Wed 19 Jul 2023 11:15 - 11:30 at Habib Classroom (Gates G01) - ISSTA 6: Testing 1 Chair(s): Karine Even-Mendoza

One of the aims of the development and spread of autonomous driving technology is to reduce traffic accidents caused by human factors.
But recently reported data on fatal accidents involving autonomous driving system (ADS) shows that this important goal has not been achieved.
So there is an emerge requirement on more comprehensive and targeted testing especially on safe driving.
In this paper, we propose an approach to automatically building critical testing scenarios from real-world accident data.
Firstly, we propose a new model called M-CPS (Multi-channel Panoptic Segmentation) to extract the effective information from the accident record (such as images or videos), and separate the independent individuals of different traffic participants for further scene recovery.
Compared with the traditional panoramic segmentation models, M-CPS model is able to effectively handle segmentation challenges due to the shooting angle, image quality, pixel overlap and other problems existing in the accident record.
Next, the extracted core information is then connected with the virtual testing platform to generate the original scene set.
Besides, we also design a mutation testing solution on the basis of the original scene set, thus greatly enriching the scene library for testing.
In our experiments,
the M-CPS model reaches a result of 66.1% PQ on CityScapes test set, shows that our model has only slight fluctuations on performance compared with the best benchmark model on pure panoptic segmentation task.
It also reaches a result of 84.5% IoU for semantic segmentation branch and 40.3% mAP for instance segmentation branch on SHIFT dataset.
Then we use UCF-Crime, CADP and US-Accidents datasets to generate the original and mutated scene set.
Those generated scene sets are connected to Apollo and Carla simulation platforms to test ADS prototypes.
We find three types of scenarios that can lead to accidents of ADS prototypes, which indicates that the existing ADS prototype has defects.
Our solution provides a new possible direction for the recovery of key scenarios in ADS testing, and can improve the efficiency in related fields.

Wed 19 Jul

Displayed time zone: Pacific Time (US & Canada) change

10:30 - 12:00
ISSTA 6: Testing 1Technical Papers at Habib Classroom (Gates G01)
Chair(s): Karine Even-Mendoza King’s College London
10:30
15m
Talk
Synthesizing Speech Test Cases with Text-to-Speech? An Empirical Study on the False Alarms in Automated Speech Recognition Testing
Technical Papers
Julia Kaiwen Lau Monash University Malaysia, Kelvin Kai Wen Kong Monash University Malaysia, Julian Hao Yong Monash University Malaysia, Per Hoong Tan Monash University Malaysia, Zhou Yang Singapore Management University, Zi Qian Yong Monash University Malaysia, Joshua Chern Wey Low Monash University Malaysia, Chun Yong Chong Monash University Malaysia, Mei Kuan Lim Monash University Malaysia, David Lo Singapore Management University
DOI
10:45
15m
Talk
PhysCov: Physical Test Coverage for Autonomous Vehicles
Technical Papers
Carl Hildebrandt University of Virginia, Meriel von Stein University of Virginia, Sebastian Elbaum University of Virginia
Link to publication DOI Pre-print
11:00
15m
Talk
BehAVExplor: Behavior Diversity Guided Testing for Autonomous Driving Systems
Technical Papers
Mingfei Cheng Singapore Management University, Yuan Zhou Nanyang Technological University, Xiaofei Xie Singapore Management University
DOI
11:15
15m
Talk
Building Critical Testing Scenarios for Autonomous Driving from Real Accidents
Technical Papers
Xudong Zhang Institute of Software at Chinese Academy of Sciences, Yan Cai Institute of Software at Chinese Academy of Sciences
DOI
11:30
15m
Talk
Virtual Reality (VR) Automated Testing in the Wild: A Case Study on Unity-Based VR Applications
Technical Papers
Dhia Elhaq Rzig University of Michigan - Dearborn, Nafees Iqbal University of Michigan at Dearborn, Isabella Attisano Villanova University, Xue Qin Villanova University, Foyzul Hassan University of Michigan at Dearborn
DOI
11:45
15m
Talk
Concept-Based Automated Grading of CS-1 Programming Assignments
Technical Papers
Zhiyu Fan National University of Singapore, Shin Hwei Tan Concordia University, Canada, Abhik Roychoudhury National University of Singapore
DOI