SOTAVerified

Expert-LaSTS: Expert-Knowledge Guided Latent Space for Traffic Scenarios

2022-07-19Code Available0· sign in to hype

Jonas Wurst, Lakshman Balasubramanian, Michael Botsch, Wolfgang Utschick

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Clustering traffic scenarios and detecting novel scenario types are required for scenario-based testing of autonomous vehicles. These tasks benefit from either good similarity measures or good representations for the traffic scenarios. In this work, an expert-knowledge aided representation learning for traffic scenarios is presented. The latent space so formed is used for successful clustering and novel scenario type detection. Expert-knowledge is used to define objectives that the latent representations of traffic scenarios shall fulfill. It is presented, how the network architecture and loss is designed from these objectives, thereby incorporating expert-knowledge. An automatic mining strategy for traffic scenarios is presented, such that no manual labeling is required. Results show the performance advantage compared to baseline methods. Additionally, extensive analysis of the latent space is performed.

Tasks

Reproductions