Optical Flow Estimation On Sintel Clean
Metrics
Average End-Point Error
Results
Performance results of various models on this benchmark
Comparison Table
Model Name | Average End-Point Error |
---|---|
fdflownet-fast-optical-flow-estimation-using | 3.71 |
rapidflow-recurrent-adaptable-pyramids-with | 2.03 |
scopeflow-dynamic-scene-scoping-for-optical | 3.592 |
a-lightweight-optical-flow-cnn-revisiting | 3.48 |
maskflownet-asymmetric-feature-matching-with | 2.52 |
deep-equilibrium-optical-flow-estimation | 1.519 |
unifying-flow-stereo-and-depth-estimation | 1.03 |
recurrent-partial-kernel-network-for | 1.315 |
raft-recurrent-all-pairs-field-transforms-for | 1.609 |
iterative-residual-refinement-for-joint | 3.84 |
selflow-self-supervised-learning-of-optical | 3.74 |
learning-to-estimate-hidden-motions-with | 1.388 |
liteflownet3-resolving-correspondence | 3.03 |
rethinking-raft-for-efficient-optical-flow | 1.27 |
proflow-learning-to-predict-optical-flow | 2.82 |
unsupervised-optical-flow-using-cost-function | 4.69 |
flownet-20-evolution-of-optical-flow | 3.96 |
perceiver-io-a-general-architecture-for | 1.81 |
flowformer-a-transformer-architecture-for | 1.16 |
fastflownet-a-lightweight-network-for-fast | 4.89 |
optical-flow-estimation-using-a-spatial | 6.64 |
global-matching-with-overlapping-attention | 1.390 |
optical-flow-in-mostly-rigid-scenes | 2.53 |
maskflownet-asymmetric-feature-matching-with | 2.77 |
liteflownet3-resolving-correspondence | 2.99 |
improved-cross-view-completion-pre-training | 1.092 |
dpflow-adaptive-optical-flow-estimation-with-1 | 1.046 |
liteflownet-a-lightweight-convolutional | 4.54 |