Pytorch version of SfmLearner from Tinghui Zhou et al.

Overview

SfMLearner Pytorch version

This codebase implements the system described in the paper:

Unsupervised Learning of Depth and Ego-Motion from Video

Tinghui Zhou, Matthew Brown, Noah Snavely, David G. Lowe

In CVPR 2017 (Oral).

See the project webpage for more details.

Original Author : Tinghui Zhou ([email protected]) Pytorch implementation : Clément Pinard ([email protected])

sample_results

Preamble

This codebase was developed and tested with Pytorch 1.0.1, CUDA 10 and Ubuntu 16.04. Original code was developped in tensorflow, you can access it here

Prerequisite

pip3 install -r requirements.txt

or install manually the following packages :

pytorch >= 1.0.1
pebble
matplotlib
imageio
scipy
argparse
tensorboardX
blessings
progressbar2
path.py

Note

Because it uses latests pytorch features, it is not compatible with anterior versions of pytorch.

If you don't have an up to date pytorch, the tags can help you checkout the right commits corresponding to your pytorch version.

What has been done

  • Training has been tested on KITTI and CityScapes.
  • Dataset preparation has been largely improved, and now stores image sequences in folders, making sure that movement is each time big enough between each frame
  • That way, training is now significantly faster, running at ~0.14sec per step vs ~0.2s per steps initially (on a single GTX980Ti)
  • In addition you don't need to prepare data for a particular sequence length anymore as stacking is made on the fly.
  • You can still choose the former stacked frames dataset format.
  • Convergence is now almost as good as original paper with same hyper parameters
  • You can know compare with groud truth for your validation set. It is still possible to validate without, but you now can see that minimizing photometric error is not equivalent to optimizing depth map.

Differences with official Implementation

  • Smooth Loss is different from official repo. Instead of applying it to disparity, we apply it to depth. Original disparity smooth loss did not work well (don't know why !) and it did not even converge at all with weight values used (0.5).
  • loss is divided by 2.3 when downscaling instead of 2. This is the results of empiric experiments, so the optimal value is clearly not carefully determined.
  • As a consequence, with a smooth loss of 2.0̀, depth test is better, but Pose test is worse. To revert smooth loss back to original, you can change it here

Preparing training data

Preparation is roughly the same command as in the original code.

For KITTI, first download the dataset using this script provided on the official website, and then run the following command. The --with-depth option will save resized copies of groundtruth to help you setting hyper parameters. The --with-pose will dump the sequence pose in the same format as Odometry dataset (see pose evaluation)

python3 data/prepare_train_data.py /path/to/raw/kitti/dataset/ --dataset-format 'kitti' --dump-root /path/to/resulting/formatted/data/ --width 416 --height 128 --num-threads 4 [--static-frames /path/to/static_frames.txt] [--with-depth] [--with-pose]

For Cityscapes, download the following packages: 1) leftImg8bit_sequence_trainvaltest.zip, 2) camera_trainvaltest.zip. You will probably need to contact the administrators to be able to get it. Then run the following command

python3 data/prepare_train_data.py /path/to/cityscapes/dataset/ --dataset-format 'cityscapes' --dump-root /path/to/resulting/formatted/data/ --width 416 --height 171 --num-threads 4

Notice that for Cityscapes the img_height is set to 171 because we crop out the bottom part of the image that contains the car logo, and the resulting image will have height 128.

Training

Once the data are formatted following the above instructions, you should be able to train the model by running the following command

python3 train.py /path/to/the/formatted/data/ -b4 -m0.2 -s0.1 --epoch-size 3000 --sequence-length 3 --log-output [--with-gt]

You can then start a tensorboard session in this folder by

tensorboard --logdir=checkpoints/

and visualize the training progress by opening https://localhost:6006 on your browser. If everything is set up properly, you should start seeing reasonable depth prediction after ~30K iterations when training on KITTI.

Evaluation

Disparity map generation can be done with run_inference.py

python3 run_inference.py --pretrained /path/to/dispnet --dataset-dir /path/pictures/dir --output-dir /path/to/output/dir

Will run inference on all pictures inside dataset-dir and save a jpg of disparity (or depth) to output-dir for each one see script help (-h) for more options.

Disparity evaluation is avalaible

python3 test_disp.py --pretrained-dispnet /path/to/dispnet --pretrained-posenet /path/to/posenet --dataset-dir /path/to/KITTI_raw --dataset-list /path/to/test_files_list

Test file list is available in kitti eval folder. To get fair comparison with Original paper evaluation code, don't specify a posenet. However, if you do, it will be used to solve the scale factor ambiguity, the only ground truth used to get it will be vehicle speed which is far more acceptable for real conditions quality measurement, but you will obviously get worse results.

Pose evaluation is also available on Odometry dataset. Be sure to download both color images and pose !

python3 test_pose.py /path/to/posenet --dataset-dir /path/to/KITIT_odometry --sequences [09]

ATE (Absolute Trajectory Error) is computed as long as RE for rotation (Rotation Error). RE between R1 and R2 is defined as the angle of R1*R2^-1 when converted to axis/angle. It corresponds to RE = arccos( (trace(R1 @ R2^-1) - 1) / 2). While ATE is often said to be enough to trajectory estimation, RE seems important here as sequences are only seq_length frames long.

Pretrained Nets

Avalaible here

Arguments used :

python3 train.py /path/to/the/formatted/data/ -b4 -m0 -s2.0 --epoch-size 1000 --sequence-length 5 --log-output --with-gt

Depth Results

Abs Rel Sq Rel RMSE RMSE(log) Acc.1 Acc.2 Acc.3
0.181 1.341 6.236 0.262 0.733 0.901 0.964

Pose Results

5-frames snippets used

Seq. 09 Seq. 10
ATE 0.0179 (std. 0.0110) 0.0141 (std. 0.0115)
RE 0.0018 (std. 0.0009) 0.0018 (std. 0.0011)

Discussion

Here I try to link the issues that I think raised interesting questions about scale factor, pose inference, and training hyperparameters

  • Issue 48 : Why is target frame at the center of the sequence ?
  • Issue 39 : Getting pose vector without the scale factor uncertainty
  • Issue 46 : Is Interpolated groundtruth better than sparse groundtruth ?
  • Issue 45 : How come the inverse warp is absolute and pose and depth are only relative ?
  • Issue 32 : Discussion about validation set, and optimal batch size
  • Issue 25 : Why filter out static frames ?
  • Issue 24 : Filtering pixels out of the photometric loss
  • Issue 60 : Inverse warp is only one way !

Other Implementations

TensorFlow by tinghuiz (original code, and paper author)

Owner
Clément Pinard
PhD ENSTA Paris, Deep Learning Engineer @ ContentSquare
Clément Pinard
An MQA (Studio, originalSampleRate) identifier for lossless flac files written in Python.

An MQA (Studio, originalSampleRate) identifier for "lossless" flac files written in Python.

Daniel 10 Oct 03, 2022
Pytorch implementation of Decoupled Spatial-Temporal Transformer for Video Inpainting

Decoupled Spatial-Temporal Transformer for Video Inpainting By Rui Liu, Hanming Deng, Yangyi Huang, Xiaoyu Shi, Lewei Lu, Wenxiu Sun, Xiaogang Wang, J

51 Dec 13, 2022
auto-tuning momentum SGD optimizer

YellowFin YellowFin is an auto-tuning optimizer based on momentum SGD which requires no manual specification of learning rate and momentum. It measure

Jian Zhang 288 Nov 19, 2022
The code for our paper CrossFormer: A Versatile Vision Transformer Based on Cross-scale Attention.

CrossFormer This repository is the code for our paper CrossFormer: A Versatile Vision Transformer Based on Cross-scale Attention. Introduction Existin

cheerss 238 Jan 06, 2023
Pytorch implementation of the DeepDream computer vision algorithm

deep-dream-in-pytorch Pytorch (https://github.com/pytorch/pytorch) implementation of the deep dream (https://en.wikipedia.org/wiki/DeepDream) computer

102 Dec 05, 2022
HDMapNet: A Local Semantic Map Learning and Evaluation Framework

HDMapNet_devkit Devkit for HDMapNet. HDMapNet: A Local Semantic Map Learning and Evaluation Framework Qi Li, Yue Wang, Yilun Wang, Hang Zhao [Paper] [

Tsinghua MARS Lab 421 Jan 04, 2023
🛠 All-in-one web-based IDE specialized for machine learning and data science.

All-in-one web-based development environment for machine learning Getting Started • Features & Screenshots • Support • Report a Bug • FAQ • Known Issu

Machine Learning Tooling 2.9k Jan 09, 2023
Official code base for the poster "On the use of Cortical Magnification and Saccades as Biological Proxies for Data Augmentation" published in NeurIPS 2021 Workshop (SVRHM)

Self-Supervised Learning (SimCLR) with Biological Plausible Image Augmentations Official code base for the poster "On the use of Cortical Magnificatio

Binxu 8 Aug 17, 2022
How to Become More Salient? Surfacing Representation Biases of the Saliency Prediction Model

How to Become More Salient? Surfacing Representation Biases of the Saliency Prediction Model

Bogdan Kulynych 49 Nov 05, 2022
The all new way to turn your boring vector meshes into the new fad in town; Voxels!

Voxelator The all new way to turn your boring vector meshes into the new fad in town; Voxels! Notes: I have not tested this on a rotated mesh. With fu

6 Feb 03, 2022
Contains supplementary materials for reproduce results in HMC divergence time estimation manuscript

Scalable Bayesian divergence time estimation with ratio transformations This repository contains the instructions and files to reproduce the analyses

Suchard Research Group 1 Sep 21, 2022
Pipeline code for Sequential-GAM(Genome Architecture Mapping).

Sequential-GAM Pipeline code for Sequential-GAM(Genome Architecture Mapping). mapping whole_preprocess.sh include the whole processing of mapping. usa

3 Nov 03, 2022
POT : Python Optimal Transport

POT: Python Optimal Transport This open source Python library provide several solvers for optimization problems related to Optimal Transport for signa

Python Optimal Transport 1.7k Dec 31, 2022
The official implementation of Autoregressive Image Generation using Residual Quantization (CVPR '22)

Autoregressive Image Generation using Residual Quantization (CVPR 2022) The official implementation of "Autoregressive Image Generation using Residual

Kakao Brain 529 Dec 30, 2022
WormMovementSimulation - 3D Simulation of Worm Body Movement with Neurons attached to its body

Generate 3D Locomotion Data This module is intended to create 2D video trajector

1 Aug 09, 2022
Codes for ACL-IJCNLP 2021 Paper "Zero-shot Fact Verification by Claim Generation"

Zero-shot-Fact-Verification-by-Claim-Generation This repository contains code and models for the paper: Zero-shot Fact Verification by Claim Generatio

Liangming Pan 47 Jan 01, 2023
[CVPR22] Official codebase of Semantic Segmentation by Early Region Proxy.

RegionProxy Figure 2. Performance vs. GFLOPs on ADE20K val split. Semantic Segmentation by Early Region Proxy Yifan Zhang, Bo Pang, Cewu Lu CVPR 2022

Yifan 54 Nov 29, 2022
A vision library for performing sliced inference on large images/small objects

SAHI: Slicing Aided Hyper Inference A vision library for performing sliced inference on large images/small objects Overview Object detection and insta

Open Business Software Solutions 2.3k Jan 04, 2023
Data from "HateCheck: Functional Tests for Hate Speech Detection Models" (Röttger et al., ACL 2021)

In this repo, you can find the data from our ACL 2021 paper "HateCheck: Functional Tests for Hate Speech Detection Models". "test_suite_cases.csv" con

Paul Röttger 43 Nov 11, 2022