A novel framework to automatically learn high-quality scanning of non-planar, complex anisotropic appearance.

Overview

appearance-scanner

About

This repository is an implementation of the neural network proposed in Free-form Scanning of Non-planar Appearance with Neural Trace Photography

For any questions, please email xiaohema98 at gmail.com

Usage

System Requirement

  • Windows or Linux(The codes are validated on Win10, Ubuntu 18.04 and Ubuntu 16.04)
  • Python >= 3.6.0
  • Pytorch >= 1.6.0
  • tensorflow>=1.11.0, meshlab and matlab are needed if you process the test data we provide

Training

  1. move to appearance_scanner
  2. run train.bat or train.sh according to your own platform

Notice that the data generation step

python data_utils/origin_parameter_generator_n2d.py %data_root% %Sample_num% %train_ratio%

should be run only once.

Training Visulization

When training is started, you can open tensorboard to observe the training process. There will be two log images of a certain training sample, one is the sampled lumitexels from 64 views and the other is an composite image from six images in the order of groundtruth lumitexel, groundtruth diffuse lumitexel, groundtruth specular lumitexel, predicted lumitexel, predicted diffuse lumitexel and predicted specular lumitexel.

Trained lighting pattern will also be showed. Trained model will be found in the log_dir set in train.bat/train.sh.

License

Our source code is released under the GPL-3.0 license for acadmic purposes. The only requirement for using the code in your research is to cite our paper:

@article{Ma:2021:Scanner,
author = {Ma, Xiaohe and Kang, Kaizhang and Zhu, Ruisheng and Wu, Hongzhi and Zhou, Kun},
title = {Free-Form Scanning of Non-Planar Appearance with Neural Trace Photography},
year = {2021},
issue_date = {August 2021},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
volume = {40},
number = {4},
issn = {0730-0301},
url = {https://doi.org/10.1145/3450626.3459679},
doi = {10.1145/3450626.3459679},
journal = {ACM Trans. Graph.},
month = jul,
articleno = {124},
numpages = {13},
keywords = {illumination multiplexing, SVBRDF, optimal lighting pattern}
}

For commercial licensing options, please email hwu at acm.org. See COPYING for the open source license.

Reconstruction process

The reconstruction needs photographs taken with our scanner, a pre-trained network model and a pre-captured geometry shape as input. First, perform structure-from-motion with COLMAP, resulting in a 3D point cloud and camera poses with respect to it. Next, this point cloud is precisely aligned with the pre-captured shape. Then the view information of each vertex can be assembled as the input of the network. Last, we fit the predicted grayscale specular lumitexel with L-BFGS-B, to obtain the refletance parameters.

Download our Cheongsam test data and unzip it in appearance_scanner/data/.

Three sample photographs captured from the Cheongsam object. The brightness of the original images has been doubled for a better visualization.

Download our model and unzip it in appearance_scanner/.

1. Camera Registration

1.1 Run SFM/run.bat first to brighten the raw images

1.2 Open Colmap and do the following steps

1.2.1 New project

1.2.2 Feature extraction

Copy the parameters of our camera in device_configuration/cam.txt to Custom parameters.

1.2.3 Feature matching

Tick guided_matching and run.

1.2.4 Reconstruction options

Do not tick multiple_models in the General sheet.

Do not tick refine_focal_length/refine_extra_params/use_pba in the Bundle sheet.

Start reconstruction.

1.2.5 Bundle adjustment

Do not tick refine_focal_length/refine_principal_point/refine_extra_params.

1.2.6

Make a folder named undistort_feature in Cheongsam/ and export model as text in undistort_feature folder. Three files including cameras.txt, images.txt and point3D.txt will be saved.

1.2.7

Dense reconstruction -> select undistort_feature folder -> Undistortion -> Stereo

Since we upload all the photos we taken, it will take a long time to run this step. We strongly recommend you run

colmap stereo_fusion --workspace_path path --input_type photometric --output_path path/fused.ply

//change path to undistort_feature folder

when the files amount in undistort_feature/stereo/normal_maps arise to around 200-250. It will output a coarse point cloud in undistort_feature/ .

Delete the noise points and the table plane.

Save fused.ply.

2. Extract measurements

move your own model to models/ and run appearance_scanner/test_files/prepare_pattern.bat

run extract_measurements/run.bat

3. Align mesh

3.1 Use meshlab to align mesh roughly

Open fused.ply and Cheongsam/scan/Cheongsam.ply in the same meshlab window. Cheongsam.ply is pre-capptured with a commercial mobile 3D scanner, EinScan Pro 2X Plus.

Align two mesh and save project file in Cheongsam/scan/Cheongsam.aln, which records the transform matrix between two meshes.

run CoherentPointDrift/run.bat to align Cheongsam.ply to fused.ply.

3.2 Further Alignment

run CoherentPointDrift/CoherentPointDrift-master/simplify/run.bat to simplify two meshes. It will call meshlabserver to simplify two meshes so that save the processing time.

Open the CPD project in Matlab and run main.m.

After alignment done, run CoherentPointDrift/run_pass2.bat. meshed-poisson_obj.ply will be saved in undistort_feature/ .

You should open fused.ply and meshed-poisson_obj.ply in the same meshlab window to check the quality of alignment. It is a key factor in the final result.

4. Generate view information from registrated cameras

4.1 Remesh

run ACVD/aarun.bat

save undistort_feature/meshed-poisson_obj_remeshed.ply as undistort_feature/meshed-poisson_obj_remeshed.obj

It is not necessary to reconstruct all the vertices on the pre-captured shape in our case. The remesh step will output an optimized 3D triangular mesh with a user defined vertex budget, which is controlled by NVERTICES in aarun.bat.

4.2 uvatlas

copy data_processing/device_configuration/extrinsic.bin to undistort_feature/ copy Cheongsam/512.exr and 1024.exr to undistort_feature/

run generate_texture/trans.bat to transform mesh from colmap frame to world frame in our system and generate uv maps.

We recommend that you generate uv maps with resolution of 512x512 because it will save a lot of time and retain most details. The resolution of the results in our paper is 1024x1024.

You can set UVMAP_WIDTH and UVMAP_HEIGHT to 1024 in uv/uv_generator.bat if you pursue higher quality.

4.3 Compute view information

Downloads embree and copy bin/embree3.dll, glfw3.dll, tbb12.dll to generate_texture/.

Downloads opencv and copy opencv_world#v.dll to generate_texture/. We use opencv3.4.3 in our project.

in generate_texture/texgen.bat, set TEXTURE_RESOLUTION to the certain resolution

choose the same line or the other reference on meshed-poisson_obj_remeshed.obj and on the physical object, then meature the lengths of both. Set the results to COLMAP_L and REAL_L. REAL_L in mm.

The marker cylinder's diameter is 10cm, so we set REAL_L to 100.

run generate_texture/texgen.bat to output view information of all registrated cameras.

5. Gather data

run gather_data/run.bat to gather the inputs to the network for each valid pixel on the texture map. A folder named images_{resolution} will be made in Cheongsam/.

6. Fitting

  1. Change %DATA_ROOT% and %TEXTURE_MAP_SIZE% in fitting/tf_ggx_render/run.bat. Then run fitting/tf_ggx_render/run.bat.
  2. A folder named fitting_folder_for_server will be generated under texture_{resolution}.
  3. Upload the entire folder generated in previous step to a linux server.
  4. Change current path of terminal to fitting_folder_for_server\fitting_temp\tf_ggx_render, then run split.sh or split1024.sh according to the resolution you chosen. (split.sh is for 512. If you want to use custom texture map resolution, you may need to modify the $TEX_RESOLUTION in split.sh)
  5. When the fitting procedure finished, a folder named Cheongsam/images_{resolution}/data_for_server/data/images/data_for_server/fitted_grey will be generated. It contains the final texture maps, including normal_fitted_global.exr, tangent_fitted_global.exr, axay_fitted.exr, pd_fitted.exr and ps_fitted.exr.
    Note: If you find the split.sh cannot run properly and complain about abscent which_server argument, it's probably caused by the difference of linux and windows. Reading in the sh file and writing it with no changing of content on sever can fix this issue.
diffuse specular roughness
normal tangent

7. Render results

We use the anisotropic GGX model to represent reflectance. The object can be rendered with path tracing using NVIDIA OptiX or openGL.

Reference & Third party tools

Shining3D. 2021. EinScan Pro 2X Plus Handheld Industrial Scanner. Retrieved January, 2021 from https://www.einscan.com/handheld-3d-scanner/2x-plus/

Colmap: https://demuc.de/colmap/

Coherent Point Drift: https://ieeexplore.ieee.org/document/5432191

ACVD: https://github.com/valette/ACVD

Embree: https://www.embree.org/

OpenCV: https://opencv.org/

Owner
Xiaohe Ma
Xiaohe Ma
Unofficial implementation of the paper: PonderNet: Learning to Ponder in TensorFlow

PonderNet-TensorFlow This is an Unofficial Implementation of the paper: PonderNet: Learning to Ponder in TensorFlow. Official PyTorch Implementation:

1 Oct 23, 2022
Visual Memorability for Robotic Interestingness via Unsupervised Online Learning (ECCV 2020 Oral and TRO)

Visual Interestingness Refer to the project description for more details. This code based on the following paper. Chen Wang, Yuheng Qiu, Wenshan Wang,

Chen Wang 36 Sep 08, 2022
FocusFace: Multi-task Contrastive Learning for Masked Face Recognition

FocusFace This is the official repository of "FocusFace: Multi-task Contrastive Learning for Masked Face Recognition" accepted at IEEE International C

Pedro Neto 21 Nov 17, 2022
PySOT - SenseTime Research platform for single object tracking, implementing algorithms like SiamRPN and SiamMask.

PySOT is a software system designed by SenseTime Video Intelligence Research team. It implements state-of-the-art single object tracking algorit

STVIR 4.1k Dec 29, 2022
"Neural Turing Machine" in Tensorflow

Neural Turing Machine in Tensorflow Tensorflow implementation of Neural Turing Machine. This implementation uses an LSTM controller. NTM models with m

Taehoon Kim 1k Dec 06, 2022
Open & Efficient for Framework for Aspect-based Sentiment Analysis

PyABSA - Open & Efficient for Framework for Aspect-based Sentiment Analysis Fast & Low Memory requirement & Enhanced implementation of Local Context F

YangHeng 567 Jan 07, 2023
Official implementation of the MM'21 paper Constrained Graphic Layout Generation via Latent Optimization

[MM'21] Constrained Graphic Layout Generation via Latent Optimization This repository provides the official code for the paper "Constrained Graphic La

Kotaro Kikuchi 73 Dec 27, 2022
The implementation our EMNLP 2021 paper "Enhanced Language Representation with Label Knowledge for Span Extraction".

LEAR The implementation our EMNLP 2021 paper "Enhanced Language Representation with Label Knowledge for Span Extraction". See below for an overview of

杨攀 93 Jan 07, 2023
Unsupervised Image-to-Image Translation

UNIT: UNsupervised Image-to-image Translation Networks Imaginaire Repository We have a reimplementation of the UNIT method that is more performant. It

Ming-Yu Liu 劉洺堉 1.9k Dec 26, 2022
InterfaceGAN++: Exploring the limits of InterfaceGAN

InterfaceGAN++: Exploring the limits of InterfaceGAN Authors: Apavou Clément & Belkada Younes From left to right - Images generated using styleGAN and

Younes Belkada 42 Dec 23, 2022
Identify the emotion of multiple speakers in an Audio Segment

MevonAI - Speech Emotion Recognition Identify the emotion of multiple speakers in a Audio Segment Report Bug · Request Feature Try the Demo Here Table

Suyash More 110 Dec 03, 2022
This is an official implementation of the paper "Distance-aware Quantization", accepted to ICCV2021.

PyTorch implementation of DAQ This is an official implementation of the paper "Distance-aware Quantization", accepted to ICCV2021. For more informatio

CV Lab @ Yonsei University 36 Nov 04, 2022
Official Implementation of "Designing an Encoder for StyleGAN Image Manipulation"

Designing an Encoder for StyleGAN Image Manipulation (SIGGRAPH 2021) Recently, there has been a surge of diverse methods for performing image editing

749 Jan 09, 2023
Users can free try their models on SIDD dataset based on this code

SIDD benchmark 1 Train python train.py If you want to train your network, just modify the yaml in the options folder. 2 Validation python validation.p

Yuzhi ZHAO 2 May 20, 2022
Segmentation Training Pipeline

Segmentation Training Pipeline This package is a part of Musket ML framework. Reasons to use Segmentation Pipeline Segmentation Pipeline was developed

Musket ML 52 Dec 12, 2022
A deep learning library that makes face recognition efficient and effective

Distributed Arcface Training in Pytorch This is a deep learning library that makes face recognition efficient, and effective, which can train tens of

Sajjad Aemmi 10 Nov 23, 2021
Apply a perspective transformation to a raster image inside Inkscape (no need to use an external software such as GIMP or Krita).

Raster Perspective Apply a perspective transformation to bitmap image using the selected path as envelope, without the need to use an external softwar

s.ouchene 19 Dec 22, 2022
Semi-Supervised Learning, Object Detection, ICCV2021

End-to-End Semi-Supervised Object Detection with Soft Teacher By Mengde Xu*, Zheng Zhang*, Han Hu, Jianfeng Wang, Lijuan Wang, Fangyun Wei, Xiang Bai,

Microsoft 789 Dec 27, 2022
An end-to-end machine learning library to directly optimize AUC loss

LibAUC An end-to-end machine learning library for AUC optimization. Why LibAUC? Deep AUC Maximization (DAM) is a paradigm for learning a deep neural n

Andrew 75 Dec 12, 2022
Jittor Medical Segmentation Lib -- The assignment of Pattern Recognition course (2021 Spring) in Tsinghua University

THU模式识别2021春 -- Jittor 医学图像分割 模型列表 本仓库收录了课程作业中同学们采用jittor框架实现的如下模型: UNet SegNet DeepLab V2 DANet EANet HarDNet及其改动HarDNet_alter PSPNet OCNet OCRNet DL

48 Dec 26, 2022