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Papers/Iteratively Selecting an Easy Reference Frame Makes Unsupe...

Iteratively Selecting an Easy Reference Frame Makes Unsupervised Video Object Segmentation Easier

Youngjo Lee, Hongje Seong, Euntai Kim

2021-12-23Unsupervised Video Object SegmentationSemantic SegmentationVideo Object SegmentationVideo Semantic Segmentation
PaperPDF

Abstract

Unsupervised video object segmentation (UVOS) is a per-pixel binary labeling problem which aims at separating the foreground object from the background in the video without using the ground truth (GT) mask of the foreground object. Most of the previous UVOS models use the first frame or the entire video as a reference frame to specify the mask of the foreground object. Our question is why the first frame should be selected as a reference frame or why the entire video should be used to specify the mask. We believe that we can select a better reference frame to achieve the better UVOS performance than using only the first frame or the entire video as a reference frame. In our paper, we propose Easy Frame Selector (EFS). The EFS enables us to select an 'easy' reference frame that makes the subsequent VOS become easy, thereby improving the VOS performance. Furthermore, we propose a new framework named as Iterative Mask Prediction (IMP). In the framework, we repeat applying EFS to the given video and selecting an 'easier' reference frame from the video than the previous iteration, increasing the VOS performance incrementally. The IMP consists of EFS, Bi-directional Mask Prediction (BMP), and Temporal Information Updating (TIU). From the proposed framework, we achieve state-of-the-art performance in three UVOS benchmark sets: DAVIS16, FBMS, and SegTrack-V2.

Results

TaskDatasetMetricValueModel
VideoDAVIS 2016 valF86.7IMP
VideoDAVIS 2016 valG85.6IMP
VideoDAVIS 2016 valJ84.5IMP
VideoFBMS testJ77.5IMP
Video Object SegmentationDAVIS 2016 valF86.7IMP
Video Object SegmentationDAVIS 2016 valG85.6IMP
Video Object SegmentationDAVIS 2016 valJ84.5IMP
Video Object SegmentationFBMS testJ77.5IMP

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