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 12511300 of 2184 papers

TitleStatusHype
Fast and Accurate Optical Flow based Depth Map Estimation from Light Fields0
Fast Convex Relaxations using Graph Discretizations0
Fast Edge-Preserving PatchMatch for Large Displacement Optical Flow0
Fast Event-based Optical Flow Estimation by Triplet Matching0
Fast Multi-frame Stereo Scene Flow with Motion Segmentation0
Fast Optical Flow using Dense Inverse Search0
Fast Retinomorphic Event Stream for Video Recognition and Reinforcement Learning0
Fast Semantic Segmentation on Video Using Block Motion-Based Feature Interpolation0
Fast video object segmentation with Spatio-Temporal GANs0
Fast Video Salient Object Detection via Spatiotemporal Knowledge Distillation0
FDAN: Flow-guided Deformable Alignment Network for Video Super-Resolution0
FDFlowNet: Fast Optical Flow Estimation using a Deep Lightweight Network0
FDNet: A Deep Learning Approach with Two Parallel Cross Encoding Pathways for Precipitation Nowcasting0
Feasibility of Video-based Sub-meter Localization on Resource-constrained Platforms0
Feature-Aligned Video Raindrop Removal with Temporal Constraints0
Feature Alignment with Equivariant Convolutions for Burst Image Super-Resolution0
Feature Flow: In-network Feature Flow Estimation for Video Object Detection0
Feature Hallucination for Self-supervised Action Recognition0
Feature-Level Collaboration: Joint Unsupervised Learning of Optical Flow, Stereo Depth and Camera Motion0
Feature refinement: An expression-specific feature learning and fusion method for micro-expression recognition0
Feature-Supervised Action Modality Transfer0
FEDORA: Flying Event Dataset fOr Reactive behAvior0
Tracklets Predicting Based Adaptive Graph Tracking0
Filtered Channel Features for Pedestrian Detection0
Filtered Feature Channels for Pedestrian Detection0
Finding Correspondences for Optical Flow and Disparity Estimations using a Sub-pixel Convolution-based Encoder-Decoder Network0
Fine Dense Alignment of Image Bursts through Camera Pose and Depth Estimation0
First order algorithms in variational image processing0
Flexible Techniques for Differentiable Rendering with 3D Gaussians0
FLODCAST: Flow and Depth Forecasting via Multimodal Recurrent Architectures0
FloVD: Optical Flow Meets Video Diffusion Model for Enhanced Camera-Controlled Video Synthesis0
Flow-Anything: Learning Real-World Optical Flow Estimation from Large-Scale Single-view Images0
Flow-Assisted Motion Learning Network for Weakly-Supervised Group Activity Recognition0
Flow Based Self-supervised Pixel Embedding for Image Segmentation0
Flow-Based Visual Stream Compression for Event Cameras0
FlowCam: Training Generalizable 3D Radiance Fields without Camera Poses via Pixel-Aligned Scene Flow0
FlowCaps: Optical Flow Estimation with Capsule Networks For Action Recognition0
FlowControl: Optical Flow Based Visual Servoing0
SAVE: Protagonist Diversification with Structure Agnostic Video Editing0
SC3EF: A Joint Self-Correlation and Cross-Correspondence Estimation Framework for Visible and Thermal Image Registration0
Scalable Full Flow with Learned Binary Descriptors0
Scale-aware Two-stage High Dynamic Range Imaging0
Scale-Space Flow for End-to-End Optimized Video Compression0
Scaling Properties of Diffusion Models for Perceptual Tasks0
Scene Motion Decomposition for Learnable Visual Odometry0
SceneNet RGB-D: Can 5M Synthetic Images Beat Generic ImageNet Pre-Training on Indoor Segmentation?0
SciFlow: Empowering Lightweight Optical Flow Models with Self-Cleaning Iterations0
SDC - Stacked Dilated Convolution: A Unified Descriptor Network for Dense Matching Tasks0
SDC - Stacked Dilated Convolution: A Unified Descriptor Network for Dense Matching Tasks0
Secrets in Computing Optical Flow by Convolutional Networks0
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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