首页 /研究 /Making the Flow Glow – Robot Perception under Severe Lighting Conditions using Normalizing Flow Gradients
PERCEPTION

Making the Flow Glow – Robot Perception under Severe Lighting Conditions using Normalizing Flow Gradients

Simon Kristoffersson Lind, Rudolph Triebel, Volker Krüger

发表年份
2024
引用次数
1

摘要

Modern robotic perception is highly dependent on neural networks. It is well known that neural network-based perception can be unreliable in real-world deployment, especially in difficult imaging conditions. Out-of-distribution detection is commonly proposed as a solution for ensuring reliability in real-world deployment. Previous work has shown that normalizing flow models can be used for out-of-distribution detection to improve reliability of robotic perception tasks. Specifically, camera parameters can be optimized with respect to the likelihood output from a normalizing flow, which allows a perception system to adapt to difficult vision scenarios. With this work we propose to use the absolute gradient values from a normalizing flow, which allows the perception system to optimize local regions rather than the whole image. By setting up a table top picking experiment with exceptionally difficult lighting conditions, we show that our method achieves a 60% higher success rate for an object detection task compared to previous methods.

关键词

Flow (mathematics)Computer scienceRobotPerceptionMaterials scienceEnvironmental scienceArtificial intelligencePhysicsMechanicsPsychology

相关论文

查看 PERCEPTION 分类全部论文