ScaleNet: A Shallow Architecture for Scale Estimation

Related tags

Deep LearningScaleNet
Overview

ScaleNet: A Shallow Architecture for Scale Estimation

Repository for the code of ScaleNet paper:

"ScaleNet: A Shallow Architecture for Scale Estimation".
Axel Barroso-Laguna, Yurun Tian, and Krystian Mikolajczyk. arxiv 2021.

[Paper on arxiv]

Prerequisite

Python 3.7 is required for running and training ScaleNet code. Use Conda to install the dependencies:

conda create --name scalenet_env
conda activate scalenet_env 
conda install pytorch==1.2.0 -c pytorch
conda install -c conda-forge tensorboardx opencv tqdm 
conda install -c anaconda pandas 
conda install -c pytorch torchvision 

Scale estimation

run_scalenet.py can be used to estimate the scale factor between two input images. We provide as an example two images, im1.jpg and im2.jpg, within the assets/im_test folder as an example. For a quick test, please run:

python run_scalenet.py --im1_path assets/im_test/im1.jpg --im2_path assets/im_test/im2.jpg

Arguments:

  • im1_path: Path to image A.
  • im2_path: Path to image B.

It returns the scale factor A->B.

Training ScaleNet

We provide a list of Megadepth image pairs and scale factors in the assets folder. We use the undistorted images, corresponding camera intrinsics, and extrinsics preprocessed by D2-Net. You can download them directly from their main repository. If you desire to use the default configuration for training, just run the following line:

python train_ScaleNet.py --image_data_path /path/to/megadepth_d2net

There are though some important arguments to take into account when training ScaleNet.

Arguments:

  • image_data_path: Path to the undistorted Megadepth images from D2-Net.
  • save_processed_im: ScaleNet processes the images so that they are center-cropped and resized to a default resolution. We give the option to store the processed images and load them during training, which results in a much faster training. However, the size of the files can be big, and hence, we suggest storing them in a large storage disk. Default: True.
  • root_precomputed_files: Path to save the processed image pairs.

If you desire to modify ScaleNet training or architecture, look for all the arguments in the train_ScaleNet.py script.

Test ScaleNet - camera pose

In addition to the training, we also provide a template for testing ScaleNet in the camera pose task. In assets/data/test.csv, you can find the test Megadepth pairs, along with their scale change as well as their camera poses.

Run the following command to test ScaleNet + SIFT in our custom camera pose split:

python test_camera_pose.py --image_data_path /path/to/megadepth_d2net

camera_pose.py script is intended to provide a structure of our camera pose experiment. You can change either the local feature extractor or the scale estimator and obtain your camera pose results.

BibTeX

If you use this code or the provided training/testing pairs in your research, please cite our paper:

@InProceedings{Barroso-Laguna2021_scale,
    author = {Barroso-Laguna, Axel and Tian, Yurun and Mikolajczyk, Krystian},
    title = {{ScaleNet: A Shallow Architecture for Scale Estimation}},
    booktitle = {Arxiv: },
    year = {2021},
}
Owner
Axel Barroso
Computer Vision PhD Student
Axel Barroso
Age and Gender prediction using Keras

cnn_age_gender Age and Gender prediction using Keras Dataset example : Description : UTKFace dataset is a large-scale face dataset with long age span

XN3UR0N 58 May 03, 2022
Self-Supervised Generative Style Transfer for One-Shot Medical Image Segmentation

Self-Supervised Generative Style Transfer for One-Shot Medical Image Segmentation This repository contains the Pytorch implementation of the proposed

Devavrat Tomar 19 Nov 10, 2022
Self-Correcting Quantum Many-Body Control using Reinforcement Learning with Tensor Networks

Self-Correcting Quantum Many-Body Control using Reinforcement Learning with Tensor Networks This repository contains the code and data for the corresp

Friederike Metz 7 Apr 23, 2022
LSUN Dataset Documentation and Demo Code

LSUN Please check LSUN webpage for more information about the dataset. Data Release All the images in one category are stored in one lmdb database fil

Fisher Yu 426 Jan 02, 2023
PyTorch implementation of spectral graph ConvNets, NIPS’16

Graph ConvNets in PyTorch October 15, 2017 Xavier Bresson http://www.ntu.edu.sg/home/xbresson https://github.com/xbresson https://twitter.com/xbresson

Xavier Bresson 287 Jan 04, 2023
An adaptive hierarchical energy management strategy for hybrid electric vehicles

An adaptive hierarchical energy management strategy This project contains the source code of an adaptive hierarchical EMS combining heuristic equivale

19 Dec 13, 2022
This repo contains research materials released by members of the Google Brain team in Tokyo.

Brain Tokyo Workshop đź§  đź—Ľ This repo contains research materials released by members of the Google Brain team in Tokyo. Past Projects Weight Agnostic

Google 1.2k Jan 02, 2023
Course materials for Fall 2021 "CIS6930 Topics in Computing for Data Science" at New College of Florida

Fall 2021 CIS6930 Topics in Computing for Data Science This repository hosts course materials used for a 13-week course "CIS6930 Topics in Computing f

Yoshi Suhara 101 Nov 30, 2022
On the Analysis of French Phonetic Idiosyncrasies for Accent Recognition

On the Analysis of French Phonetic Idiosyncrasies for Accent Recognition With the spirit of reproducible research, this repository contains codes requ

0 Feb 24, 2022
Detectron2 is FAIR's next-generation platform for object detection and segmentation.

Detectron2 is Facebook AI Research's next generation software system that implements state-of-the-art object detection algorithms. It is a ground-up r

Facebook Research 23.3k Jan 08, 2023
SC-GlowTTS: an Efficient Zero-Shot Multi-Speaker Text-To-Speech Model

SC-GlowTTS: an Efficient Zero-Shot Multi-Speaker Text-To-Speech Model Edresson Casanova, Christopher Shulby, Eren Gölge, Nicolas Michael Müller, Frede

Edresson Casanova 92 Dec 09, 2022
wmctrl ported to Python Ctypes

work in progress wmctrl is a command that can be used to interact with an X Window manager that is compatible with the EWMH/NetWM specification. wmctr

Iyad Ahmed 22 Dec 31, 2022
Official tensorflow implementation for CVPR2020 paper “Learning to Cartoonize Using White-box Cartoon Representations”

Tensorflow implementation for CVPR2020 paper “Learning to Cartoonize Using White-box Cartoon Representations”.

3.7k Dec 31, 2022
Classification of EEG data using Deep Learning

Graduation-Project Classification of EEG data using Deep Learning Epilepsy is the most common neurological disease in the world. Epilepsy occurs as a

Osman Alpaydın 5 Jun 24, 2022
《A-CNN: Annularly Convolutional Neural Networks on Point Clouds》(2019)

A-CNN: Annularly Convolutional Neural Networks on Point Clouds Created by Artem Komarichev, Zichun Zhong, Jing Hua from Department of Computer Science

Artёm Komarichev 44 Feb 24, 2022
PPLNN is a Primitive Library for Neural Network is a high-performance deep-learning inference engine for efficient AI inferencing

PPLNN is a Primitive Library for Neural Network is a high-performance deep-learning inference engine for efficient AI inferencing

943 Jan 07, 2023
PyTorch implementation of Constrained Policy Optimization

PyTorch implementation of Constrained Policy Optimization (CPO) This repository has a simple to understand and use implementation of CPO in PyTorch. A

Sapana Chaudhary 25 Dec 08, 2022
Predicting future trajectories of people in cameras of novel scenarios and views.

Pedestrian Trajectory Prediction Predicting future trajectories of pedestrians in cameras of novel scenarios and views. This repository contains the c

8 Sep 03, 2022
Implementation of U-Net and SegNet for building segmentation

Specialized project Created by Katrine Nguyen and Martin Wangen-Eriksen as a part of our specialized project at Norwegian University of Science and Te

Martin.w-e 3 Dec 07, 2022
Official code repository for the publication "Latent Equilibrium: A unified learning theory for arbitrarily fast computation with arbitrarily slow neurons"

Latent Equilibrium: A unified learning theory for arbitrarily fast computation with arbitrarily slow neurons This repository contains the code to repr

Computational Neuroscience, University of Bern 3 Aug 04, 2022