Skip to content

datamllab/autovideo

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

72 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

AutoVideo: An Automated Video Action Recognition System

Logo

Testing PyPI version Downloads Downloads License: MIT

AutoVideo is a system for automated video analysis. It is developed based on D3M infrastructure, which describes machine learning with generic pipeline languages. Currently, it focuses on video action recognition, supporting a complete training pipeline consisting of data processing, video processing, video transformation, and action recognition. It also supports automated tuners for pipeline search. AutoVideo is developed by DATA Lab at Rice University.

There are some other video analysis libraries out there, but this one is designed to be highly modular. AutoVideo is highly extendible thanks to the pipeline language, where each module is wrapped as a primitive with some hyperparameters. This allows us to easily develop new modules. It is also convenient to perform pipeline search. We welcome contributions to enrich AutoVideo with more primitives. You can find instructions in Contributing Guide.

Demo

Overview

Cite this work

If you find this repo useful, you may cite:

Zha, Daochen, et al. "AutoVideo: An Automated Video Action Recognition System." arXiv preprint arXiv:2108.0421 (2021).

@inproceedings{zha2021autovideo,
  title={Autovideo: An automated video action recognition system},
  author={Zha, Daochen and Bhat, Zaid Pervaiz and Chen, Yi-Wei and Wang, Yicheng and Ding, Sirui and Chen, Jiaben and Lai, Kwei-Herng and Bhat, Mohammad Qazim and Jain, Anmoll Kumar and Reyes, Alfredo Costilla and Zou, Na and Xia, Hu},
  booktitle={IJCAI},
  year={2022}
}

Installation

Make sure that you have Python 3.6+ and pip installed. Currently the code is only tested in Linux system. First, install torch and torchvision with

pip3 install torch
pip3 install torchvision

To use the automated searching, you need to install ray-tune and hyperopt with

pip3 install 'ray[tune]' hyperopt

We recommend installing the stable version of autovideo with pip:

pip3 install autovideo

Alternatively, you can clone the latest version with

git clone https://github.com/datamllab/autovideo.git

Then install with

cd autovideo
pip3 install -e .

Quick Start

To try the examples, you may download hmdb6 dataset, which is a subset of hmdb51 with only 6 classes. All the datasets can be downloaded from Google Drive. Then, you may unzip a dataset and put it in datasets. You may also try STGCN for skeleton-based action recogonition on kinetics36, which is a subset of Kinetics dataset with 36 classes.

Fitting and saving a pipeline

python3 examples/fit.py

Some important hyperparameters are as follows.

  • --alg: the supported algorithm. Currently we support tsn, tsm, i3d, eco, eco_full, c3d, r2p1d, r3d, stgcn.
  • --pretrained: whether loading pre-trained weights and fine-tuning.
  • --gpu: which gpu device to use. Empty string for CPU.
  • --data_dir: the directory of the dataset
  • --log_dir: the path for sainge the log
  • --save_path: the path for saving the fitted pipeline

In AutoVideo, all the pipelines can be described as Python Dictionaries. In examplers/fit.py, the default pipline is defined below.

config = {
	"transformation":[
		("RandomCrop", {"size": (128,128)}),
		("Scale", {"size": (128,128)}),
	],
	"augmentation": [
		("meta_ChannelShuffle", {"p": 0.5} ),
		("blur_GaussianBlur",),
		("flip_Fliplr", ),
		("imgcorruptlike_GaussianNoise", ),
	],
	"multi_aug": "meta_Sometimes",
	"algorithm": "tsn",
	"load_pretrained": False,
	"epochs": 50,
}

This pipeline describes what transformation and augmentation primitives will be used, and also how the multiple augmentation primitives are combined. It also specifies using TSN to train 50 epochs from scratch. The hyperparameters can be flexibly configured based on the hyperparameters defined in each primitive.

Loading a fitted pipeline and producing predictions

After fitting a pipeline, you can load a pipeline and make predictions.

python3 examples/produce.py

Some important hyperparameters are as follows.

  • --gpu: which gpu device to use. Empty string for CPU.
  • --data_dir: the directory of the dataset
  • --log_dir: the path for saving the log
  • --load_path: the path for loading the fitted pipeline

Loading a fitted pipeline and recogonizing actions

After fitting a pipeline, you can also make predicitons on a single video. As a demo, you may download the fitted pipeline and the demo video from Google Drive. Then, you can use the following command to recogonize the action in the video:

python3 examples/recogonize.py

Some important hyperparameters are as follows.

  • --gpu: which gpu device to use. Empty string for CPU.
  • --video_path: the path of video file
  • --log_dir: the path for saving the log
  • --load_path: the path for loading the fitted pipeline

Fitting and producing a pipeline

Alternatively, you can do fit and produce without saving the model with

python3 examples/fit_produce.py

Some important hyperparameters are as follows.

  • --alg: the supported algorithm.
  • --pretrained: whether loading pre-trained weights and fine-tuning.
  • --gpu: which gpu device to use. Empty string for CPU.
  • --data_dir: the directory of the dataset
  • --log_dir: the path for saving the log

Automated searching

In addition to running them by yourself, we also support automated model selection and hyperparameter tuning:

python3 examples/search.py

Some important hyperparameters are as follows.

  • --alg: the searching algorithm. Currently, we support random and hyperopt.
  • --num_samples: the number of samples to be tried
  • --gpu: which gpu device to use. Empty string for CPU.
  • --data_dir: the directory of the dataset

Search sapce can also be specified as Python Dictionaries. An example:

search_space = {
	"augmentation": {
		"aug_0": tune.choice([
			("arithmetic_AdditiveGaussianNoise",),
			("arithmetic_AdditiveLaplaceNoise",),
		]),
		"aug_1": tune.choice([
			("geometric_Rotate",),
			("geometric_Jigsaw",),
		]),
	},
	"multi_aug": tune.choice([
		"meta_Sometimes",
		"meta_Sequential",
	]),
	"algorithm": tune.choice(["tsn"]),
	"learning_rate": tune.uniform(0.0001, 0.001),
	"momentum": tune.uniform(0.9,0.99),
	"weight_decay": tune.uniform(5e-4,1e-3),
	"num_segments": tune.choice([8,16,32]),
}

Supported Action Recogoniton Algorithms

Algorithms Primitive Path Paper
TSN autovideo/recognition/tsn_primitive.py Temporal Segment Networks: Towards Good Practices for Deep Action Recognition
TSM autovideo/recognition/tsm_primitive.py TSM: Temporal Shift Module for Efficient Video Understanding
R2P1D autovideo/recognition/r2p1d_primitive.py A Closer Look at Spatiotemporal Convolutions for Action Recognition
R3D autovideo/recognition/r3d_primitive.py Learning spatio-temporal features with 3d residual networks for action recognition
C3D autovideo/recognition/c3d_primitive.py Learning Spatiotemporal Features with 3D Convolutional Networks
ECO-Lite autovideo/recognition/eco_primitive.py ECO: Efficient Convolutional Network for Online Video Understanding
ECO-Full autovideo/recognition/eco_full_primitive.py ECO: Efficient Convolutional Network for Online Video Understanding
I3D autovideo/recognition/i3d_primitive.py Quo Vadis, Action Recognition? A New Model and the Kinetics Dataset
STGCN autovideo/recognition/stgcn_primitive.py Spatial Temporal Graph Convolutional Networks for Skeleton-Based Action Recognition

Supported Augmentation Primitives

We have adapted all the augmentation methods in imgaug to videos and wrap them as primitives. Some examples are as below.

Augmentation Method Primitive Path
AddElementwise autovideo/augmentation/arithmetic/AddElementwise_primitive.py
Cartoon autovideo/augmentation/artistic/Cartoon_primitive.py
BlendAlphaBoundingBoxes autovideo/augmentation/blend/BlendAlphaBoundingBoxes_primitive.py
AverageBlur autovideo/augmentation/blend/AverageBlur_primitive.py
AddToBrightness autovideo/augmentation/color/AddToBrightness_primitive.py
AllChannelsCLAHE autovideo/augmentation/contrast/AllChannelsCLAHE_primitive.py
DirectedEdgeDetect autovideo/augmentation/convolutional/DirectedEdgeDetect_primitive.py
DirectedEdgeDetect autovideo/augmentation/convolutional/DirectedEdgeDetect_primitive.py
SaveDebugImageEveryNBatches autovideo/augmentation/edges/SaveDebugImageEveryNBatches_primitive.py
Canny autovideo/augmentation/debug/Canny_primitive.py
Fliplr autovideo/augmentation/debug/Fliplr_primitive.py
Affine autovideo/augmentation/geometric/Affine_primitive.py
Brightness autovideo/augmentation/imgcorruptlike/Brightness_primitive.py
ChannelShuffle autovideo/augmentation/meta/ChannelShuffle_primitive.py
Autocontrast autovideo/augmentation/pillike/Autocontrast_primitive.py
AveragePooling autovideo/augmentation/pooling/AveragePooling_primitive.py
RegularGridVoronoi autovideo/augmentation/segmentation/RegularGridVoronoi_primitive.py
CenterCropToAspectRatio autovideo/augmentation/size/CenterCropToAspectRatio_primitive.py
Clouds autovideo/augmentation/weather/Clouds_primitive.py

See the Full List of Augmentation Primitives

Advanced Usage

Beyond the above examples, you can also customize the configurations.

Configuring the hypereparamters

Each model in AutoVideo is wrapped as a primitive, which contains some hyperparameters. An example of TSN is here. All the hyperparameters can be specified when building the pipeline by passing a config dictionary. See examples/fit.py.

Configuring the search space

The tuner will search the best hyperparamter combinations within a search sapce to improve the performance. The search space can be defined with ray-tune. See examples/search.py.

Preparing datasets and benchmarking

The datasets must follow d3m format, which consists of a csv file and a media folder. The csv file should have three columns to specify the instance indices, video file names and labels. An example is as below

d3mIndex,video,label
0,Aussie_Brunette_Brushing_Hair_II_brush_hair_u_nm_np1_ri_med_3.avi,0
1,brush_my_hair_without_wearing_the_glasses_brush_hair_u_nm_np1_fr_goo_2.avi,0
2,Brushing_my_waist_lenth_hair_brush_hair_u_nm_np1_ba_goo_0.avi,0
3,brushing_raychel_s_hair_brush_hair_u_cm_np2_ri_goo_2.avi,0
4,Brushing_Her_Hair__[_NEW_AUDIO_]_UPDATED!!!!_brush_hair_h_cm_np1_le_goo_1.avi,0
5,Haarek_mmen_brush_hair_h_cm_np1_fr_goo_0.avi,0
6,Haarek_mmen_brush_hair_h_cm_np1_fr_goo_1.avi,0
7,Prelinger_HabitPat1954_brush_hair_h_nm_np1_fr_med_26.avi,0
8,brushing_hair_2_brush_hair_h_nm_np1_ba_med_2.avi,0

The media folder should contain video files. You may refer to our example hmdb6 dataset in Google Drive. We have also prepared hmdb51 and ucf101 in the Google Drive for benchmarking. Please read benchmark for more details. For some of the algorithms (TSN, TSM, C3D, R2P1D and R3D), if you want to load the pre-trained weights and fine-tune, you need to download the weights from Google Drive and put it to weights.