Addressing Data Annotation Challenges in Multiple Sensors: A Solution for Scania Collected Datasets
This addresses a specific data annotation bottleneck for autonomous vehicle perception systems, but it is incremental as it builds on existing annotation frameworks.
The paper tackles the challenge of annotating highly dynamic objects in multi-sensor autonomous vehicle data by proposing a method using Moving Horizon Estimation to estimate object speeds and correct bounding box positions, resulting in improved annotation accuracy for Scania datasets.
Data annotation in autonomous vehicles is a critical step in the development of Deep Neural Network (DNN) based models or the performance evaluation of the perception system. This often takes the form of adding 3D bounding boxes on time-sequential and registered series of point-sets captured from active sensors like Light Detection and Ranging (LiDAR) and Radio Detection and Ranging (RADAR). When annotating multiple active sensors, there is a need to motion compensate and translate the points to a consistent coordinate frame and timestamp respectively. However, highly dynamic objects pose a unique challenge, as they can appear at different timestamps in each sensor's data. Without knowing the speed of the objects, their position appears to be different in different sensor outputs. Thus, even after motion compensation, highly dynamic objects are not matched from multiple sensors in the same frame, and human annotators struggle to add unique bounding boxes that capture all objects. This article focuses on addressing this challenge, primarily within the context of Scania collected datasets. The proposed solution takes a track of an annotated object as input and uses the Moving Horizon Estimation (MHE) to robustly estimate its speed. The estimated speed profile is utilized to correct the position of the annotated box and add boxes to object clusters missed by the original annotation.