IVCVDec 15, 2023

Learning-based Axial Video Motion Magnification

arXiv:2312.09551v32 citationsh-index: 4ECCV
Originality Incremental advance
AI Analysis

This work addresses the challenge of analyzing complex vibrating objects in applications like structural monitoring or medical imaging, though it is incremental as it builds on existing motion magnification techniques.

The paper tackles the problem of improving legibility in video motion magnification by introducing axial motion magnification, which magnifies motions along user-specified directions, resulting in simplified and more readable motion information with favorable performance against competing methods.

Video motion magnification amplifies invisible small motions to be perceptible, which provides humans with a spatially dense and holistic understanding of small motions in the scene of interest. This is based on the premise that magnifying small motions enhances the legibility of motions. In the real world, however, vibrating objects often possess convoluted systems that have complex natural frequencies, modes, and directions. Existing motion magnification often fails to improve legibility since the intricate motions still retain complex characteristics even after being magnified, which may distract us from analyzing them. In this work, we focus on improving legibility by proposing a new concept, axial motion magnification, which magnifies decomposed motions along the user-specified direction. Axial motion magnification can be applied to various applications where motions of specific axes are critical, by providing simplified and easily readable motion information. To achieve this, we propose a novel Motion Separation Module that enables to disentangle and magnify the motion representation along axes of interest. Furthermore, we build a new synthetic training dataset for the axial motion magnification task. Our proposed method improves the legibility of resulting motions along certain axes by adding a new feature: user controllability. Axial motion magnification is a more generalized concept; thus, our method can be directly adapted to the generic motion magnification and achieves favorable performance against competing methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes