[ICCV21] Self-Calibrating Neural Radiance Fields

Overview

Self-Calibrating Neural Radiance Fields, ICCV, 2021

Project Page | Paper | Video

Author Information

Types of camera parameters

News

  • 2021-09-02: The first version of Self-Calibrating Neural Radiance Fields is published

Overview

In this work, we propose a camera self-calibration algorithm for generic cameras with arbitrary non-linear distortions. We jointly learn the geometry of the scene and the accurate camera parameters without any calibration objects. Our camera model consists a pinhole model, radial distortion, and a generic noise model that can learn arbitrary non-linear camera distortions. While traditional self-calibration algorithms mostly rely on geometric constraints, we additionally incorporate photometric consistency. This requires learning the geometry of the scene and we use Neural Radiance Fields (NeRF). We also propose a new geometric loss function, viz., projected ray distance loss, to incorporate geometric consistency for complex non-linear camera models. We validate our approach on standard real image datasets and demonstrate our model can learn the camera intrinsics and extrinsics (pose) from scratch without COLMAP initialization. Also, we show that learning accurate camera models in differentiable manner allows us to improves PSNR over NeRF. We experimentally demonstrate that our proposed method is applicable to variants of NeRF. In addition, we use a set of images captured with a fish-eye lens to demonstrate that learning camera model jointly improves the performance significantly over the COLMAP initialization.

Method

Generic Camera Model

We provide the definition of our differentiable camera model that combines the pinhole camera model, radial distortion, and a generic non-linear camera distortion for self-calibration. Our differentiable generic camera model consists of four components: intrinsic, extrinsic, radial distortion, and non-linear distortion parameters. We show that modeling the rays more accurately (camera model) results in better neural rendering. The following figure shows the computational steps to generate rays of our proposed learnable generic camera model.

computational graph for rays

Projected Ray Distance

The generic camera model poses a new challenge defining a geometric loss. In most traditional work, the geometric loss is defined as an epipolar constraint that measures the distance between an epipolar line and the corresponding point, or reprojection error where a 3D point for a correspondence is defined first which is then projected to an image plane to measure the distance between the projection and the correspondence. In this work, rather than requiring a 3D reconstruction to compute an indirect loss like the reprojection error, we propose the projected ray distance loss that directly measures the discrepancy between rays using our generic camera model.

projected ray distance

Curriculum Learning

The camera parameters determine the positions and directions of the rays for NeRF learning, and unstable values often result in divergence or sub-optimal results. Thus, we incrementally add a subset of learning parameters to the optimization process to reduce the complexity of learning cameras and geometry jointly. First, we learn the NeRF network while initializing the camera focal lengths and camera centers to half the image width and height. Learning coarse geometry first is crucial since it initializes the network parameters suitable for learning better camera parameters. Next, we sequentially add camera parameters from the linear camera model, radial distortion, to nonlinear noise of ray direction, ray origin to the learning. We progressively make the camera model more complex to prevent the camera parameters from overfitting and also allows faster training.

curriculum learning

Installation

Requirements

  • Ubuntu 16.04 or higher
  • CUDA 11.1 or higher
  • Python v3.7 or higher
  • Pytorch v1.7 or higher
  • Hardware Spec
    • GPUs 11GB (2080ti) or larger capacity
    • For NeRF++, 2GPUs(2080ti) are required to reproduce the result
    • For FishEyeNeRF experiments, we have used 4GPUs(V100).

Environment Setup

  • We recommend to conda for installation. All the requirements for two codes, NeRF and NeRF++, are included in the requirements.txt

    conda create -n icn python=3.8
    conda activate icn
    pip install -r requirements.txt
    git submodule update --init --recursive
    

Pretrained Weights & Qualitative Results

Here, we provide pretrained weights for users to easily reproduce results in the paper. You can download the pretrained weight in the following link. In the link, we provide all the weights of experiments, reported in our paper. To load the pretrained weight, add the following argument at the end of argument in each script. In the zip file, we have also included qualitative results that are used in our paper.

Link to download the pretrained weight: [link]

Datasets

We use three datasets for evaluation: LLFF dataset, tanks and temples dataset, and FishEyeNeRF dataset (Images captured with a fish-eye lens).

Put the data in the directory "data/" then add soft link with one of the following:

ln -s data/nerf_llff_data NeRF/data
ln -s data/tanks_and_temples nerfplusplus/data
ln -s data/FishEyeNeRF nerfplusplus/data/fisheyenerf

Demo Code

The demo code is available at "demo.sh" file. This code runs curriculum learning in NeRF architecture. Please install the aforementioned requirements before running the code. To run the demo code, run:

sh demo.sh

If you want to reproduce the results that are reported in our main paper, run the scripts in the "scripts" directory.

Main Table 1: Self-Calibration Experiment (LLFF)
Main Table 2: Improvement over NeRF (LLFF)
Main Table 3: Improvement over NeRF++ (Tanks and Temples)
Main Table 4: Improvement over NeRF++ (Images with a fish-eye lens)

Code Example:

sh scripts/main_table_1/fern/main1_fern_ours.sh
sh scripts/main_table_2/fern/main2_fern_ours.sh
sh scripts/main_table_3/main_3_m60.sh
sh scripts/main_table_4/globe_ours.sh

Citing Self-Calibrating Neural Radiance Fields

@inproceedings{SCNeRF2021,
    author = {Yoonwoo Jeong, Seokjun Ahn, Christopehr Choy, Animashree Anandkumar, 
    Minsu Cho, and Jaesik Park},
    title = {Self-Calibrating Neural Radiance Fields},
    booktitle = {ICCV},
    year = {2021},
}

Concurrent Work

We list a few recent concurrent projects that tackle camera extrinsics (pose) optimization in NeRF. Note that our Self-Calibrating NeRF optimizes an extensive set of camera parameters for intrinsics, extrinsics, radial distortion, and non-linear distortion.

Acknowledgements

We appreciate all ICCV reviewers for valuable comments. Their valuable suggestions have helped us to improve our paper. We also acknowledge amazing implementations of NeRF++(https://github.com/Kai-46/nerfplusplus) and NeRF-pytorch(https://github.com/yenchenlin/nerf-pytorch).

HiFi++: a Unified Framework for Neural Vocoding, Bandwidth Extension and Speech Enhancement

HiFi++ : a Unified Framework for Neural Vocoding, Bandwidth Extension and Speech Enhancement This is the unofficial implementation of Vocoder part of

Rishikesh (ऋषिकेश) 118 Dec 29, 2022
PyTorch Implementation of Exploring Explicit Domain Supervision for Latent Space Disentanglement in Unpaired Image-to-Image Translation.

DosGAN-PyTorch PyTorch Implementation of Exploring Explicit Domain Supervision for Latent Space Disentanglement in Unpaired Image-to-Image Translation

40 Nov 30, 2022
LabelImg is a graphical image annotation tool.

LabelImgPlus LabelImg is a graphical image annotation tool. This project is not updated with new functions now. More functions are supported with Labe

lzx1413 200 Dec 20, 2022
Source code for the paper "SEPP: Similarity Estimation of Predicted Probabilities for Defending and Detecting Adversarial Text" PACLIC 2021

Adversarial text generator Refer to "adversarial_text_generator"[https://github.com/quocnsh/SEPP_generator] project for generating adversarial texts A

0 Oct 05, 2021
A Free and Open Source Python Library for Multiobjective Optimization

Platypus What is Platypus? Platypus is a framework for evolutionary computing in Python with a focus on multiobjective evolutionary algorithms (MOEAs)

Project Platypus 424 Dec 18, 2022
Data pipelines for both TensorFlow and PyTorch!

rapidnlp-datasets Data pipelines for both TensorFlow and PyTorch ! If you want to load public datasets, try: tensorflow/datasets huggingface/datasets

1 Dec 08, 2021
Patch Rotation: A Self-Supervised Auxiliary Task for Robustness and Accuracy of Supervised Models

Patch-Rotation(PatchRot) Patch Rotation: A Self-Supervised Auxiliary Task for Robustness and Accuracy of Supervised Models Submitted to Neurips2021 To

4 Jul 12, 2021
Code for the SIGIR 2022 paper "Hybrid Transformer with Multi-level Fusion for Multimodal Knowledge Graph Completion"

MKGFormer Code for the SIGIR 2022 paper "Hybrid Transformer with Multi-level Fusion for Multimodal Knowledge Graph Completion" Model Architecture Illu

ZJUNLP 68 Dec 28, 2022
Segmentation models with pretrained backbones. Keras and TensorFlow Keras.

Python library with Neural Networks for Image Segmentation based on Keras and TensorFlow. The main features of this library are: High level API (just

Pavel Yakubovskiy 4.2k Jan 09, 2023
Code and experiments for "Deep Neural Networks for Rank Consistent Ordinal Regression based on Conditional Probabilities"

corn-ordinal-neuralnet This repository contains the orginal model code and experiment logs for the paper "Deep Neural Networks for Rank Consistent Ord

Raschka Research Group 14 Dec 27, 2022
Official implementation of SIGIR'2021 paper: "Sequential Recommendation with Graph Neural Networks".

SURGE: Sequential Recommendation with Graph Neural Networks This is our TensorFlow implementation for the paper: Sequential Recommendation with Graph

FIB LAB, Tsinghua University 53 Dec 26, 2022
A library for low-memory inferencing in PyTorch.

Pylomin Pylomin (PYtorch LOw-Memory INference) is a library for low-memory inferencing in PyTorch. Installation ... Usage For example, the following c

3 Oct 26, 2022
yufan 81 Dec 08, 2022
Controlling the MicriSpotAI robot from scratch

Project-MicroSpot-AI Controlling the MicriSpotAI robot from scratch Colaborators Alexander Dennis Components from MicroSpot The MicriSpotAI has the fo

Dennis Núñez-Fernández 5 Oct 20, 2022
Official Codes for Graph Modularity:Towards Understanding the Cross-Layer Transition of Feature Representations in Deep Neural Networks.

Dynamic-Graphs-Construction Official Codes for Graph Modularity:Towards Understanding the Cross-Layer Transition of Feature Representations in Deep Ne

11 Dec 14, 2022
DIRL: Domain-Invariant Representation Learning

DIRL: Domain-Invariant Representation Learning Domain-Invariant Representation Learning (DIRL) is a novel algorithm that semantically aligns both the

Ajay Tanwani 30 Nov 07, 2022
Code repository for Self-supervised Structure-sensitive Learning, CVPR'17

Self-supervised Structure-sensitive Learning (SSL) Ke Gong, Xiaodan Liang, Xiaohui Shen, Liang Lin, "Look into Person: Self-supervised Structure-sensi

Clay Gong 219 Dec 29, 2022
A PyTorch Toolbox for Face Recognition

FaceX-Zoo FaceX-Zoo is a PyTorch toolbox for face recognition. It provides a training module with various supervisory heads and backbones towards stat

JDAI-CV 1.6k Jan 06, 2023
Load What You Need: Smaller Multilingual Transformers for Pytorch and TensorFlow 2.0.

Smaller Multilingual Transformers This repository shares smaller versions of multilingual transformers that keep the same representations offered by t

Geotrend 79 Dec 28, 2022
Learning Confidence for Out-of-Distribution Detection in Neural Networks

Learning Confidence Estimates for Neural Networks This repository contains the code for the paper Learning Confidence for Out-of-Distribution Detectio

235 Jan 05, 2023