Back to Search Start Over

Sketch-based Video Object Segmentation: Benchmark and Analysis

Authors :
Yang, Ruolin
Li, Da
Hu, Conghui
Hospedales, Timothy
Zhang, Honggang
Song, Yi-Zhe
Publication Year :
2023

Abstract

Reference-based video object segmentation is an emerging topic which aims to segment the corresponding target object in each video frame referred by a given reference, such as a language expression or a photo mask. However, language expressions can sometimes be vague in conveying an intended concept and ambiguous when similar objects in one frame are hard to distinguish by language. Meanwhile, photo masks are costly to annotate and less practical to provide in a real application. This paper introduces a new task of sketch-based video object segmentation, an associated benchmark, and a strong baseline. Our benchmark includes three datasets, Sketch-DAVIS16, Sketch-DAVIS17 and Sketch-YouTube-VOS, which exploit human-drawn sketches as an informative yet low-cost reference for video object segmentation. We take advantage of STCN, a popular baseline of semi-supervised VOS task, and evaluate what the most effective design for incorporating a sketch reference is. Experimental results show sketch is more effective yet annotation-efficient than other references, such as photo masks, language and scribble.<br />Comment: BMVC 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.07261
Document Type :
Working Paper