August 12, 2021 By David Bisson 2 min read

There’s something spooky going on. New research from the Ubiquitous System Security Lab, Zhejiang University Security and Privacy Research Group and the University of Michigan found ‘poltergeist’ (PG) attacks can fool autonomous vehicles in a way that hasn’t been seen before. Take a look at what the researchers found about how this attack works.

Vehicles with a self-driving feature rely on computer-enabled, object-based detection. This classifies objects, deciding what is an obstacle and what is a normal road condition. Using those decisions, autonomous vehicles make moves on their own. Poltergeist attackers tamper with those classification results.

Bombarding Self-Driving Cars With Acoustic Signals

To be specific, the poltergeist attack affects the stabilization of images detected by a vehicle. In their paper, the researchers noted this isn’t the same as past studies in which people showed the security risks of self-driving cars by targeting the main image sensors, such as the complementary metal-oxide semiconductor. Instead, they singled out inertial sensors. These provide an image stabilizer with motion feedback that it can use to reduce blur.

The researchers designed their PG attack to target those initial sensors with resonant acoustic signals. In doing so, they found that someone could gain control of the stabilizer. From there, the attacker could then perform one of the following three types of attacks:

  • Hiding Attacks: A threat actor could make a detected object, such as the rear of a car, disappear.
  • Creating Attacks: Someone could fool the computer detection systems into detecting an object that isn’t really there.
  • Altering Attacks: An attacker could cause the computer detection systems to classify one object as another.

In testing those attacks, the researchers saw a 100% success rate with people, cars, trucks, buses, traffic lights and stop signs with hiding attacks. The other two attack scenarios varied in success depending on which objects were involved and the extent to which they were targeted.

Researchers Leading Vehicle Hacking

Fooling object detection systems is just one of the types of attacks threat actors could use to prey upon self-driving vehicles. Others include using beams of light and adversarial machine learning to tamper with the vehicles’ decisions and/or performance.

Back in 2018, for instance, a hacker found that a threat actor could embed a custom piece of hardware into a self-driving vehicle. Then, they could use it to control almost any component of the car, including the brakes and speed.

In February 2020, another group of hackers made one type of autonomous vehicle speed up to 85 mph in a 35 mph zone.

Toward Better Cybersecurity in Autonomous Vehicles

The researchers working on the PG problem also offered some solutions. Vehicle makers who include a self-driving feature should include safeguards, such as using a microphone to detect acoustic injection attacks. They can also add adversarial training into their object detection algorithms.

In addition, autonomous vehicle manufacturers should ensure that third-party providers and others along their supply chains follow security best practices. This could keep malicious actors out of the supplier’s network, removing the chance for follow-up attacks.

Self-driving cars may seem like a sign of the future, but keeping threat actors from taking control of them is a problem researchers have been working on for years. This new type of attack is just one example of that.

More from News

FYSA – Adobe Cold Fusion Path Traversal Vulnerability

2 min read - Summary Adobe has released a security bulletin (APSB24-107) addressing an arbitrary file system read vulnerability in ColdFusion, a web application server. The vulnerability, identified as CVE-2024-53961, can be exploited to read arbitrary files on the system, potentially leading to unauthorized access and data exposure. Threat Topography Threat Type: Arbitrary File System Read Industries Impacted: Technology, Software, and Web Development Geolocation: Global Environment Impact: Web servers running ColdFusion 2021 and 2023 are vulnerable Overview X-Force Incident Command is monitoring the disclosure…

Research finds 56% increase in active ransomware groups

4 min read - Any good news is welcomed when evaluating cyber crime trends year-over-year. Over the last two years, IBM’s Threat Index Reports have provided some minor reprieve in this area by showing a gradual decline in the prevalence of ransomware attacks — now accounting for only 17% of all cybersecurity incidents compared to 21% in 2021. Unfortunately, it’s too early to know if this trendline will continue. A recent report released by Searchlight Cyber shows that there has been a 56% increase in…

Cyberattack on American Water: A warning to critical infrastructure

3 min read - American Water, the largest publicly traded United States water and wastewater utility, recently experienced a cybersecurity incident that forced the company to disconnect key systems, including its customer billing platform. As the company’s investigation continues, there are growing concerns about the vulnerabilities that persist in the water sector, which has increasingly become a target for cyberattacks. The breach is a stark reminder of the critical infrastructure risks that have long plagued the industry. While the water utility has confirmed that…

Topic updates

Get email updates and stay ahead of the latest threats to the security landscape, thought leadership and research.
Subscribe today