TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/FastFlowNet: A Lightweight Network for Fast Optical Flow E...

FastFlowNet: A Lightweight Network for Fast Optical Flow Estimation

Lingtong Kong, Chunhua Shen, Jie Yang

2021-03-08Optical Flow Estimation
PaperPDFCode(official)Code

Abstract

Dense optical flow estimation plays a key role in many robotic vision tasks. In the past few years, with the advent of deep learning, we have witnessed great progress in optical flow estimation. However, current networks often consist of a large number of parameters and require heavy computation costs, largely hindering its application on low power-consumption devices such as mobile phones. In this paper, we tackle this challenge and design a lightweight model for fast and accurate optical flow prediction. Our proposed FastFlowNet follows the widely-used coarse-to-fine paradigm with following innovations. First, a new head enhanced pooling pyramid (HEPP) feature extractor is employed to intensify high-resolution pyramid features while reducing parameters. Second, we introduce a new center dense dilated correlation (CDDC) layer for constructing compact cost volume that can keep large search radius with reduced computation burden. Third, an efficient shuffle block decoder (SBD) is implanted into each pyramid level to accelerate flow estimation with marginal drops in accuracy. Experiments on both synthetic Sintel data and real-world KITTI datasets demonstrate the effectiveness of the proposed approach, which needs only 1/10 computation of comparable networks to achieve on par accuracy. In particular, FastFlowNet only contains 1.37M parameters; and can execute at 90 FPS (with a single GTX 1080Ti) or 5.7 FPS (embedded Jetson TX2 GPU) on a pair of Sintel images of resolution 1024x436.

Results

TaskDatasetMetricValueModel
Optical Flow EstimationSintel-cleanAverage End-Point Error4.89FastFlowNet-ft
Optical Flow EstimationSintel-finalAverage End-Point Error6.08FastFlowNet-ft
Optical Flow EstimationKITTI 2015Fl-all11.22FastFlowNet-ft
Optical Flow EstimationKITTI 2015 (train) EPE12.24FastFlowNet
Optical Flow EstimationKITTI 2015 (train) F1-all33.1FastFlowNet
Optical Flow EstimationKITTI 2012Average End-Point Error1.8FastFlowNet-ft

Related Papers

Channel-wise Motion Features for Efficient Motion Segmentation2025-07-17An Efficient Approach for Muscle Segmentation and 3D Reconstruction Using Keypoint Tracking in MRI Scan2025-07-11Learning to Track Any Points from Human Motion2025-07-08TLB-VFI: Temporal-Aware Latent Brownian Bridge Diffusion for Video Frame Interpolation2025-07-07MEMFOF: High-Resolution Training for Memory-Efficient Multi-Frame Optical Flow Estimation2025-06-29EndoFlow-SLAM: Real-Time Endoscopic SLAM with Flow-Constrained Gaussian Splatting2025-06-26WAFT: Warping-Alone Field Transforms for Optical Flow2025-06-26Feature Hallucination for Self-supervised Action Recognition2025-06-25