xiang (Digital Research & Innovation Capability Platform, Swinburne University of Technology)

Read More

Automata-Based Automated Detection of State Machine Bugs in Protocol...

Paul Fiterau-Brostean (Uppsala University, Sweden), Bengt Jonsson (Uppsala University, Sweden), Konstantinos Sagonas (Uppsala University, Sweden and National Technical University of Athens, Greece), Fredrik Tåquist (Uppsala University, Sweden)

Read More

Lightning Community Shout-Outs to:

(1) Jonathan Petit, Secure ML Performance Benchmark (Qualcomm) (2) David Balenson, The Road to Future Automotive Research Datasets: PIVOT Project and Community Workshop (USC Information Sciences Institute) (3) Jeremy Daily, CyberX Challenge Events (Colorado State University) (4) Mert D. Pesé, DETROIT: Data Collection, Translation and Sharing for Rapid Vehicular App Development (Clemson University) (5) Ning…

Read More