Robust & Reliable Route Recommendation on Road Networks

Related tags

Deep LearningNeuroMLR
Overview

NeuroMLR: Robust & Reliable Route Recommendation on Road Networks

This repository is the official implementation of NeuroMLR: Robust & Reliable Route Recommendation on Road Networks.

Introduction

Predicting the most likely route from a source location to a destination is a core functionality in mapping services. Although the problem has been studied in the literature, two key limitations remain to be addressed. First, a significant portion of the routes recommended by existing methods fail to reach the destination. Second, existing techniques are transductive in nature; hence, they fail to recommend routes if unseen roads are encountered at inference time. We address these limitations through an inductive algorithm called NEUROMLR. NEUROMLR learns a generative model from historical trajectories by conditioning on three explanatory factors: the current location, the destination, and real-time traffic conditions. The conditional distributions are learned through a novel combination of Lipschitz embeddings with Graph Convolutional Networks (GCN) on historical trajectories.

Requirements

Dependencies

The code has been tested for Python version 3.8.10 and CUDA 10.2. We recommend that you use the same.

To create a virtual environment using conda,

conda create -n ENV_NAME python=3.8.10
conda activate ENV_NAME

All dependencies can be installed by running the following commands -

pip install -r requirements.txt
pip install --no-index torch-scatter -f https://pytorch-geometric.com/whl/torch-1.6.0+cu102.html
pip install --no-index torch-sparse -f https://pytorch-geometric.com/whl/torch-1.6.0+cu102.html
pip install --no-index torch-cluster -f https://pytorch-geometric.com/whl/torch-1.6.0+cu102.html
pip install --no-index torch-spline-conv -f https://pytorch-geometric.com/whl/torch-1.6.0+cu102.html
pip install torch-geometric

Data

Download the preprocessed data and unzip the downloaded .zip file.

Set the PREFIX_PATH variable in my_constants.py as the path to this extracted folder.

For each city (Chengdu, Harbin, Porto, Beijing, CityIndia), there are two types of data:

1. Mapmatched pickled trajectories

Stored as a python pickled list of tuples, where each tuple is of the form (trip_id, trip, time_info). Here each trip is a list of edge identifiers.

2. OSM map data

In the map folder, there are the following files-

  1. nodes.shp : Contains OSM node information (global node id mapped to (latitude, longitude))
  2. edges.shp : Contains network connectivity information (global edge id mapped to corresponding node ids)
  3. graph_with_haversine.pkl : Pickled NetworkX graph corresponding to the OSM data

Training

After setting PREFIX_PATH in the my_constants.py file, the training script can be run directly as follows-

python train.py -dataset beijing -gnn GCN -lipschitz 

Other functionality can be toggled by adding them as arguments, for example,

python train.py -dataset DATASET -gpu_index GPU_ID -eval_frequency EVALUATION_PERIOD_IN_EPOCHS -epochs NUM_EPOCHS 
python train.py -traffic
python train.py -check_script
python train.py -cpu

Brief description of other arguments/functionality -

Argument Functionality
-check_script to run on a fixed subset of train_data, as a sanity test
-cpu forces computation on a cpu instead of the available gpu
-gnn can choose between a GCN or a GAT
-gnn_layers number of layers for the graph neural network used
-epochs number of epochs to train for
-percent_data percentage data used for training
-fixed_embeddings to make the embeddings static, they aren't learnt as parameters of the network
-embedding_size the dimension of embeddings used
-hidden_size hidden dimension for the MLP
-traffic to toggle the attention module

For exact details about the expected format and possible inputs please refer to the args.py and my_constants.py files.

Evaluation

The training code generates logs for evaluation. To evaluate any pretrained model, run

python eval.py -dataset DATASET -model_path MODEL_PATH

There should be two files under MODEL_PATH, namely model.pt and model_support.pkl (refer to the function save_model() defined in train.py to understand these files).

Pre-trained Models

You can find the pretrained models in the same zip as preprocessed data. To evaluate the models, set PREFIX_PATH in the my_constants.py file and run

python eval.py -dataset DATASET

Results

We present the performance results of both versions of NeuroMLR across five datasets.

NeuroMLR-Greedy

Dataset Precision(%) Recall(%) Reachability(%) Reachability distance (km)
Beijing 75.6 74.5 99.1 0.01
Chengdu 86.1 83.8 99.9 0.0002
CityIndia 74.3 70.1 96.1 0.03
Harbin 59.6 48.6 99.1 0.02
Porto 77.3 70.7 99.6 0.001

NeuroMLR-Dijkstra

Since NeuroMLR-Dijkstra guarantees reachability, the reachability metrics are not relevant here.

Dataset Precision(%) Recall(%)
Beijing 77.9 76.5
Chengdu 86.7 84.2
CityIndia 77.9 73.1
Harbin 66.1 49.6
Porto 79.2 70.9

Contributing

If you'd like to contribute, open an issue on this GitHub repository. All contributions are welcome!

A real-time motion capture system that estimates poses and global translations using only 6 inertial measurement units

TransPose Code for our SIGGRAPH 2021 paper "TransPose: Real-time 3D Human Translation and Pose Estimation with Six Inertial Sensors". This repository

Xinyu Yi 261 Dec 31, 2022
Official implementation of NeurIPS'2021 paper TransformerFusion

TransformerFusion: Monocular RGB Scene Reconstruction using Transformers Project Page | Paper | Video TransformerFusion: Monocular RGB Scene Reconstru

Aljaz Bozic 118 Dec 25, 2022
DTCN SMP Challenge - Sequential prediction learning framework and algorithm

DTCN This is the implementation of our paper "Sequential Prediction of Social Me

Bobby 2 Jan 24, 2022
Repository for the paper titled: "When is BERT Multilingual? Isolating Crucial Ingredients for Cross-lingual Transfer"

When is BERT Multilingual? Isolating Crucial Ingredients for Cross-lingual Transfer This repository contains code for our paper titled "When is BERT M

Princeton Natural Language Processing 9 Dec 23, 2022
[CIKM 2021] Enhancing Aspect-Based Sentiment Analysis with Supervised Contrastive Learning

Enhancing Aspect-Based Sentiment Analysis with Supervised Contrastive Learning. This repo contains the PyTorch code and implementation for the paper E

Akuchi 18 Dec 22, 2022
Official implementation of "Dynamic Anchor Learning for Arbitrary-Oriented Object Detection" (AAAI2021).

DAL This project hosts the official implementation for our AAAI 2021 paper: Dynamic Anchor Learning for Arbitrary-Oriented Object Detection [arxiv] [c

ming71 215 Nov 28, 2022
Code of PVTv2 is released! PVTv2 largely improves PVTv1 and works better than Swin Transformer with ImageNet-1K pre-training.

Updates (2020/06/21) Code of PVTv2 is released! PVTv2 largely improves PVTv1 and works better than Swin Transformer with ImageNet-1K pre-training. Pyr

1.3k Jan 04, 2023
AniGAN: Style-Guided Generative Adversarial Networks for Unsupervised Anime Face Generation

AniGAN: Style-Guided Generative Adversarial Networks for Unsupervised Anime Face Generation AniGAN: Style-Guided Generative Adversarial Networks for U

Bing Li 81 Dec 14, 2022
Instance Segmentation in 3D Scenes using Semantic Superpoint Tree Networks

SSTNet Instance Segmentation in 3D Scenes using Semantic Superpoint Tree Networks(ICCV2021) by Zhihao Liang, Zhihao Li, Songcen Xu, Mingkui Tan, Kui J

83 Nov 29, 2022
Generating images from caption and vice versa via CLIP-Guided Generative Latent Space Search

CLIP-GLaSS Repository for the paper Generating images from caption and vice versa via CLIP-Guided Generative Latent Space Search An in-browser demo is

Federico Galatolo 172 Dec 22, 2022
Character-Input - Create a program that asks the user to enter their name and their age

Character-Input Create a program that asks the user to enter their name and thei

PyLaboratory 0 Feb 06, 2022
Tello Drone Trajectory Tracking

With this library you can track the trajectory of your tello drone or swarm of drones in real time.

Kamran Asgarov 2 Oct 12, 2022
Tool for installing and updating MiSTer cores and other files

MiSTer Downloader This tool installs and updates all the cores and other extra files for your MiSTer. It also updates the menu core, the MiSTer firmwa

72 Dec 24, 2022
[CVPR 2022 Oral] Versatile Multi-Modal Pre-Training for Human-Centric Perception

Versatile Multi-Modal Pre-Training for Human-Centric Perception Fangzhou Hong1  Liang Pan1  Zhongang Cai1,2,3  Ziwei Liu1* 1S-Lab, Nanyang Technologic

Fangzhou Hong 96 Jan 03, 2023
Official PyTorch implementation of "RMGN: A Regional Mask Guided Network for Parser-free Virtual Try-on" (IJCAI-ECAI 2022)

RMGN-VITON RMGN: A Regional Mask Guided Network for Parser-free Virtual Try-on In IJCAI-ECAI 2022(short oral). [Paper] [Supplementary Material] Abstra

27 Dec 01, 2022
Implementation of: "Exploring Randomly Wired Neural Networks for Image Recognition"

RandWireNN Unofficial PyTorch Implementation of: Exploring Randomly Wired Neural Networks for Image Recognition. Results Validation result on Imagenet

Seung-won Park 684 Nov 02, 2022
This repository contains the implementation of the following paper: Cross-Descriptor Visual Localization and Mapping

Cross-Descriptor Visual Localization and Mapping This repository contains the implementation of the following paper: "Cross-Descriptor Visual Localiza

Mihai Dusmanu 81 Oct 06, 2022
For medical image segmentation

LeViT_UNet For medical image segmentation Our model is based on LeViT (https://github.com/facebookresearch/LeViT). You'd better gitclone its codes. Th

13 Dec 24, 2022
POCO: Point Convolution for Surface Reconstruction

POCO: Point Convolution for Surface Reconstruction by: Alexandre Boulch and Renaud Marlet Abstract Implicit neural networks have been successfully use

valeo.ai 93 Dec 29, 2022
AOT-GAN for High-Resolution Image Inpainting (codebase for image inpainting)

AOT-GAN for High-Resolution Image Inpainting Arxiv Paper | AOT-GAN: Aggregated Contextual Transformations for High-Resolution Image Inpainting Yanhong

Multimedia Research 214 Jan 03, 2023