[CVPR'21] Projecting Your View Attentively: Monocular Road Scene Layout Estimation via Cross-view Transformation

Overview

Projecting Your View Attentively: Monocular Road Scene Layout Estimation via Cross-view Transformation

Weixiang Yang, Qi Li, Wenxi Liu, Yuanlong Yu, Yuexin Ma, Shengfeng He, Jia Pan

Paper

Accepted to CVPR 2021

图片

Abstract

HD map reconstruction is crucial for autonomous driving. LiDAR-based methods are limited due to the deployed expensive sensors and time-consuming computation. Camera-based methods usually need to separately perform road segmentation and view transformation, which often causes distortion and the absence of content.  To push the limits of the technology, we present a novel framework that enables reconstructing a local map formed by road layout and vehicle occupancy in the bird's-eye view given a front-view monocular image only.  In particular, we propose a cross-view transformation module, which takes the constraint of cycle consistency between views into account and makes full use of their correlation to strengthen the view transformation and scene understanding. Considering the relationship between vehicles and roads, we also design a context-aware discriminator to further refine the results. Experiments on public benchmarks show that our method achieves the state-of-the-art performance in the tasks of road layout estimation and vehicle occupancy estimation. Especially for the latter task, our model outperforms all competitors by a large margin. Furthermore, our model runs at 35 FPS on a single GPU, which is efficient and applicable for real-time panorama HD map reconstruction.

Contributions

  • We propose a novel framework that reconstructs a local map formed by top-view road scene layout and vehicle occupancy using a single monocular front-view image only. In particular, we propose a cross-view transformation module which leverages the cycle consistency between views and their correlation to strengthen the view transformation.
  • We also propose a context-aware discriminator that considers the spatial relationship between vehicles and roads in the task of estimating vehicle occupancies.
  • On public benchmarks, it is demonstrated that our model achieves the state-of-the-art performance for the tasks of road layout and vehicle occupancy estimation.

Approach overview

图片

Repository Structure

cross-view/
├── crossView            # Contains scripts for dataloaders and network/model architecture
└── datasets             # Contains datasets
    ├── argoverse        # argoverse dataset
    ├── kitti            # kitti dataset 
├── log                  # Contains a log of network/model
├── losses               # Contains scripts for loss of network/model
├── models               # Contains the saved model of the network/model
├── output               # Contains output of network/model
└── splits
    ├── 3Dobject         # Training and testing splits for KITTI 3DObject Detection dataset 
    ├── argo             # Training and testing splits for Argoverse Tracking v1.0 dataset
    ├── odometry         # Training and testing splits for KITTI Odometry dataset
    └── raw              # Training and testing splits for KITTI RAW dataset(based on Schulter et. al.)

Installation

We recommend setting up a Python 3.7 and Pytorch 1.0 Virtual Environment and installing all the dependencies listed in the requirements file.

git clone https://github.com/JonDoe-297/cross-view.git

cd cross-view
pip install -r requirements.txt

Datasets

In the paper, we've presented results for KITTI 3D Object, KITTI Odometry, KITTI RAW, and Argoverse 3D Tracking v1.0 datasets. For comparison with Schulter et. al., We've used the same training and test splits sequences from the KITTI RAW dataset. For more details about the training/testing splits one can look at the splits directory. And you can download Ground-truth from Monolayout.

# Download KITTI RAW
./data/download_datasets.sh raw

# Download KITTI 3D Object
./data/download_datasets.sh object

# Download KITTI Odometry
./data/download_datasets.sh odometry

# Download Argoverse Tracking v1.0
./data/download_datasets.sh argoverse

The above scripts will download, unzip and store the respective datasets in the datasets directory.

datasets/
└── argoverse                          # argoverse dataset
    └── argoverse-tracking
        └── train1
            └── 1d676737-4110-3f7e-bec0-0c90f74c248f
                ├── car_bev_gt         # Vehicle GT
                ├── road_gt            # Road GT
                ├── stereo_front_left  # RGB image
└── kitti                              # kitti dataset 
    └── object                         # kitti 3D Object dataset 
        └── training
            ├── image_2                # RGB image
            ├── vehicle_256            # Vehicle GT
    ├── odometry                       # kitti odometry dataset 
        └── 00
            ├── image_2                # RGB image
            ├── road_dense128  # Road GT
    ├── raw                            # kitti raw dataset 
        └── 2011_09_26
            └── 2011_09_26_drive_0001_sync
                ├── image_2            # RGB image
                ├── road_dense128      # Road GT

Training

  1. Prepare the corresponding dataset
  2. Run training
# Corss view Road (KITTI Odometry)
python3 train.py --type static --split odometry --data_path ./datasets/odometry/ --model_name <Model Name with specifications>

# Corss view Vehicle (KITTI 3D Object)
python3 train.py --type dynamic --split 3Dobject --data_path ./datasets/kitti/object/training --model_name <Model Name with specifications>

# Corss view Road (KITTI RAW)
python3 train.py --type static --split raw --data_path ./datasets/kitti/raw/  --model_name <Model Name with specifications>

# Corss view Vehicle (Argoverse Tracking v1.0)
python3 train.py --type dynamic --split argo --data_path ./datasets/argoverse/ --model_name <Model Name with specifications>

# Corss view Road (Argoverse Tracking v1.0)
python3 train.py --type static --split argo --data_path ./datasets/argoverse/ --model_name <Model Name with specifications>
  1. The training model are in "models" (default: ./models)

Testing

  1. Download pre-trained models
  2. Run testing
python3 test.py --type <static/dynamic> --model_path <path to the model directory> --image_path <path to the image directory>  --out_dir <path to the output directory> 
  1. The results are in "output" (default: ./output)

Evaluation

  1. Prepare the corresponding dataset
  2. Download pre-trained models
  3. Run evaluation
# Evaluate on KITTI Odometry 
python3 eval.py --type static --split odometry --model_path <path to the model directory> --data_path ./datasets/odometry --height 512 --width 512 --occ_map_size 128

# Evaluate on KITTI 3D Object
python3 eval.py --type dynamic --split 3Dobject --model_path <path to the model directory> --data_path ./datasets/kitti/object/training

# Evaluate on KITTI RAW
python3 eval.py --type static --split raw --model_path <path to the model directory> --data_path ./datasets/kitti/raw/

# Evaluate on Argoverse Tracking v1.0 (Road)
python3 eval.py --type static --split argo --model_path <path to the model directory> --data_path ./datasets/kitti/argoverse/

# Evaluate on Argoverse Tracking v1.0 (Vehicle)
python3 eval.py --type dynamic --split argo --model_path <path to the model directory> --data_path ./datasets/kitti/argoverse
  1. The results are in "output" (default: ./output)

Pretrained Models

The following table provides links to the pre-trained models for each dataset mentioned in our paper. The table also shows the corresponding evaluation results for these models.

Dataset Segmentation Objects mIOU(%) mAP(%) Pretrained Model
KITTI 3D Object Vehicle 38.85 51.04 link
KITTI Odometry Road 77.47 86.39 link
KITTI Raw Road 68.26 79.65 link
Argoverse Tracking Vehicle 47.87 62.69 link
Argoverse Tracking Road 76.56 87.30 link

Results

图片

Contact

If you meet any problems, please describe them in issues or contact:

License

This project is released under the MIT License (refer to the LICENSE file for details).This project partially depends on the sources of Monolayout

Forest R-CNN: Large-Vocabulary Long-Tailed Object Detection and Instance Segmentation (ACM MM 2020)

Forest R-CNN: Large-Vocabulary Long-Tailed Object Detection and Instance Segmentation (ACM MM 2020) Official implementation of: Forest R-CNN: Large-Vo

Jialian Wu 54 Jan 06, 2023
Computer vision - fun segmentation experience using classic and deep tools :)

Computer_Vision_Segmentation_Fun Segmentation of Images and Video. Tools: pytorch Models: Classic model - GrabCut Deep model - Deeplabv3_resnet101 Flo

Mor Ventura 1 Dec 18, 2021
Flexible-Modal Face Anti-Spoofing: A Benchmark

Flexible-Modal FAS This is the official repository of "Flexible-Modal Face Anti-

Zitong Yu 22 Nov 10, 2022
A Python package for causal inference using Synthetic Controls

Synthetic Control Methods A Python package for causal inference using synthetic controls This Python package implements a class of approaches to estim

Oscar Engelbrektson 107 Dec 28, 2022
Memory efficient transducer loss computation

Introduction This project implements the optimization techniques proposed in Improving RNN Transducer Modeling for End-to-End Speech Recognition to re

Fangjun Kuang 51 Nov 25, 2022
(SIGIR2020) “Asymmetric Tri-training for Debiasing Missing-Not-At-Random Explicit Feedback’’

Asymmetric Tri-training for Debiasing Missing-Not-At-Random Explicit Feedback About This repository accompanies the real-world experiments conducted i

yuta-saito 19 Dec 01, 2022
MAVE: : A Product Dataset for Multi-source Attribute Value Extraction

MAVE: : A Product Dataset for Multi-source Attribute Value Extraction The dataset contains 3 million attribute-value annotations across 1257 unique ca

Google Research Datasets 89 Jan 08, 2023
Anonymous implementation of KSL

k-Step Latent (KSL) Implementation of k-Step Latent (KSL) in PyTorch. Representation Learning for Data-Efficient Reinforcement Learning [Paper] Code i

1 Nov 10, 2021
[CVPR'22] Weakly Supervised Semantic Segmentation by Pixel-to-Prototype Contrast

wseg Overview The Pytorch implementation of Weakly Supervised Semantic Segmentation by Pixel-to-Prototype Contrast. [arXiv] Though image-level weakly

Ye Du 96 Dec 30, 2022
Repository containing the PhD Thesis "Formal Verification of Deep Reinforcement Learning Agents"

Getting Started This repository contains the code used for the following publications: Probabilistic Guarantees for Safe Deep Reinforcement Learning (

Edoardo Bacci 5 Aug 31, 2022
VISSL is FAIR's library of extensible, modular and scalable components for SOTA Self-Supervised Learning with images.

What's New Below we share, in reverse chronological order, the updates and new releases in VISSL. All VISSL releases are available here. [Oct 2021]: V

Meta Research 2.9k Jan 07, 2023
Non-Attentive-Tacotron - This is Pytorch Implementation of Google's Non-attentive Tacotron.

Non-attentive Tacotron - PyTorch Implementation This is Pytorch Implementation of Google's Non-attentive Tacotron, text-to-speech system. There is som

Jounghee Kim 46 Dec 19, 2022
ATOMIC 2020: On Symbolic and Neural Commonsense Knowledge Graphs

(Comet-) ATOMIC 2020: On Symbolic and Neural Commonsense Knowledge Graphs Paper Jena D. Hwang, Chandra Bhagavatula, Ronan Le Bras, Jeff Da, Keisuke Sa

AI2 152 Dec 27, 2022
MT-GAN-PyTorch - PyTorch Implementation of Learning to Transfer: Unsupervised Domain Translation via Meta-Learning

MT-GAN-PyTorch PyTorch Implementation of AAAI-2020 Paper "Learning to Transfer: Unsupervised Domain Translation via Meta-Learning" Dependency: Python

29 Oct 19, 2022
Safe Model-Based Reinforcement Learning using Robust Control Barrier Functions

README Repository containing the code for the paper "Safe Model-Based Reinforcement Learning using Robust Control Barrier Functions". Specifically, an

Yousef Emam 13 Nov 24, 2022
Build tensorflow keras model pipelines in a single line of code. Created by Ram Seshadri. Collaborators welcome. Permission granted upon request.

deep_autoviml Build keras pipelines and models in a single line of code! Table of Contents Motivation How it works Technology Install Usage API Image

AutoViz and Auto_ViML 102 Dec 17, 2022
NeoPlay is the project dedicated to ESport events.

NeoPlay is the project dedicated to ESport events. On this platform users can participate in tournaments with prize pools as well as create their own tournaments.

3 Dec 18, 2021
This repository includes the official project for the paper: TransMix: Attend to Mix for Vision Transformers.

TransMix: Attend to Mix for Vision Transformers This repository includes the official project for the paper: TransMix: Attend to Mix for Vision Transf

Jie-Neng Chen 130 Jan 01, 2023
Based on the paper "Geometry-aware Instance-reweighted Adversarial Training" ICLR 2021 oral

Geometry-aware Instance-reweighted Adversarial Training This repository provides codes for Geometry-aware Instance-reweighted Adversarial Training (ht

Jingfeng 47 Dec 22, 2022
A package to predict protein inter-residue geometries from sequence data

trRosetta This package is a part of trRosetta protein structure prediction protocol developed in: Improved protein structure prediction using predicte

Ivan Anishchenko 185 Jan 07, 2023