Litcius/Paper detail

CNN-Based Lidar Point Cloud De-Noising in Adverse Weather

Robin Heinzler, Florian Piewak, Philipp Schindler, Wilhelm Stork

2020IEEE Robotics and Automation Letters202 citationsDOIOpen Access PDF

Abstract

Lidar sensors are frequently used in environment perception for autonomous vehicles and mobile robotics to complement camera, radar, and ultrasonic sensors. Adverse weather conditions are significantly impacting the performance of lidar-based scene understanding by causing undesired measurement points that in turn effect missing detections and false positives. In heavy rain or dense fog, water drops could be misinterpreted as objects in front of the vehicle which brings a mobile robot to a full stop. In this letter, we present the first CNN-based approach to understand and filter out such adverse weather effects in point cloud data. Using a large data set obtained in controlled weather environments, we demonstrate a significant performance improvement of our method over state-of-the-art involving geometric filtering. Data is available at https://github.com/rheinzler/PointCloudDeNoising.

Topics & Concepts

Adverse weatherRemote sensingLidarEnvironmental scienceMeteorologyPoint cloudTrajectoryComplement (music)Computer scienceCloud computingFilter (signal processing)NowcastingSet (abstract data type)Point (geometry)Tracking (education)Mobile robotData setComputer visionArtificial intelligenceFront (military)RoboticsAdvanced Optical Sensing TechnologiesAdvanced Neural Network ApplicationsPrecipitation Measurement and Analysis