• Stars
    star
    329
  • Rank 123,756 (Top 3 %)
  • Language
    Python
  • License
    Apache License 2.0
  • Created over 1 year ago
  • Updated 9 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Code for "OnePose++: Keypoint-Free One-Shot Object Pose Estimation without CAD Models" NeurIPS 2022

OnePose++: Keypoint-Free One-Shot Object Pose Estimation without CAD Models

Project Page | Paper


OnePose++: Keypoint-Free One-Shot Object Pose Estimation without CAD Models
Xingyi He*, Jiaming Sun*, Yu'ang Wang, Di Huang, Hujun Bao, Xiaowei Zhou
NeurIPS 2022

demo_vid

TODO List

  • Training, inference and demo code.
  • Pipeline to reproduce the evaluation results on the OnePose dataset and proposed OnePose_LowTexture dataset.
  • Use multiple GPUs for parallelized reconstruction and evaluation of multiple objects.
  • OnePose Cap app: we are preparing for the release of the data capture app to the App Store (iOS only), please stay tuned.

Installation

conda env create -f environment.yaml
conda activate oneposeplus

LoFTR and DeepLM are used in this project. Thanks for their great work, and we appreciate their contribution to the community. Please follow their installation instructions and LICENSE:

git submodule update --init --recursive

# Install DeepLM
cd submodules/DeepLM
sh example.sh
cp ${REPO_ROOT}/backup/deeplm_init_backup.py ${REPO_ROOT}/submodules/DeepLM/__init__.py

Note that the efficient optimizer DeepLM is used in our SfM refinement phase. If you face difficulty in installation, do not worry. You can still run the code by using our first-order optimizer, which is a little slower.

COLMAP is also used in this project for Structure-from-Motion. Please refer to the official instructions for the installation.

Download the pretrained models, including our 2D-3D matching and LoFTR models. Then move them to ${REPO_ROOT}/weights.

[Optional] You may optionally try out our web-based 3D visualization tool Wis3D for convenient and interactive visualizations of feature matches and point clouds. We also provide many other cool visualization features in Wis3D, welcome to try it out.

# Working in progress, should be ready very soon, only available on test-pypi now.
pip install -i https://test.pypi.org/simple/ wis3d

Demo

After the installation, you can refer to this page to run the demo with your custom data.

Training and Evaluation

Dataset setup

  1. Download OnePose dataset from here and OnePose_LowTexture dataset from here, and extract them into $/your/path/to/onepose_datasets. If you want to evaluate on LINEMOD dataset, download the real training data, test data and 3D object models from CDPN, and detection results by YOLOv5 from here. Then extract them into $/your/path/to/onepose_datasets/LINEMOD The directory should be organized in the following structure:
    |--- /your/path/to/datasets
    |       |--- train_data
    |       |--- val_data
    |       |--- test_data
    |       |--- lowtexture_test_data
    |       |--- LINEMOD
    |       |      |--- real_train
    |       |      |--- real_test
    |       |      |--- models
    |       |      |--- yolo_detection
    

You can refer to dataset document for more informations about OnePose_LowTexture dataset.

  1. Build the dataset symlinks
    REPO_ROOT=/path/to/OnePose_Plus_Plus
    ln -s /your/path/to/datasets $REPO_ROOT/data/datasets

Reconstruction

Reconstructed the semi-dense object point cloud and 2D-3D correspondences are needed for both training and test objects:

python run.py +preprocess=sfm_train_data.yaml use_local_ray=True  # for train data
python run.py +preprocess=sfm_inference_onepose_val.yaml use_local_ray=True # for val data
python run.py +preprocess=sfm_inference_onepose.yaml use_local_ray=True # for test data
python run.py +preprocess=sfm_inference_lowtexture.yaml use_local_ray=True # for lowtexture test data

Inference

# Eval OnePose dataset:
python inference.py +experiment=inference_onepose.yaml use_local_ray=True verbose=True

# Eval OnePose_LowTexture dataset:
python inference.py +experiment=inference_onepose_lowtexture.yaml use_local_ray=True verbose=True

Note that we perform the parallel evaluation on a single GPU with two workers by default. If your GPU memory is smaller than 6GB, you are supposed to add use_local_ray=False to turn off the parallelization.

Evaluation on LINEMOD Dataset

# Parse LINDMOD Dataset to OnePose Dataset format:
sh scripts/parse_linemod_objs.sh

# Reconstruct SfM model on real training data:
python run.py +preprocess=sfm_inference_LINEMOD.yaml use_local_ray=True

# Eval LINEMOD dataset:
python inference.py +experiment=inference_LINEMOD.yaml use_local_ray=True verbose=True

Training

  1. Prepare ground-truth annotations. Merge annotations of training/val data:

    python merge.py +preprocess=merge_annotation_train.yaml
    python merge.py +preprocess=merge_annotation_val.yaml
  2. Begin training

    python train_onepose_plus.py +experiment=train.yaml exp_name=onepose_plus_train

    Note that the default config for training uses 8 GPUs with around 23GB VRAM for each GPU. You can set the GPU number or ID in trainer.gpus and reduce the batch size in datamodule.batch_size to reduce the GPU VRAM footprint.

All model weights will be saved under ${REPO_ROOT}/models/checkpoints/${exp_name} and logs will be saved under ${REPO_ROOT}/logs/${exp_name}. You can visualize the training process by Tensorboard:

tensorboard --logdir logs --bind_all --port your_port_number

Citation

If you find this code useful for your research, please use the following BibTeX entry.

@inproceedings{
    he2022oneposeplusplus,
    title={OnePose++: Keypoint-Free One-Shot Object Pose Estimation without {CAD} Models},
    author={Xingyi He and Jiaming Sun and Yuang Wang and Di Huang and Hujun Bao and Xiaowei Zhou},
    booktitle={Advances in Neural Information Processing Systems},
    year={2022}
}

Acknowledgement

Part of our code is borrowed from hloc and LoFTR. Thanks to their authors for their great works.

More Repositories

1

EasyMocap

Make human motion capture easier.
Python
3,279
star
2

LoFTR

Code for "LoFTR: Detector-Free Local Feature Matching with Transformers", CVPR 2021, T-PAMI 2022
Jupyter Notebook
2,054
star
3

NeuralRecon

Code for "NeuralRecon: Real-Time Coherent 3D Reconstruction from Monocular Video", CVPR 2021 oral
Python
1,913
star
4

4K4D

[CVPR 2024] 4K4D: Real-Time 4D View Synthesis at 4K Resolution
Python
1,417
star
5

snake

Code for "Deep Snake for Real-Time Instance Segmentation" CVPR 2020 oral
Jupyter Notebook
1,142
star
6

OnePose

Code for "OnePose: One-Shot Object Pose Estimation without CAD Models", CVPR 2022
Python
903
star
7

neuralbody

Code for "Neural Body: Implicit Neural Representations with Structured Latent Codes for Novel View Synthesis of Dynamic Humans" CVPR 2021 best paper candidate
Python
897
star
8

pvnet

Code for "PVNet: Pixel-wise Voting Network for 6DoF Pose Estimation" CVPR 2019 oral
Jupyter Notebook
788
star
9

NeuralRecon-W

Code for "Neural 3D Reconstruction in the Wild", SIGGRAPH 2022 (Conference Proceedings)
Python
681
star
10

street_gaussians

Code for "Street Gaussians for Modeling Dynamic Urban Scenes"
576
star
11

mvpose

Code for "Fast and Robust Multi-Person 3D Pose Estimation from Multiple Views" (CVPR 2019, T-PAMI 2021)
Jupyter Notebook
504
star
12

animatable_nerf

Code for "Animatable Implicit Neural Representations for Creating Realistic Avatars from Videos" TPAMI 2024, ICCV 2021
Python
488
star
13

manhattan_sdf

Code for "Neural 3D Scene Reconstruction with the Manhattan-world Assumption" CVPR 2022 Oral
Python
482
star
14

EasyVolcap

[SIGGRAPH Asia 2023 (Technical Communications)] EasyVolcap: Accelerating Neural Volumetric Video Research
Python
461
star
15

ENeRF

SIGGRAPH Asia 2022: Code for "Efficient Neural Radiance Fields for Interactive Free-viewpoint Video"
Python
400
star
16

DetectorFreeSfM

Code for "Detector-Free Structure from Motion", Arxiv Preprint
393
star
17

clean-pvnet

Code for "PVNet: Pixel-wise Voting Network for 6DoF Pose Estimation" CVPR 2019 oral
C++
384
star
18

NeuMesh

Code for "MeuMesh: Learning Disentangled Neural Mesh-based Implicit Field for Geometry and Texture Editing", ECCV 2022 Oral
Python
374
star
19

AutoRecon

Code for "AutoRecon: Automated 3D Object Discovery and Reconstruction" CVPR 2023 (Highlight)
Python
341
star
20

object_nerf

Code for "Learning Object-Compositional Neural Radiance Field for Editable Scene Rendering", ICCV 2021
Python
306
star
21

PVIO

Robust and Efficient Visual-Inertial Odometry with Multi-plane Priors
C++
298
star
22

Vox-Fusion

Code for "Dense Tracking and Mapping with Voxel-based Neural Implicit Representation", ISMAR 2022
Python
257
star
23

EfficientLoFTR

Jupyter Notebook
251
star
24

ENFT-SfM

This source code provides a reference implementation for ENFT-SfM.
C++
250
star
25

Wis3D

A web-based 3D visualization tool for 3D computer vision.
TypeScript
248
star
26

SMAP

Code for "SMAP: Single-Shot Multi-Person Absolute 3D Pose Estimation" (ECCV 2020)
Python
237
star
27

mlp_maps

Code for "Representing Volumetric Videos as Dynamic MLP Maps" CVPR 2023
Cuda
230
star
28

im4d

SIGGRAPH Asia 2023: Code for "Im4D: High-Fidelity and Real-Time Novel View Synthesis for Dynamic Scenes"
Python
226
star
29

disprcnn

Code release for Stereo 3D Object Detection via Shape Prior Guided Instance Disparity Estimation (CVPR 2020, TPAMI 2021)
Jupyter Notebook
211
star
30

PVO

code for "PVO: Panoptic Visual Odometry", CVPR 2023
Python
198
star
31

GIFT

Code for "GIFT: Learning Transformation-Invariant Dense Visual Descriptors via Group CNNs" NeurIPS 2019
Python
190
star
32

Mirrored-Human

Code for "Reconstructing 3D Human Pose by Watching Humans in the Mirror" (CVPR 2021 Oral)
184
star
33

pvnet-rendering

render images for pvnet training
Python
177
star
34

IntrinsicNeRF

code for "IntrinsicNeRF: Learning Intrinsic Neural Radiance Fields for Editable Novel View Synthesis", ICCV 2023
Python
174
star
35

InvRender

Code for "Modeling Indirect Illumination for Inverse Rendering", CVPR 2022
Python
165
star
36

EIBA

Efficient Incremental BA
C++
161
star
37

instant-nvr

[CVPR 2023] Code for "Learning Neural Volumetric Representations of Dynamic Humans in Minutes"
Python
144
star
38

Monocular_3D_human

137
star
39

eval-vislam

Toolkit for VI-SLAM evaluation.
C++
137
star
40

SINE

Code for "Semantic-driven Image-based NeRF Editing with Prior-guided Editing Field", CVPR 2023
Python
123
star
41

rnin-vio

Python
116
star
42

deltar

Code for "DELTAR: Depth Estimation from a Light-weight ToF Sensor And RGB Image", ECCV 2022
Python
112
star
43

NeuSC

A Temporal Voyage: Code for "Neural Scene Chronology" [CVPR 2023]
Python
111
star
44

DeFlowSLAM

code for "DeFlowSLAM: Self-Supervised Scene Motion Decomposition for Dynamic Dense SLAM"
109
star
45

SegmentBA

Segment based Bundle Adjustment
C++
108
star
46

CoLi-BA

C++
107
star
47

iMoCap

dataset for ECCV 2020 "Motion Capture from Internet Videos"
Python
104
star
48

VS-Net

VS-Net: Voting with Segmentation for Visual Localization
Python
86
star
49

UDOLO

Python
84
star
50

pats

Code for "PATS: Patch Area Transportation with Subdivision for Local Feature Matching", CVPR 2023
C++
84
star
51

SA-HMR

Code for "Learning Human Mesh Recovery in 3D Scenes" CVPR 2023
Python
79
star
52

ENFT

Efficient Non-Consecutive Feature Tracking for Robust SfM http://www.zjucvg.net/ls-acts/ls-acts.html
C++
76
star
53

TotalSelfScan

Code for "TotalSelfScan: Learning Full-body Avatars from Self-Portrait Videos of Faces, Hands, and Bodies" (NeurIPS 2022)
Python
73
star
54

SAM-Graph

Code for "SAM-guided Graph Cut for 3D Instance Segmentation"
69
star
55

gcasp

[CoRL 2022] Generative Category-Level Shape and Pose Estimation with Semantic Primitives
Python
66
star
56

GeneAvatar

Code for "GeneAvatar: Generic Expression-Aware Volumetric Head Avatar Editing from a Single Image", CVPR 2024
59
star
57

zju3dv.github.io

HTML
57
star
58

vig-init

Rapid and Robust Monocular Visual-Inertial Initialization with Gravity Estimation via Vertical Edges
C++
56
star
59

coxgraph

Code for "Coxgraph: Multi-Robot Collaborative, Globally Consistent, Online Dense Reconstruction System", IROS 2021 Best Paper Award Finalist on Safety, Security, and Rescue Robotics in memory of Motohiro Kisoi
C++
54
star
60

RVL-Dynamic

Code for "Prior Guided Dropout for Robust Visual Localization in Dynamic Environments" in ICCV 2019
Python
47
star
61

Vox-Surf

Code for "Vox-Surf: Voxel-based Implicit Surface Representation", TVCG 2022
Python
46
star
62

NIID-Net

Code for "NIID-Net: Adapting Surface Normal Knowledge for Intrinsic Image Decomposition in Indoor Scenes" TVCG
Python
43
star
63

hghoi

ICCV 2023, Hierarchical Generation of Human-Object Interactions with Diffusion Probabilistic Models
C++
43
star
64

RLP_VIO

Code for "RLP-VIO: Robust and lightweight plane-based visual-inertial odometry for augmented reality, CAVW 2022
C++
42
star
65

Mirror-NeRF

Code for "Mirror-NeRF: Learning Neural Radiance Fields for Mirrors with Whitted-Style Ray Tracing", ACM MM 2023
Python
37
star
66

AutoDecomp

3D object discovery from casual object captures
HTML
36
star
67

RelightableAvatar

[CVPR 2024 (Highlight)] Relightable and Animatable Neural Avatar from Sparse-View Video
Python
35
star
68

CloseMoCap

Official implementation of "Reconstructing Close Human Interaction from Multiple Views"
33
star
69

poking_perception

Python
29
star
70

MagLoc-AR

14
star
71

MVN-AFM

Code for "Multi-View Neural 3D Reconstruction of Micro-/Nanostructures with Atomic Force Microscopy"
Python
11
star
72

blink_sim

11
star
73

pvnet-depth-sup

10
star
74

hybrid3d

C++
10
star
75

nr_in_a_room

Code for "Neural Rendering in a Room: Amodal 3D Understanding and Free-Viewpoint Rendering for the Closed Scene Composed of Pre-Captured Objects", ACM ToG
Python
10
star
76

RNNPose

RNNPose: Recurrent 6-DoF Object Pose Refinement with Robust Correspondence Field Estimation and Pose Optimization, CVPR 2022
6
star
77

rnin-vio.github.io

CSS
2
star
78

LSFB

1
star