SOTAVerified

Video Semantic Segmentation

The goal of video semantic segmentation is to assign a predefined class to each pixel in all frames of a video. This requires the model not only to predict accurate segmentation masks but also to ensure that these masks remain temporally consistent across frames. This task has broad applications in areas such as autonomous driving, medical video analysis, and AR/VR.

Papers

Showing 701725 of 895 papers

TitleStatusHype
Video Object Segmentation through Spatially Accurate and Temporally Dense Extraction of Primary Object Regions0
Video Object Segmentation Using Global and Instance Embedding Learning0
Video Object Segmentation using Tracked Object Proposals0
Video Object Segmentation via SAM 2: The 4th Solution for LSVOS Challenge VOS Track0
Video Object Segmentation with Joint Re-identification and Attention-Aware Mask Propagation0
Video Object Segmentation with Language Referring Expressions0
Video Object Segmentation Without Temporal Information0
Video Propagation Networks0
Video Salient Object Detection Using Spatiotemporal Deep Features0
Video Salient Object Detection via Contrastive Features and Attention Modules0
VideoSAM: Open-World Video Segmentation0
Video Segmentation Learning Using Cascade Residual Convolutional Neural Network0
Video Segmentation via Diffusion Bases0
Video Segmentation via Multiple Granularity Analysis0
Video Segmentation via Object Flow0
Video Segmentation With Just a Few Strokes0
VIDiff: Translating Videos via Multi-Modal Instructions with Diffusion Models0
VidSeg: Training-free Video Semantic Segmentation based on Diffusion Models0
ViSeRet: A simple yet effective approach to moment retrieval via fine-grained video segmentation0
Visual Representation Learning with Stochastic Frame Prediction0
Visual Semantic Segmentation Based on Few/Zero-Shot Learning: An Overview0
Visual Subtitle Feature Enhanced Video Outline Generation0
Visual-Textual Capsule Routing for Text-Based Video Segmentation0
VolE: A Point-cloud Framework for Food 3D Reconstruction and Volume Estimation0
Adversarial Framework for Unsupervised Learning of Motion Dynamics in Videos0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1TMANet-50mIoU80.3Unverified
2TDNet-50 [9]mIoU79.9Unverified
3DeltaDist-DDRNet-39mIoU79.9Unverified
4PSPNet-101 [20]mIoU79.7Unverified
5PSPNet-50 [20]mIoU78.1Unverified
6LVS [12]mIoU76.8Unverified
7GRFP [15]mIoU73.6Unverified
8FCN-50 [14]mIoU70.1Unverified
9DFF [22]mIoU69.2Unverified
#ModelMetricClaimedVerifiedStatus
1TMANet-50Mean IoU76.5Unverified
2ETC-MobileNetMean IoU76.3Unverified
3TDNet-50Mean IoU76.2Unverified
4PSPNet-50Mean IoU76Unverified
5NetwarpMean IoU74.7Unverified
6GRFPMean IoU67.1Unverified
#ModelMetricClaimedVerifiedStatus
1DVIS++(VIT-L)mIoU63.8Unverified
2UniVS(Swin-L)mIoU59.8Unverified
3Tube-Link(Swin-large)mIoU59.6Unverified
4MRCFA(MiT-B5)mIoU49.9Unverified
5CFFM(MiT-B5)mIoU49.3Unverified
#ModelMetricClaimedVerifiedStatus
1WaSR-T (ResNet-101)Q60.1Unverified
2TMANet (ResNet-50)Q57.5Unverified
3CSANet (ResNet-101)Q49.1Unverified
#ModelMetricClaimedVerifiedStatus
1MVNet(DeepLabV3)mIoU54.52Unverified
2MVNet(PSPNet)mIoU54.36Unverified
3MVNet(FCN)mIoU53.9Unverified