SOTAVerified

Semi-Supervised Video Object Segmentation

The semi-supervised scenario assumes the user inputs a full mask of the object(s) of interest in the first frame of a video sequence. Methods have to produce the segmentation mask for that object(s) in the subsequent frames.

Papers

Showing 110 of 147 papers

TitleStatusHype
THU-Warwick Submission for EPIC-KITCHEN Challenge 2025: Semi-Supervised Video Object Segmentation0
Exploring Enhanced Contextual Information for Video-Level Object TrackingCode2
A Distractor-Aware Memory for Visual Object Tracking with SAM2Code3
LiVOS: Light Video Object Segmentation with Gated Linear MatchingCode1
Memory Matching is not Enough: Jointly Improving Memory Matching and Decoding for Video Object Segmentation0
SAM 2: Segment Anything in Images and VideosCode11
Global Motion Understanding in Large-Scale Video Object Segmentation0
Spatial-Temporal Multi-level Association for Video Object Segmentation0
Efficient Video Object Segmentation via Modulated Cross-Attention MemoryCode2
Video Object Segmentation with Dynamic Query ModulationCode1
Show:102550
← PrevPage 1 of 15Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SAM2J&F90.7Unverified
2Cutie+ (base)J&F90.5Unverified
3ISVOS (BL30K, MS)J&F89.8Unverified
4XMem (BL30K, MS)J&F89.5Unverified
5ISVOS (MS)J&F88.6Unverified
6XMem (MS)J&F88.2Unverified
7ISVOS (BL30K)J&F88.2Unverified
8JIMDJ&F88.1Unverified
9Cutie+ (base, MEGA)J&F88.1Unverified
10Cutie (base)J&F87.9Unverified