Light-Constrained Structure-from-Motion
- We establish the viability of using burst imaging to improve robotic vision in low light, and provide a set of recommendations for adopting this approach in reconstruction tasks such as SfM
- We evaluate different approaches to burst imaging in robotics applications and show that burst capture with merge offers significant advantages in both computational requirements and performance
- We demonstrate more precise 3D points, more true features, fewer spurious features, more precise camera trajectories and an ability to operate in lower light than was previously possible
This work opens the way for a broad range of applications in which low light commonly complicates vision such as autonomous driving and delivery drones.
Publications
• A. Ravendran, M. Bryson, and D. G. Dansereau, “Burst imaging for light-constrained structure-from-motion,” IEEE Robotics and Automation Letters (RA-L, ICRA), vol. 7, no. 2, pp. 1040–1047, Apr. 2022. Available here.
Citing
@article{ravendran2022burst, title={Burst Imaging for Light-Constrained Structure-From-Motion}, author={Ahalya Ravendran and Mitch Bryson and Donald G. Dansereau}, journal = {IEEE Robotics and Automation Letters ({RA-L, ICRA})}, year = {2022}, volume = {7}, issue = {2}, pages = {1040--1047}, month = apr }
Downloads
The dataset used in the Light-Constrained SfM paper is here (13 GB or 32 GB download).
The dataset was captured with a UR5e robotic arm-mounted monocular camera, and contains 22 bursts of 7 images each, for 20 challenging scenes with a variety of objects in an environment with controlled lighting.
Gallery
(click to enlarge)
- Single frame captured over an exposure time of t ms.
- Multiple frames captured over short exposure times and merged naïvely. This is representative of a long exposure with motion blur.
- Aligning and merging frames.
(bottom row): Sweeping detection threshold, our method delivers a much higher TP rate and lower false positive (FP) count in high noise for appropriately set threshold.
Our method matches or outperforms conventional method in feature performance in noise.