Official implementation of the network presented in the paper "M4Depth: A motion-based approach for monocular depth estimation on video sequences"

Overview

M4Depth

This is the reference TensorFlow implementation for training and testing depth estimation models using the method described in

M4Depth: A motion-based approach for monocular depth estimation on video sequences

Michaël Fonder, Damien Ernst and Marc Van Droogenbroeck

arXiv pdf

1 1 1 1 1 1
1 1 1 1 1 1
1 1 1 1 1 1

Some samples produced by our method: the first line shows the RGB picture capured by the camera, the second the ground-truth depth map and the last one the results produced by our method.

If you find our work useful in your research please consider citing our paper:

@article{Fonder2021M4Depth,
  title     = {M4Depth: A motion-based approach for monocular depth estimation on video sequences},
  author    = {Michael Fonder and Damien Ernst and Marc Van Droogenbroeck},
  booktitle = {arXiv},
  month     = {May},
  year      = {2021}
}

If you use the Mid-Air dataset in your research, please consider citing the related paper:

@INPROCEEDINGS{Fonder2019MidAir,
  author    = {Michael Fonder and Marc Van Droogenbroeck},
  title     = {Mid-Air: A multi-modal dataset for extremely low altitude drone flights},
  booktitle = {Conference on Computer Vision and Pattern Recognition Workshop (CVPRW)},
  year      = {2019},
  month     = {June}
} 

Dependencies

Assuming a fresh Anaconda distribution, you can install the dependencies with:

conda install tensorflow-gpu=1.15 h5py pyquaternion numpy 

Formatting data

Our code works with tensorflow protobuffer files data for training and testing therefore need to be encoded properly before being passed to the network.

Mid-Air dataset

To reproduce the results of our paper, you can use the Mid-Air dataset for training and testing our network. For this, you will first need to download the required data on your computer. The procedure to get them is the following:

  1. Go on the download page of the Mid-Air dataset
  2. Select the "Left RGB" and "Stereo Disparity" image types
  3. Move to the end of the page and enter your email to get the download links (the volume of selected data should be equal to 316.5Go)
  4. Follow the procedure given at the begining of the download page to download and extract the dataset

Once the dataset is downloaded you can generate the required protobuffer files by running the following script:

python3 midair-protobuf_generation.py --db_path path/to/midair-root --output_dir desired/protobuf-location --write

This script generates trajectory sequences with a length of 8 frames and automatically creates the train and test splits for Mid-Air in separated subdirectories.

Custom data

You can also train or test our newtork on your own data. You can generate your own protobuffer files by repurpusing our midair-protobuf_generation.py script. When creating your own protobuffer files, you should pay attention to two major parameters; All sequences should have the same length and each element of a sequence should come with the following data:

  • "image/color_i" : the binary data of the jpeg picture encoding the color data of the frame
  • "Image/depth_i" : the binary data of the 16-bit png file encoding the stereo disparity map
  • "data/omega_i" : a list of three float32 numbers corresponding to the angular rotation between two consecutive frames
  • "data/trans_i" : a list of three float32 numbers corresponding to the translation between two consecutive frames

The subscript i has to be replaced by the index of the data within the trajectory. Translations and rotations are expressed in the standard camera frame of refence axis system.

Training

You can launch a training or a finetuning (if the log_dir already exists) by exectuting the following command line:

python3 m4depth_pipeline.py --train_datadir=path/to/protobuf/dir --log_dir=path/to/logdir --dataset=midair --arch_depth=6 --db_seq_len=8 --seq_len=6 --num_batches=200000 -b=3 -g=1 --summary_interval_secs=900 --save_interval_secs=1800

If needed, other options are available for the training phase and are described in pipeline_options.py and in m4depth_options.py files. Please note that the code can run on multiple GPUs to speedup the training.

Testing/Evaluation

You can launch the evaluation of your test samples by exectuting the following command line:

python3 m4depth_pipeline.py --test_datadir=path/to/protobuf/dir --log_dir=path/to/logdir --dataset=midair --arch_depth=6 --db_seq_len=8 --seq_len=8 --b=3 -g=1

If needed, other options are available for the evaluation phase and are described in pipeline_options.py and in m4depth_options.py files.

Pretrained model

We provide pretrained weights for our model in the "trained_weights" directory. Testing or evaluating a dataset from these weight can be done by executing the following command line:

python3 m4depth_pipeline.py --test_datadir=path/to/protobuf/dir --log_dir=trained_weights/M4Depth-d6 --dataset=midair --arch_depth=6 --db_seq_len=8 --seq_len=8 --b=3 -g=1
Owner
Michaël Fonder
PhD candidate in computer vision and deep learning. Interested in drone flight automation by using an on-board mounted monocular camera.
Michaël Fonder
On Evaluation Metrics for Graph Generative Models

On Evaluation Metrics for Graph Generative Models Authors: Rylee Thompson, Boris Knyazev, Elahe Ghalebi, Jungtaek Kim, Graham Taylor This is the offic

13 Jan 07, 2023
Pytorch implementation of Nueral Style transfer

Nueral Style Transfer Pytorch implementation of Nueral style transfer algorithm , it is used to apply artistic styles to content images . Content is t

Abhinav 9 Oct 15, 2022
WeakVRD-Captioning - Implementation of paper Improving Image Captioning with Better Use of Caption

WeakVRD-Captioning - Implementation of paper Improving Image Captioning with Better Use of Caption

30 Oct 28, 2022
Run Effective Large Batch Contrastive Learning on Limited Memory GPU

Gradient Cache Gradient Cache is a simple technique for unlimitedly scaling contrastive learning batch far beyond GPU memory constraint. This means tr

Luyu Gao 198 Dec 29, 2022
Official Python implementation of the 'Sparse deconvolution'-v0.3.0

Sparse deconvolution Python v0.3.0 Official Python implementation of the 'Sparse deconvolution', and the CPU (NumPy) and GPU (CuPy) calculation backen

Weisong Zhao 23 Dec 28, 2022
A Flow-based Generative Network for Speech Synthesis

WaveGlow: a Flow-based Generative Network for Speech Synthesis Ryan Prenger, Rafael Valle, and Bryan Catanzaro In our recent paper, we propose WaveGlo

NVIDIA Corporation 2k Dec 26, 2022
Seach Losses of our paper 'Loss Function Discovery for Object Detection via Convergence-Simulation Driven Search', accepted by ICLR 2021.

CSE-Autoloss Designing proper loss functions for vision tasks has been a long-standing research direction to advance the capability of existing models

Peidong Liu(刘沛东) 54 Dec 17, 2022
Good Semi-Supervised Learning That Requires a Bad GAN

Good Semi-Supervised Learning that Requires a Bad GAN This is the code we used in our paper Good Semi-supervised Learning that Requires a Bad GAN Ziha

Zhilin Yang 177 Dec 12, 2022
Combining Diverse Feature Priors

Combining Diverse Feature Priors This repository contains code for reproducing the results of our paper. Paper: https://arxiv.org/abs/2110.08220 Blog

Madry Lab 5 Nov 12, 2022
Code for the paper titled "Generalized Depthwise-Separable Convolutions for Adversarially Robust and Efficient Neural Networks" (NeurIPS 2021 Spotlight).

Generalized Depthwise-Separable Convolutions for Adversarially Robust and Efficient Neural Networks This repository contains the code and pre-trained

Hassan Dbouk 7 Dec 05, 2022
Hide screen when boss is approaching.

BossSensor Hide your screen when your boss is approaching. Demo The boss stands up. He is approaching. When he is approaching, the program fetches fac

Hiroki Nakayama 6.2k Jan 07, 2023
Convert ONNX model graph to Keras model format.

Convert ONNX model graph to Keras model format.

Grigory Malivenko 175 Dec 28, 2022
K-PLUG: Knowledge-injected Pre-trained Language Model for Natural Language Understanding and Generation in E-Commerce (EMNLP Founding 2021)

Introduction K-PLUG: Knowledge-injected Pre-trained Language Model for Natural Language Understanding and Generation in E-Commerce. Installation PyTor

Xu Song 21 Nov 16, 2022
E-RAFT: Dense Optical Flow from Event Cameras

E-RAFT: Dense Optical Flow from Event Cameras This is the code for the paper E-RAFT: Dense Optical Flow from Event Cameras by Mathias Gehrig, Mario Mi

Robotics and Perception Group 71 Dec 12, 2022
A modular PyTorch library for optical flow estimation using neural networks

A modular PyTorch library for optical flow estimation using neural networks

neu-vig 113 Dec 20, 2022
🦙 LaMa Image Inpainting, Resolution-robust Large Mask Inpainting with Fourier Convolutions, WACV 2022

🦙 LaMa Image Inpainting, Resolution-robust Large Mask Inpainting with Fourier Convolutions, WACV 2022

Advanced Image Manipulation Lab @ Samsung AI Center Moscow 4.7k Dec 31, 2022
Pytorch implementation of Masked Auto-Encoder

Masked Auto-Encoder (MAE) Pytorch implementation of Masked Auto-Encoder: Kaiming He, Xinlei Chen, Saining Xie, Yanghao Li, Piotr Dollár, Ross Girshick

Jiyuan 22 Dec 13, 2022
Sample Code for "Pessimism Meets Invariance: Provably Efficient Offline Mean-Field Multi-Agent RL"

Sample Code for "Pessimism Meets Invariance: Provably Efficient Offline Mean-Field Multi-Agent RL" This is the official codebase for Pessimism Meets I

3 Sep 19, 2022
Precomputed Real-Time Texture Synthesis with Markovian Generative Adversarial Networks

MGANs Training & Testing code (torch), pre-trained models and supplementary materials for "Precomputed Real-Time Texture Synthesis with Markovian Gene

290 Nov 15, 2022
The official code of Anisotropic Stroke Control for Multiple Artists Style Transfer

ASMA-GAN Anisotropic Stroke Control for Multiple Artists Style Transfer Proceedings of the 28th ACM International Conference on Multimedia The officia

Six_God 146 Nov 21, 2022