Adaptive Illumination Control for Robot Perception
Yash Turkar, Shekoufeh Sadeghi, Karthik Dantu

TL;DR
This paper presents Lightning, a closed-loop illumination control framework for robotic perception that optimizes onboard lighting to enhance SLAM performance, using relighting, offline optimization, and imitation learning.
Contribution
It introduces a novel three-stage approach combining relighting, offline optimization, and imitation learning to adaptively control illumination for improved robot perception.
Findings
Significantly improves SLAM robustness in varied lighting conditions.
Reduces power consumption by optimizing illumination levels.
Enables real-time adaptive illumination control on mobile robots.
Abstract
Robot perception under low light or high dynamic range is usually improved downstream - via more robust feature extraction, image enhancement, or closed-loop exposure control. However, all of these approaches are limited by the image captured these conditions. An alternate approach is to utilize a programmable onboard light that adds to ambient illumination and improves captured images. However, it is not straightforward to predict its impact on image formation. Illumination interacts nonlinearly with depth, surface reflectance, and scene geometry. It can both reveal structure and induce failure modes such as specular highlights and saturation. We introduce Lightning, a closed-loop illumination-control framework for visual SLAM that combines relighting, offline optimization, and imitation learning. This is performed in three stages. First, we train a Co-Located Illumination…
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Taxonomy
TopicsAdvanced Vision and Imaging · Robotics and Sensor-Based Localization · Computer Graphics and Visualization Techniques
