Match Cutting: Finding Cuts with Smooth Visual Transitions

10/11/2022
by   Boris Chen, et al.
0

A match cut is a transition between a pair of shots that uses similar framing, composition, or action to fluidly bring the viewer from one scene to the next. Match cuts are frequently used in film, television, and advertising. However, finding shots that work together is a highly manual and time-consuming process that can take days. We propose a modular and flexible system to efficiently find high-quality match cut candidates starting from millions of shot pairs. We annotate and release a dataset of approximately 20k labeled pairs that we use to evaluate our system, using both classification and metric learning approaches that leverage a variety of image, video, audio, and audio-visual feature extractors. In addition, we release code and embeddings for reproducing our experiments at github.com/netflix/matchcut.

READ FULL TEXT

page 1

page 3

page 5

page 6

page 9

page 10

page 11

research
08/20/2020

PyTorch Metric Learning

Deep metric learning algorithms have a wide variety of applications, but...
research
09/07/2023

Text-to-feature diffusion for audio-visual few-shot learning

Training deep learning models for video classification from audio-visual...
research
08/17/2023

Bridging High-Quality Audio and Video via Language for Sound Effects Retrieval from Visual Queries

Finding the right sound effects (SFX) to match moments in a video is a d...
research
04/27/2021

One Billion Audio Sounds from GPU-enabled Modular Synthesis

We release synth1B1, a multi-modal audio corpus consisting of 1 billion ...
research
10/03/2018

Disambiguating Music Artists at Scale with Audio Metric Learning

We address the problem of disambiguating large scale catalogs through th...
research
05/03/2021

Naturalistic audio-visual volumetric sequences dataset of sounding actions for six degree-of-freedom interaction

As audio-visual systems increasingly bring immersive and interactive cap...

Please sign up or login with your details

Forgot password? Click here to reset