Action Recognition for Self-Driving Cars

Overview

Action Recognition for Self-Driving Cars

demo img

This repo contains the codes for the 2021 Fall semester project "Action Recognition for Self-Driving Cars" at EPFL VITA lab. For experiment results, please refer to the project report and presenation slides at docs. A demo video is available here.

This project utilizes a simple yet effective architecture (called poseact) to classify multiple actions.

The model has been tested on three datasets, TCG, TITAN and CASR.

drawing

Preparation and Installation

This project mainly depends PyTorch. If you wish to start from extracting poses from images, you would also need OpenPifPaf (along with posetrack plugin), please also refer to this section for following steps. In case you wish to skip extracting your own poses, and directly start from the poses used in this repo, you can download this folder. It contains the poses extracted from TITAN and CASR dataset as well as a trained model for TITAN dataset. For the poses in TCG dataset, please refer to the official repo.

First, clone and install this repo. If you have downloaded the folder above, please put the contents to poseact/out/

Then clone this repo and install in editable mode.

git clone https://github.com/vita-epfl/pose-action-recognition.git
cd Action_Recognition
python -m pip install -e .

Project Structure and usage

poseact
	|___ data # create this folder to store your datasets, or create a symlink 
	|___ models 
	|___ test # debug tests, may also be helpful for basic usage
	|___ tools # preprocessing and analyzing tools, usage stated in the scripts 
	|___ utils # utility functions, such as datasets, losses and metrics 
	|___ xxxx_train.py # training scripts for TCG, TITAN and CASR
	|___ python_wrapper.sh # script for submitting jobs to EPFL IZAR cluster, same for debug.sh
	|___ predictor.py  # a visualization tool with the model trained on TITAN dataset 

It's advised to cd poseact and conda activate pytorch before running the experiments.

To submit jobs to EPFL IZAR cluster (or similar clusters managed by slurm), you can use the script python_wrapper.sh. Just think of it as "the python on the cluster". To submit to debug node of IZAR, you can use the debug.sh

Here is an example to train a model on TITAN dataset. --imbalance focal means using the focal loss, --gamma 0 sets the gamma value of focal loss to 0 (because I find 0 is better :=), --merge_cls means selecting a suitable set of actions from the original actions hierarchy, and--relative_kp means using relative coordinates of the keypoints, see the presentation slides for intuition. You can specify a name for this task with --task_name, which will be used to name the saved model if you use --save_model.

sbatch python_wrapper.sh titan_train.py --imbalance focal --gamma 0 --merge_cls --relative_kp --task_name Relative_KP --save_model

To use the temporal model, you can use --model_type sequence, and maybe you will need to adjust the number of epochs, batch size and learning rate. To use pifpaf track ID instead of ground truth track ID, you can use --track_method pifpaf .

sbatch python_wrapper.sh titan_train.py --model_type sequence --num_epoch 100 --imbalance focal --track_method gt --batch_size 128 --gamma 0 --lr 0.001

For all available training options, please refer to the comments and docstrings in the training scripts.

All the datasets have "train-validate-test" setup, so after the training, you should be able to see a summary of evaluation.

Here is an example

In general, overall accuracy 0.8614 avg Jaccard 0.6069 avg F1 0.7409

For valid_action actions accuracy 0.8614 Jaccard score 0.6069 f1 score 0.9192 mAP 0.7911
Precision for each class: [0.885 0.697 0.72  0.715 0.87]
Recall for each class: [0.956 0.458 0.831 0.549 0.811]
F1 score for each class: [0.919 0.553 0.771 0.621 0.839]
Average Precision for each class is [0.9687, 0.6455, 0.8122, 0.6459, 0.883]
Confusion matrix (elements in a row share the same true label, those in the same columns share predicted):
The corresponding classes are {'walking': 0, 'standing': 1, 'sitting': 2, 'bending': 3, 'biking': 4, 'motorcycling': 4}
[[31411  1172    19   142   120]
 [ 3556  3092    12    45    41]
 [   12     1   157     0    19]
 [  231   160     3   512    26]
 [  268     9    27    17  1375]]

After training and saving the model (to out/trained/), you can use the predictor to visualize results on TITAN (all sequences). Feel free to change the chekpoint to your own trained model, but only the file name is needed, because models are assumed to be out/trained

sbatch python_wrapper.sh predictor.py --function titanseqs --save_dir out/recognition --ckpt TITAN_Relative_KP803217.pth

It's also possible to run on a single sequence with --function titan_single --seq_idx <Number>

or run on a single image with --function image --image_path <path/to/your/image.png>

More about the TITAN dataset

For the TITAN dataset, we first extract poses from the images with OpenPifPaf, and then match the poses to groundtruth accoding to IOU of bounding boxes. After that, we store the poses sequence by sequence, frame by frame, person by person, and you will find corresponding classes in titan_dataset.py.

Preparing poses for TITAN and CASR

This part may be a bit cumbersome and it's advised to use the prepared poses in this folder. If you want to extract the poses yourself, please also download that folder, because poseact/out/titan_clip/example.png is needed as the input to OpenPifPaf.

First, install OpenPifPaf and the posetrack plugin.

For TITAN, download the dataset to poseact/data/TITAN and then

cd poseact
conda activate pytorch # activate the python environment
# run single frame pose detection , wait for the program to complete
sbatch python_wrapper.sh tools/run_pifpaf_on_titan.py --mode single --n_process 6
# run pose tracking, required for temporal model with pifpaf track ID, wait for the program to complete
sbatch python_wrapper.sh tools/run_pifpaf_on_titan.py --mode track --n_process 6
# make the pickle file for single frame model 
python utils/titan_dataset.py --function pickle --mode single
# make the pickle file from pifpaf posetrack result
python utils/titan_dataset.py --function pickle --mode track 

For CASR, you should agree with the terms and conditions required by the authors of CASR

CASR dataset needs some preprocessing, please create the folder poseact/scratch (or link to the scratch on IZAR) and then

cd poseact
conda activate pytorch # activate the python environment
sbatch tools/casr_download.sh # wait for the whole process to complete, takes a long time 
sbatch python_wrapper.sh tools/run_pifpaf_on_casr.py --n_process 6 # wait for this process to complete, again a long time 
python ./utils/casr_dataset.py # now you should have the file out/CASR_pifpaf.pkl

Credits

The poses are extracted with OpenPifPaf.

The model is inspired by MonoLoco and the heuristics are from this work

The code for TCG dataset is adopted from the official repo.

Owner
VITA lab at EPFL
Visual Intelligence for Transportation
VITA lab at EPFL
ULMFiT for Genomic Sequence Data

Genomic ULMFiT This is an implementation of ULMFiT for genomics classification using Pytorch and Fastai. The model architecture used is based on the A

Karl 276 Dec 12, 2022
Official implementation of "Refiner: Refining Self-attention for Vision Transformers".

RefinerViT This repo is the official implementation of "Refiner: Refining Self-attention for Vision Transformers". The repo is build on top of timm an

101 Dec 29, 2022
[CVPRW 21] "BNN - BN = ? Training Binary Neural Networks without Batch Normalization", Tianlong Chen, Zhenyu Zhang, Xu Ouyang, Zechun Liu, Zhiqiang Shen, Zhangyang Wang

BNN - BN = ? Training Binary Neural Networks without Batch Normalization Codes for this paper BNN - BN = ? Training Binary Neural Networks without Bat

VITA 40 Dec 30, 2022
Match SafeGraph POIs with Data collected through a cultural resource survey in Washington DC.

Match SafeGraph POI data with Cultural Resource Places in Washington DC Match SafeGraph POIs with Data collected through a cultural resource survey in

Changjie Chen 1 Jan 05, 2022
Code for paper "A Critical Assessment of State-of-the-Art in Entity Alignment" (https://arxiv.org/abs/2010.16314)

A Critical Assessment of State-of-the-Art in Entity Alignment This repository contains the source code for the paper A Critical Assessment of State-of

Max Berrendorf 16 Oct 14, 2022
A vision library for performing sliced inference on large images/small objects

SAHI: Slicing Aided Hyper Inference A vision library for performing sliced inference on large images/small objects Overview Object detection and insta

Open Business Software Solutions 2.3k Jan 04, 2023
Assginment for UofT CSC420: Intro to Image Understanding

Run the code Open edge_detection.ipynb in google colab. Upload image1.jpg,image2.jpg and my_image.jpg to '/content/drive/My Drive'. chooose 'Run all'

Ziyi-Zhou 1 Feb 24, 2022
MCMC samplers for Bayesian estimation in Python, including Metropolis-Hastings, NUTS, and Slice

Sampyl May 29, 2018: version 0.3 Sampyl is a package for sampling from probability distributions using MCMC methods. Similar to PyMC3 using theano to

Mat Leonard 304 Dec 25, 2022
i-SpaSP: Structured Neural Pruning via Sparse Signal Recovery

i-SpaSP: Structured Neural Pruning via Sparse Signal Recovery This is a public code repository for the publication: i-SpaSP: Structured Neural Pruning

Cameron Ronald Wolfe 5 Nov 04, 2022
B2EA: An Evolutionary Algorithm Assisted by Two Bayesian Optimization Modules for Neural Architecture Search

B2EA: An Evolutionary Algorithm Assisted by Two Bayesian Optimization Modules for Neural Architecture Search This is the offical implementation of the

SNU ADSL 0 Feb 07, 2022
STEAL - Learning Semantic Boundaries from Noisy Annotations (CVPR 2019)

STEAL This is the official inference code for: Devil Is in the Edges: Learning Semantic Boundaries from Noisy Annotations David Acuna, Amlan Kar, Sanj

469 Dec 26, 2022
Multiview 3D object detection on MultiviewC dataset through moft3d.

Multiview Orthographic Feature Transformation for 3D Object Detection Multiview 3D object detection on MultiviewC dataset through moft3d. Introduction

Jiahao Ma 20 Dec 21, 2022
Wileless-PDGNet Implementation

Wileless-PDGNet Implementation This repo is related to the following paper: Boning Li, Ananthram Swami, and Santiago Segarra, "Power allocation for wi

6 Oct 04, 2022
Official repo for QHack—the quantum machine learning hackathon

Note: This repository has been frozen while we consider the submissions for the QHack Open Hackathon. We hope you enjoyed the event! Welcome to QHack,

Xanadu 118 Jan 05, 2023
mlpack: a scalable C++ machine learning library --

a fast, flexible machine learning library Home | Documentation | Doxygen | Community | Help | IRC Chat Download: current stable version (3.4.2) mlpack

mlpack 4.2k Jan 09, 2023
PyTorch Implement for Path Attention Graph Network

SPAGAN in PyTorch This is a PyTorch implementation of the paper "SPAGAN: Shortest Path Graph Attention Network" Prerequisites We prefer to create a ne

Yang Yiding 38 Dec 28, 2022
A practical ML pipeline for data labeling with experiment tracking using DVC.

Auto Label Pipeline A practical ML pipeline for data labeling with experiment tracking using DVC Goals: Demonstrate reproducible ML Use DVC to build a

Todd Cook 4 Mar 08, 2022
AWS provides a Python SDK, "Boto3" ,which can be used to access the AWS-account from the local.

Boto3 - The AWS SDK for Python Boto3 is the Amazon Web Services (AWS) Software Development Kit (SDK) for Python, which allows Python developers to wri

Shreyas Srivastava 1 Oct 25, 2021
Simple-Neural-Network From Scratch in Python

Simple-Neural-Network From Scratch in Python This is a simple Neural Network created without any Machine Learning Libraries. The only dependencies are

Aum Shah 1 Dec 28, 2021
3DIAS: 3D Shape Reconstruction with Implicit Algebraic Surfaces (ICCV 2021)

3DIAS_Pytorch This repository contains the official code to reproduce the results from the paper: 3DIAS: 3D Shape Reconstruction with Implicit Algebra

Mohsen Yavartanoo 21 Dec 12, 2022