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(ICRA) Anytime Stereo Image Depth Estimation on Mobile Devices

Anytime Stereo Image Depth Estimation on Mobile Devices

This repository contains the code (in PyTorch) for AnyNet introduced in the following paper

Anytime Stereo Image Depth Estimation on Mobile Devices

by Yan Wangβˆ—, Zihang Laiβˆ—, Gao Huang, Brian Wang, Laurens van der Maaten, Mark Campbell and Kilian Q. Weinberger.

It has been accepted by International Conference on Robotics and Automation (ICRA) 2019.

Figure

Citation

@article{wang2018anytime,
  title={Anytime Stereo Image Depth Estimation on Mobile Devices},
  author={Wang, Yan and Lai, Zihang and Huang, Gao and Wang, Brian H. and Van Der Maaten, Laurens and Campbell, Mark and Weinberger, Kilian Q},
  journal={arXiv preprint arXiv:1810.11408},
  year={2018}
}

Contents

  1. Introduction
  2. Usage
  3. Results
  4. Contacts

Introduction

Many real-world applications of stereo depth es- timation in robotics require the generation of disparity maps in real time on low power devices. Depth estimation should be accurate, e.g. for mapping the environment, and real-time, e.g. for obstacle avoidance. Current state-of-the-art algorithms can either generate accurate but slow, or fast but high-error mappings, and typically have far too many parameters for low-power/memory devices. Motivated by this shortcoming we propose a novel approach for disparity prediction in the anytime setting. In contrast to prior work, our end-to-end learned approach can trade off computation and accuracy at inference time. The depth estimation is performed in stages, during which the model can be queried at any time to output its current best estimate. In the first stage it processes a scaled down version of the input images to obtain an initial low resolution sketch of the disparity map. This sketch is then successively refined with higher resolution details until a full resolution, high quality disparity map emerges. Here, we leverage the fact that disparity refinements can be performed extremely fast as the residual error is bounded by only a few pixels. Our final model can process 1242Γ—375 resolution images within a range of 10-35 FPS on an NVIDIA Jetson TX2 module with only marginal increases in error – using two orders of magnitude fewer parameters than the most competitive baseline.

Usage

  1. Install dependencies
  2. Generate the soft-links for the SceneFlow Dataset. You need to modify the scenflow_data_path to the actual SceneFlow path in create_dataset.sh file.
     sh ./create_dataset.sh
    
  3. Compile SPNet if SPN refinement is needed. (change NVCC path in make.sh when necessary)
    cd model/spn
    sh make.sh
    

Dependencies

Update:

Now our code supports Pytorch 1.0! You have to recompile the spn module

cd models/spn_t1
bash make.sh

Train

Firstly, we use the following command to pretrained AnyNet on Scene Flow

python main.py --maxdisp 192 --with_spn

Secondly, we use the following command to finetune AnyNet on KITTI 2015

python finetune.py --maxdisp 192 --with_spn --datapath path-to-kitti2015/training/

Pretrained Models

You can download the pretrained model from https://drive.google.com/file/d/18Vi68rQO-vcBn3882vkumIWtGggZQDoU/view?usp=sharing. It includes the SceneFlow, KITTI2012, KITTI2015 pretrained models. We also put the split files in the folder.

To evaluate the model on KITTI2012

python finetune.py --maxdisp 192 --with_spn --datapath path-to-kitti2012/training/ \
   --save_path results/kitti2012 --datatype 2012 --pretrained checkpoint/kitti2012_ck/checkpoint.tar \
   --split_file checkpoint/kitti2012_ck/split.txt --evaluate

To evaluate the model on KITTI2015

python finetune.py --maxdisp 192 --with_spn --datapath path-to-kitti2015/training/ \
    --save_path results/kitti2015 --datatype 2015 --pretrained checkpoint/kitti2015_ck/checkpoint.tar \
    --split_file checkpoint/kitti2015_ck/split.txt --evaluate

To fine-tune the ScenFlow pretrained model on KITTI2015

python finetune.py --maxdisp 192 --with_spn --datapath path-to-kitti2015/training/ \
    --pretrained checkpoint/sceneflow/sceneflow.tar

To fine-tune the ScenFlow pretrained model on KITTI2012

python finetune.py --maxdisp 192 --with_spn --datapath path-to-kitti2012/training/ \
    --pretrained checkpoint/sceneflow/sceneflow.tar --datatype 2012

Note: All results reported in the paper are averaged over five randomized 80/20 train/validation splits.

finetune on your own dataset

You have to organize your own dataset as the following format

path-to-your-dataset/
    | training
        | image_2/           #left images
        | image_3/           #right images
        | disp_occ_0/        #left disparities
    | validation
        | image_2/           #left images
        | image_3/           #right images
        | disp_occ_0/        #left disparities

The disparity ground truth has to be stored as png format and multiplied by 256. The finetune command is

python finetune.py --maxdisp 192 --with_spn --datapath path-to-your-dataset/ \
    --pretrained checkpoint/scenflow/sceneflow.tar --datatype other

Results

Figure KITTI2012 Results