DapsThis repo allocate DAPs code of our ECCV 2016 publication
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Okutama ActionOkutama-Action: An Aerial View Video Dataset for Concurrent Human Action Detection
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Action RecognitionExploration of different solutions to action recognition in video, using neural networks implemented in PyTorch.
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Fight detectionReal time Fight Detection Based on 2D Pose Estimation and RNN Action Recognition
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VipVideo Platform for Action Recognition and Object Detection in Pytorch
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Hcn Prototypeloss PytorchHierarchical Co-occurrence Network with Prototype Loss for Few-shot Learning (PyTorch)
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Video Dataset Loading PytorchGeneric PyTorch Dataset Implementation for Loading, Preprocessing and Augmenting Video Datasets
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Realtime Action RecognitionApply ML to the skeletons from OpenPose; 9 actions; multiple people. (WARNING: I'm sorry that this is only good for course demo, not for real world applications !!! Those ary very difficult !!!)
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TimeceptionTimeception for Complex Action Recognition, CVPR 2019 (Oral Presentation)
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Vidvrd HelperTo keep updates with VRU Grand Challenge, please use https://github.com/NExTplusplus/VidVRD-helper
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AmassData preparation and loader for AMASS
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Hake ActionAs a part of the HAKE project, includes the reproduced SOTA models and the corresponding HAKE-enhanced versions (CVPR2020).
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Resgcnv1ResGCN: an efficient baseline for skeleton-based human action recognition.
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Ig65m PytorchPyTorch 3D video classification models pre-trained on 65 million Instagram videos
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I3d finetuneTensorFlow code for finetuning I3D model on UCF101.
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Two Stream Action RecognitionUsing two stream architecture to implement a classic action recognition method on UCF101 dataset
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Video CaffeVideo-friendly caffe -- comes with the most recent version of Caffe (as of Jan 2019), a video reader, 3D(ND) pooling layer, and an example training script for C3D network and UCF-101 data
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Gluon CvGluon CV Toolkit
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ModelfeastPytorch model zoo for human, include all kinds of 2D CNN, 3D CNN, and CRNN
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3d Resnets3D ResNets for Action Recognition
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Dd NetA lightweight network for body/hand action recognition
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M PactA one stop shop for all of your activity recognition needs.
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UntrimmednetWeakly Supervised Action Recognition and Detection
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ActionvladActionVLAD for video action classification (CVPR 2017)
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Tdn[CVPR 2021] TDN: Temporal Difference Networks for Efficient Action Recognition
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Hoi Learning ListA list of the Human-Object Interaction Learning studies.
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Hidden Two StreamCaffe implementation for "Hidden Two-Stream Convolutional Networks for Action Recognition"
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HakeHAKE: Human Activity Knowledge Engine (CVPR'18/19/20, NeurIPS'20)
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PaddlevideoComprehensive, latest, and deployable video deep learning algorithm, including video recognition, action localization, and temporal action detection tasks. It's a high-performance, light-weight codebase provides practical models for video understanding research and application
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MmactionAn open-source toolbox for action understanding based on PyTorch
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Tsn PytorchTemporal Segment Networks (TSN) in PyTorch
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Hand pose actionDataset and code for the paper "First-Person Hand Action Benchmark with RGB-D Videos and 3D Hand Pose Annotations", CVPR 2018.
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Mmaction2OpenMMLab's Next Generation Video Understanding Toolbox and Benchmark
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StepSTEP: Spatio-Temporal Progressive Learning for Video Action Detection. CVPR'19 (Oral)
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Video ClassificationTutorial for video classification/ action recognition using 3D CNN/ CNN+RNN on UCF101
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Keras Kinetics I3dkeras implementation of inflated 3d from Quo Vardis paper + weights
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Two Stream PytorchPyTorch implementation of two-stream networks for video action recognition
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C3d KerasC3D for Keras + TensorFlow
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Movienet ToolsTools for movie and video research
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Ican[BMVC 2018] iCAN: Instance-Centric Attention Network for Human-Object Interaction Detection
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Ta3n[ICCV 2019 (Oral)] Temporal Attentive Alignment for Large-Scale Video Domain Adaptation (PyTorch)
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MmskeletonA OpenMMLAB toolbox for human pose estimation, skeleton-based action recognition, and action synthesis.
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TddTrajectory-pooled Deep-Convolutional Descriptors
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