HCAIMar 26, 2024

ExpressEdit: Video Editing with Natural Language and Sketching

arXiv:2403.17693v133 citationsh-index: 6IUI Workshops
Originality Incremental advance
AI Analysis

This addresses the problem of novice video editors struggling to express and implement editing ideas, offering a multimodal interface that improves efficiency and idea generation, though it is incremental as it builds on existing AI models for video editing.

The paper tackled the challenge of video editing being difficult and time-consuming for novice editors by developing ExpressEdit, a system that uses natural language and sketching to edit videos, which enhanced novice editors' ability to express and implement ideas, allowing them to perform edits more efficiently and generate more ideas in an observational study with 10 participants.

Informational videos serve as a crucial source for explaining conceptual and procedural knowledge to novices and experts alike. When producing informational videos, editors edit videos by overlaying text/images or trimming footage to enhance the video quality and make it more engaging. However, video editing can be difficult and time-consuming, especially for novice video editors who often struggle with expressing and implementing their editing ideas. To address this challenge, we first explored how multimodality$-$natural language (NL) and sketching, which are natural modalities humans use for expression$-$can be utilized to support video editors in expressing video editing ideas. We gathered 176 multimodal expressions of editing commands from 10 video editors, which revealed the patterns of use of NL and sketching in describing edit intents. Based on the findings, we present ExpressEdit, a system that enables editing videos via NL text and sketching on the video frame. Powered by LLM and vision models, the system interprets (1) temporal, (2) spatial, and (3) operational references in an NL command and spatial references from sketching. The system implements the interpreted edits, which then the user can iterate on. An observational study (N=10) showed that ExpressEdit enhanced the ability of novice video editors to express and implement their edit ideas. The system allowed participants to perform edits more efficiently and generate more ideas by generating edits based on user's multimodal edit commands and supporting iterations on the editing commands. This work offers insights into the design of future multimodal interfaces and AI-based pipelines for video editing.

Foundations

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