Tracking Snake-like Robots in the Wild Using Only a Single Camera
Jingpei Lu, Florian Richter, Shan Lin, Michael C. Yip

TL;DR
This paper presents a novel method for tracking snake-like robots in complex environments using only a single camera, combining differentiable rendering with Kalman filtering for accurate pose and joint estimation.
Contribution
It introduces a marker-less, single-camera tracking approach that estimates robot pose and joint angles simultaneously, even in unstructured and moving camera scenarios.
Findings
Achieved 0.05 m accuracy in base position localization
Estimated joint angles within 6 degrees of error
Validated in both stationary and moving camera setups
Abstract
Robot navigation within complex environments requires precise state estimation and localization to ensure robust and safe operations. For ambulating mobile robots like robot snakes, traditional methods for sensing require multiple embedded sensors or markers, leading to increased complexity, cost, and increased points of failure. Alternatively, deploying an external camera in the environment is very easy to do, and marker-less state estimation of the robot from this camera's images is an ideal solution: both simple and cost-effective. However, the challenge in this process is in tracking the robot under larger environments where the cameras may be moved around without extrinsic calibration, or maybe when in motion (e.g., a drone following the robot). The scenario itself presents a complex challenge: single-image reconstruction of robot poses under noisy observations. In this paper, we…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Vision and Imaging · Advanced Image and Video Retrieval Techniques
