SOTAVerified

Optical Flow Estimation

Optical Flow Estimation is a computer vision task that involves computing the motion of objects in an image or a video sequence. The goal of optical flow estimation is to determine the movement of pixels or features in the image, which can be used for various applications such as object tracking, motion analysis, and video compression.

Approaches for optical flow estimation include correlation-based, block-matching, feature tracking, energy-based, and more recently gradient-based.

Further readings:

Definition source: Devon: Deformable Volume Network for Learning Optical Flow

Image credit: Optical Flow Estimation

Papers

Showing 16011650 of 2184 papers

TitleStatusHype
3D Scene Flow from 4D Light Field Gradients0
Recurrent Network Models for Human Dynamics0
Audio-visual speech separation based on joint feature representation with cross-modal attention0
ReFIn: A Refinement Approach for Video Frame Interpolation0
Audio-video fusion strategies for active speaker detection in meetings0
Regularized Pel-Recursive Motion Estimation Using Generalized Cross-Validation and Spatial Adaptation0
ReHAR: Robust and Efficient Human Activity Recognition0
Reinforcement Learning meets Masked Video Modeling : Trajectory-Guided Adaptive Token Selection0
Exploring Attention Mechanisms in Integration of Multi-Modal Information for Sign Language Recognition and Translation0
Attacking Motion Estimation with Adversarial Snow0
REMOTE: Real-time Ego-motion Tracking for Various Endoscopes via Multimodal Visual Feature Learning0
Removing Multi-frame Gaussian Noise by Combining Patch-based Filters with Optical Flow0
Video Forgery Detection Using Multiple Cues on Fusion of EfficientNet and Swin Transformer0
Research Experience of an Undergraduate Student in Computer Vision and Robotics0
ResFlow: Fine-tuning Residual Optical Flow for Event-based High Temporal Resolution Motion Estimation0
ResFPN: Residual Skip Connections in Multi-Resolution Feature Pyramid Networks for Accurate Dense Pixel Matching0
Residual Frames with Efficient Pseudo-3D CNN for Human Action Recognition0
X-ray Multimodal Intrinsic-Speckle-Tracking0
ResQ: Residual Quantization for Video Perception0
ATM: Action Temporality Modeling for Video Question Answering0
Restore from Restored: Video Restoration with Pseudo Clean Video0
Rethinking Atmospheric Turbulence Mitigation0
ATG-PVD: Ticketing Parking Violations on A Drone0
A Temporal Learning Approach to Inpainting Endoscopic Specularities and Its effect on Image Correspondence0
ATCA: an Arc Trajectory Based Model with Curvature Attention for Video Frame Interpolation0
Asymmetric Bilateral Phase Correlation for Optical Flow Estimation in the Frequency Domain0
XR-VIO: High-precision Visual Inertial Odometry with Fast Initialization for XR Applications0
Multi-Task Learning of Generalizable Representations for Video Action Recognition0
Revisit Event Generation Model: Self-Supervised Learning of Event-to-Video Reconstruction with Implicit Neural Representations0
Revisiting Document Image Dewarping by Grid Regularization0
Revisiting Event-based Video Frame Interpolation0
Revisiting Optical Flow Estimation in 360 Videos0
Machine Vision for Natural Gas Methane Emissions Detection Using an Infrared Camera0
A Survey on Backbones for Deep Video Action Recognition0
A Survey of Representation Learning, Optimization Strategies, and Applications for Omnidirectional Vision0
A spectral optical flow method for determining velocities from digital imagery0
RipViz: Finding Rip Currents by Learning Pathline Behavior0
100+ Times Faster Weighted Median Filter (WMF)0
Road obstacles positional and dynamic features extraction combining object detection, stereo disparity maps and optical flow data0
Robot Localization and Mapping Final Report -- Sequential Adversarial Learning for Self-Supervised Deep Visual Odometry0
Robust 6DoF Pose Tracking Considering Contour and Interior Correspondence Uncertainty for AR Assembly Guidance0
Robust and Computationally-Efficient Anomaly Detection using Powers-of-Two Networks0
Robust Deformation Estimation in Wood-Composite Materials using Variational Optical Flow0
A Spatial-Temporal Dual-Mode Mixed Flow Network for Panoramic Video Salient Object Detection0
Robust Frame-to-Frame Camera Rotation Estimation in Crowded Scenes0
Robust Instance Tracking via Uncertainty Flow0
3D Scene Flow Estimation on Pseudo-LiDAR: Bridging the Gap on Estimating Point Motion0
Robust Isometric Non-Rigid Structure-from-Motion0
Robust Monocular Epipolar Flow Estimation0
Robustness Guarantees for Deep Neural Networks on Videos0
Show:102550
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SpynetAverage End-Point Error6.64Unverified
2FastFlowNet-ftAverage End-Point Error4.89Unverified
3UnrolledCostAverage End-Point Error4.69Unverified
4LiteFlowNet-ftAverage End-Point Error4.54Unverified
5FlowNet2Average End-Point Error3.96Unverified
6IRR-PWCAverage End-Point Error3.84Unverified
7SelFlowAverage End-Point Error3.74Unverified
8FDFlowNet-ftAverage End-Point Error3.71Unverified
9ScopeFlowAverage End-Point Error3.59Unverified
10LiteFlowNet2-ftAverage End-Point Error3.48Unverified
#ModelMetricClaimedVerifiedStatus
1SpynetAverage End-Point Error8.36Unverified
2FastFlowNet-ftAverage End-Point Error6.08Unverified
3UnrolledCostAverage End-Point Error5.8Unverified
4MR-FlowAverage End-Point Error5.38Unverified
5LiteFlowNet-ftAverage End-Point Error5.38Unverified
6FDFlowNet-ftAverage End-Point Error5.11Unverified
7LiteFlowNet2-ftAverage End-Point Error4.69Unverified
8IRR-PWCAverage End-Point Error4.58Unverified
9LiteFlowNet3-SAverage End-Point Error4.53Unverified
10ContinualFlow + ftAverage End-Point Error4.52Unverified
#ModelMetricClaimedVerifiedStatus
1PWC-NetF1-all33.7Unverified
2FastFlowNetF1-all33.1Unverified
3FlowNet2F1-all30Unverified
4VCNF1-all25.1Unverified
5HD3F1-all24Unverified
6MaskFlowNetF1-all23.1Unverified
7SCVF1-all19.3Unverified
8RAPIDFlowF1-all17.7Unverified
9CRAFTF1-all17.5Unverified
10RAFTF1-all17.4Unverified
#ModelMetricClaimedVerifiedStatus
1FastFlowNet-ftFl-all11.22Unverified
2UnrolledCostFl-all10.81Unverified
3LiteFlowNet-ftFl-all9.38Unverified
4SelFlowFl-all8.42Unverified
5IRR-PWCFl-all7.65Unverified
6LiteFlowNet2-ftFl-all7.62Unverified
7LiteFlowNet3Fl-all7.34Unverified
8LiteFlowNet3-SFl-all7.22Unverified
9MaskFlownet-SFl-all6.81Unverified
10RAPIDFlowFl-all6.12Unverified
#ModelMetricClaimedVerifiedStatus
1FastFlowNet-ftAverage End-Point Error1.8Unverified
2LiteFlowNet-ftAverage End-Point Error1.6Unverified
3IRR-PWCAverage End-Point Error1.6Unverified
4SelFlowAverage End-Point Error1.5Unverified
5FDFlowNet-ftAverage End-Point Error1.5Unverified
6PWC-Net + ft - axXivAverage End-Point Error1.5Unverified
7LiteFlowNet2-ftAverage End-Point Error1.4Unverified
8LiteFlowNet3-SAverage End-Point Error1.3Unverified
9LiteFlowNet3Average End-Point Error1.3Unverified
10MaskFlownetAverage End-Point Error1.1Unverified
#ModelMetricClaimedVerifiedStatus
1PWCNet1px total82.27Unverified
2SPyNet1px total29.96Unverified
3GMFlow1px total10.36Unverified
4GMA1px total7.07Unverified
5RAFT1px total6.79Unverified
6FlowNet21px total6.71Unverified
7FlowFormer1px total6.51Unverified
8MS-RAFT+1px total5.72Unverified
9RPKNet1px total4.81Unverified
10DPFlow1px total3.44Unverified
#ModelMetricClaimedVerifiedStatus
1UFlowAverage End-Point Error5.21Unverified
2MDFlow-FastAverage End-Point Error4.73Unverified
3UpFlowAverage End-Point Error4.68Unverified
4ARFlow-MVAverage End-Point Error4.49Unverified
5MDFlowAverage End-Point Error4.16Unverified
#ModelMetricClaimedVerifiedStatus
1UFlowAverage End-Point Error6.5Unverified
2MDFlow-FastAverage End-Point Error5.99Unverified
3ARFlow-MVAverage End-Point Error5.67Unverified
4MDFlowAverage End-Point Error5.46Unverified
5UpFlowAverage End-Point Error5.32Unverified
#ModelMetricClaimedVerifiedStatus
1ARFlow-MVFl-all11.79Unverified
2MDFlow-FastFl-all11.43Unverified
3UpFlowFl-all9.38Unverified
4MDFlowFl-all8.91Unverified
#ModelMetricClaimedVerifiedStatus
1ARFlow-MVAverage End-Point Error1.5Unverified
2UpFlowAverage End-Point Error1.4Unverified