TinyLid: Monitoring LiDAR Sensor Contamination with AI

July 8, 2024
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4 min read

Diagram of a LiDAR sensor system architecture, highlighting components for contamination monitoring.
The stakes in some engineering efforts are significantly higher than in others. While it might be alright if your gesture-controlled smart home automation system misfires from time to time, a self-driving vehicle that gets confused while it is out for a spin can lead to a deadly outcome. For this reason, these autonomous vehicles typically have a number of redundant systems to assist with navigation and obstacle avoidance. These systems may feature RGB depth cameras, LiDAR, and other sensing options to collect the most accurate information possible under a wide range of environmental conditions, but lidar sensors require maintenance to provide accurate information.

From an article in Hackster by Nick Bild.

However, the fact that a brand new vehicle that just rolled off of the dealer’s lot performs flawlessly does not mean that it will continue to do so after it has spent some time operating under real-world conditions. LiDAR units, for example, are prone to malfunction over time as contaminants are introduced into the sensor’s cover. Unless this situation is noticed and quickly remedied, the vehicle will unknowingly be acting on inaccurate data, which may lead to collisions or other serious consequences.

The stakes in some engineering efforts are significantly higher than in others. While it might be alright if your gesture-controlled smart home automation system misfires from time to time, a self-driving vehicle that gets confused while it is out for a spin can lead to a deadly outcome. For this reason, these autonomous vehicles typically have a number of redundant systems to assist with navigation and obstacle avoidance. These systems may feature RGB depth cameras, LiDAR, and other sensing options to collect the most accurate information possible under a wide range of environmental conditions.

However, the fact that a brand new vehicle that just rolled off of the dealer’s lot performs flawlessly does not mean that it will continue to do so after it has spent some time operating under real-world conditions. LiDAR units, for example, are prone to malfunction over time as contaminants are introduced into the sensor’s cover. Unless this situation is noticed and quickly remedied, the vehicle will unknowingly be acting on inaccurate data, which may lead to collisions or other serious consequences.

As the primary systems of self-driving cars continue to improve in performance, it is the secondary systems that deal with situations such as this that will need greater attention. Researchers at the University of Bologna in Italy are actively developing a system called TinyLid that continually monitors LiDAR sensors for contamination. This proved to be a challenging task, as the algorithm needs to run on-vehicle, near the LiDAR sensor, to ensure that problems are caught immediately.

The team’s goal was to develop an algorithm that can classify the type of contaminant that is found on the cover of a LiDAR unit. By knowing the specific issue, it would be possible to suggest a solution that can correct the problem, perhaps even in an automated manner. Toward that goal, they evaluated a number of machine learning algorithms to determine which ones performed well enough, and were also sufficiently lightweight computationally to run at the edge, to be useful for real-world applications.

A RISC-V-based microcontroller unit called GAP8 was selected for the task as it is known to be ultra-efficient, highly performant, and to use very little energy, making it ideal for edge computing applications. A preexisting automotive LiDAR dataset, which specifically labels different types of contamination, was also located for use in training the algorithms. The tested algorithms included classic one-dimensional machine learning models, as well as more advanced two- and three-dimensional models.

For the complete story on lidar sensors require maintenance CLICK HERE.

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Gene Roe - founder of Lidar News

3DSurvey - more than just photogrammetry software
Phoenix Lidar Systems

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