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Df VoDepth and Flow for Visual Odometry
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CorrelationLayerPure Pytorch implementation of Correlation Layer that commonly used in learning based optical flow estimator
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PystepsPython framework for short-term ensemble prediction systems.
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pwcnetPWC-Network with TensorFlow
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FastmotHigh-performance multiple object tracking based on YOLO, Deep SORT, and optical flow
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flowattackAttacking Optical Flow (ICCV 2019)
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briefmatchBriefMatch real-time GPU optical flow
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EPCEvery Pixel Counts ++: Joint Learning of Geometry and Motion with 3D Holistic Understanding
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SelflowSelFlow: Self-Supervised Learning of Optical Flow
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CrowdFlowOptical Flow Dataset and Benchmark for Visual Crowd Analysis
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VoofVisual odometry using optical flow and neural networks
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Maskflownet[CVPR 2020, Oral] MaskFlownet: Asymmetric Feature Matching with Learnable Occlusion Mask
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LiteflownetLiteFlowNet: A Lightweight Convolutional Neural Network for Optical Flow Estimation, CVPR 2018 (Spotlight paper, 6.6%)
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Liteflownet2A Lightweight Optical Flow CNN - Revisiting Data Fidelity and Regularization, TPAMI 2020
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EPPMCUDA implementation of the paper "Fast Edge-Preserving PatchMatch for Large Displacement Optical Flow" in CVPR 2014.
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Hidden Two StreamCaffe implementation for "Hidden Two-Stream Convolutional Networks for Action Recognition"
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back2futureUnsupervised Learning of Multi-Frame Optical Flow with Occlusions
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FrvsrFrame-Recurrent Video Super-Resolution (official repository)
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PCLNetUnsupervised Learning for Optical Flow Estimation Using Pyramid Convolution LSTM.
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deepOFTensorFlow implementation for "Guided Optical Flow Learning"
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Flownet2 DockerDockerfile and runscripts for FlowNet 2.0 (estimation of optical flow)
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flownet2-ColabGoogle Colab notebook for running Nvidia flownet2-pytorch
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PyTrxPyTrx is a Python object-oriented programme created for the purpose of calculating real-world measurements from oblique images and time-lapse image series. Its primary purpose is to obtain velocities, surface areas, and distances from oblique, optical imagery of glacial environments.
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CcCompetitive Collaboration: Joint Unsupervised Learning of Depth, Camera Motion, Optical Flow and Motion Segmentation
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video featuresExtract video features from raw videos using multiple GPUs. We support RAFT and PWC flow frames as well as S3D, I3D, R(2+1)D, VGGish, CLIP, ResNet features.
Stars: ✭ 225 (+525%)
flow1d[ICCV 2021 Oral] High-Resolution Optical Flow from 1D Attention and Correlation
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PyflowFast, accurate and easy to run dense optical flow with python wrapper
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humanflow2Official repository of Learning Multi-Human Optical Flow (IJCV 2019)
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mmflowOpenMMLab optical flow toolbox and benchmark
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ToflowTOFlow: Video Enhancement with Task-Oriented Flow
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flow-io-opencvFork and OpenCV wrapper of the optical flow I/O and visualization code provided as part of the Sintel dataset [1].
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UnflowUnFlow: Unsupervised Learning of Optical Flow with a Bidirectional Census Loss
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Flownet2FlowNet 2.0: Evolution of Optical Flow Estimation with Deep Networks
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OpticalflowtoolkitPython-based optical flow toolkit for existing popular dataset
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SoftNet-SpotMEShallow Optical Flow Three-Stream CNN For Macro and Micro-Expression Spotting From Long Videos
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Df Net[ECCV 2018] DF-Net: Unsupervised Joint Learning of Depth and Flow using Cross-Task Consistency
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Ransac Flow(ECCV 2020) RANSAC-Flow: generic two-stage image alignment
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CloverROS-based framework and RPi image to control PX4-powered drones 🍀
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Optical-Flow-GPU-DockerCompute dense optical flow using TV-L1 algorithm with NVIDIA GPU acceleration.
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Py DenseflowExtract TVL1 optical flows in python (multi-process && multi-server)
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TfoptflowOptical Flow Prediction with TensorFlow. Implements "PWC-Net: CNNs for Optical Flow Using Pyramid, Warping, and Cost Volume," by Deqing Sun et al. (CVPR 2018)
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SpynetSpatial Pyramid Network for Optical Flow
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TfvosSemi-Supervised Video Object Segmentation (VOS) with Tensorflow. Includes implementation of *MaskRNN: Instance Level Video Object Segmentation (NIPS 2017)* as part of the NIPS Paper Implementation Challenge.
Stars: ✭ 151 (+319.44%)
correlation flowROS package for Correlation Flow (ICRA 2018)
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VppVideo++, a C++14 high performance video and image processing library.
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Flownet2 TfFlowNet 2.0: Evolution of Optical Flow Estimation with Deep Networks
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Real-Time-Abnormal-Events-Detection-and-Tracking-in-Surveillance-SystemThe main abnormal behaviors that this project can detect are: Violence, covering camera, Choking, lying down, Running, Motion in restricted areas. It provides much flexibility by allowing users to choose the abnormal behaviors they want to be detected and keeps track of every abnormal event to be reviewed. We used three methods to detect abnorma…
Stars: ✭ 35 (-2.78%)
BridgeDepthFlowBridging Stereo Matching and Optical Flow via Spatiotemporal Correspondence, CVPR 2019
Stars: ✭ 114 (+216.67%)