Video Registration in Egocentric Vision under Day and Night Illumination Changes
Stefano Alletto, Giuseppe Serra, Rita Cucchiara

TL;DR
This paper introduces a novel video registration method for egocentric videos that maintains high accuracy under challenging lighting conditions like day and night by improving local feature matching.
Contribution
A new embedding space for local feature matching that enhances robustness in egocentric video registration across varying illumination conditions.
Findings
Outperforms state-of-the-art registration algorithms.
Effective in day and night lighting variations.
Improves matching quality and registration accuracy.
Abstract
With the spread of wearable devices and head mounted cameras, a wide range of application requiring precise user localization is now possible. In this paper we propose to treat the problem of obtaining the user position with respect to a known environment as a video registration problem. Video registration, i.e. the task of aligning an input video sequence to a pre-built 3D model, relies on a matching process of local keypoints extracted on the query sequence to a 3D point cloud. The overall registration performance is strictly tied to the actual quality of this 2D-3D matching, and can degrade if environmental conditions such as steep changes in lighting like the ones between day and night occur. To effectively register an egocentric video sequence under these conditions, we propose to tackle the source of the problem: the matching process. To overcome the shortcomings of standard…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Image and Video Retrieval Techniques · Advanced Vision and Imaging
