CVROOct 17, 2022

Event-based Stereo Depth Estimation from Ego-motion using Ray Density Fusion

arXiv:2210.08927v14 citationsh-index: 38Has Code
Originality Highly original
AI Analysis

This addresses depth estimation for event-based vision systems, particularly in egocentric applications, with a novel approach that avoids explicit matching.

The paper tackles depth estimation from stereo event cameras without explicit data association by fusing back-projected ray densities, achieving effective results on head-mounted camera data.

Event cameras are bio-inspired sensors that mimic the human retina by responding to brightness changes in the scene. They generate asynchronous spike-based outputs at microsecond resolution, providing advantages over traditional cameras like high dynamic range, low motion blur and power efficiency. Most event-based stereo methods attempt to exploit the high temporal resolution of the camera and the simultaneity of events across cameras to establish matches and estimate depth. By contrast, this work investigates how to estimate depth from stereo event cameras without explicit data association by fusing back-projected ray densities, and demonstrates its effectiveness on head-mounted camera data, which is recorded in an egocentric fashion. Code and video are available at https://github.com/tub-rip/dvs_mcemvs

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