Motion and Structure from Event-based Normal Flow
Zhongyang Ren, Bangyan Liao, Delei Kong, Jinghang Li and, Peidong Liu, Laurent Kneip, Guillermo Gallego, Yi Zhou

TL;DR
This paper introduces a novel event-based normal flow approach for estimating camera motion and scene geometry, featuring a fast linear solver and a continuous-time nonlinear solver that handle agile motion effectively.
Contribution
It proposes a new geometric error formulation for event cameras, along with efficient linear and nonlinear solvers that improve accuracy and robustness over existing methods.
Findings
Linear solver outperforms existing methods in accuracy and speed.
Continuous-time nonlinear solver handles sudden motion changes effectively.
Method provides reliable initialization for nonlinear optimization.
Abstract
Recovering the camera motion and scene geometry from visual data is a fundamental problem in the field of computer vision. Its success in standard vision is attributed to the maturity of feature extraction, data association and multi-view geometry. The recent emergence of neuromorphic event-based cameras places great demands on approaches that use raw event data as input to solve this fundamental problem. Existing state-of-the-art solutions typically infer implicitly data association by iteratively reversing the event data generation process. However, the nonlinear nature of these methods limits their applicability in real-time tasks, and the constant-motion assumption leads to unstable results under agile motion. To this end, we rethink the problem formulation in a way that aligns better with the differential working principle of event cameras. We show that the event-based normal flow…
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Taxonomy
TopicsSimulation Techniques and Applications · Parallel Computing and Optimization Techniques · Model Reduction and Neural Networks
