Code for Referring Image Segmentation via Cross-Modal Progressive Comprehension, CVPR2020.

Overview

CMPC-Refseg

Code of our CVPR 2020 paper Referring Image Segmentation via Cross-Modal Progressive Comprehension.

Shaofei Huang*, Tianrui Hui*, Si Liu, Guanbin Li, Yunchao Wei, Jizhong Han, Luoqi Liu, Bo Li (* Equal contribution)

Interpretation of CMPC.

  • (a) Input referring expression and image.

  • (b) The model first perceives all the entities described in the expression based on entity words and attribute words, e.g., “man” and “white frisbee” (orange masks and blue outline).

  • (c) After finding out all the candidate entities that may match with input expression, relational word “holding” can be further exploited to highlight the entity involved with the relationship (green arrow) and suppress the others which are not involved.

  • (d) Benefiting from the relation-aware reasoning process, the referred entity is found as the final prediction (purple mask). interpretation

Experimental Results

We modify the way of feature concatenation in the end of CMPC module and achieve higher performances than the results reported in our paper. New experimental results are summarized in the table bellow. You can download our trained checkpoints to test on the four datasets. The link to the checkpoints is: Baidu Drive, pswd: jjsf.

Method UNC val UNC testA UNC testB UNC+ val UNC+ testA UNC+ testB G-Ref val ReferIt test
STEP-ICCV19 [1] 60.04 63.46 57.97 48.19 52.33 40.41 46.40 64.13
Ours-CVPR20 61.36 64.53 59.64 49.56 53.44 43.23 49.05 65.53
Ours-Updated 62.47 65.08 60.82 50.25 54.04 43.47 49.89 65.58

Setup

We recommended the following dependencies.

  • Python 2.7
  • TensorFlow 1.5
  • Numpy
  • pydensecrf

This code is derived from RRN [2]. Please refer to it for more details of setup.

Data Preparation

  • Dataset Preprocessing

We conduct experiments on 4 datasets of referring image segmentation, including UNC, UNC+, Gref and ReferIt. After downloading these datasets, you can run the following commands for data preparation:

python build_batches.py -d Gref -t train
python build_batches.py -d Gref -t val
python build_batches.py -d unc -t train
python build_batches.py -d unc -t val
python build_batches.py -d unc -t testA
python build_batches.py -d unc -t testB
python build_batches.py -d unc+ -t train
python build_batches.py -d unc+ -t val
python build_batches.py -d unc+ -t testA
python build_batches.py -d unc+ -t testB
python build_batches.py -d referit -t trainval
python build_batches.py -d referit -t test
  • Glove Embedding

Download Gref_emb.npy and referit_emb.npy and put them in data/. We provide download link for Glove Embedding here: Baidu Drive, password: 2m28.

Training

Train on UNC training set with:

python -u trainval_model.py -m train -d unc -t train -n CMPC_model -emb -f ckpts/unc/cmpc_model

Testing

Test on UNC validation set with:

python -u trainval_model.py -m test -d unc -t val -n CMPC_model -i 700000 -c -emb -f ckpts/unc/cmpc_model

CMPC for video referring segmentation

We release video version code for CMPC on A2D dataset under CMPC_video/.

Reference

[1] Chen, Ding-Jie, et al. "See-through-text grouping for referring image segmentation." Proceedings of the IEEE International Conference on Computer Vision. 2019.

[2] Li, Ruiyu, et al. "Referring image segmentation via recurrent refinement networks." Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. 2018.

Citation

If our CMPC is useful to your research, please consider citing:

@inproceedings{huang2020referring,
  title={Referring Image Segmentation via Cross-Modal Progressive Comprehension},
  author={Huang, Shaofei and Hui, Tianrui and Liu, Si and Li, Guanbin and Wei, Yunchao and Han, Jizhong and Liu, Luoqi and Li, Bo},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
  pages={10488--10497},
  year={2020}
}
Owner
spyflying
Two students of Cola Lab, BUAA.
spyflying
[CVPR 2020] Transform and Tell: Entity-Aware News Image Captioning

Transform and Tell: Entity-Aware News Image Captioning This repository contains the code to reproduce the results in our CVPR 2020 paper Transform and

Alasdair Tran 85 Dec 13, 2022
PyTorch Implementation for "ForkGAN with SIngle Rainy NIght Images: Leveraging the RumiGAN to See into the Rainy Night"

ForkGAN with Single Rainy Night Images: Leveraging the RumiGAN to See into the Rainy Night By Seri Lee, Department of Engineering, Seoul National Univ

Seri Lee 52 Oct 12, 2022
The repository includes the code for training cell counting applications. (Keras + Tensorflow)

cell_counting_v2 The repository includes the code for training cell counting applications. (Keras + Tensorflow) Dataset can be downloaded here : http:

Weidi 113 Oct 06, 2022
Open source implementation of AceNAS: Learning to Rank Ace Neural Architectures with Weak Supervision of Weight Sharing

AceNAS This repo is the experiment code of AceNAS, and is not considered as an official release. We are working on integrating AceNAS as a built-in st

Yuge Zhang 6 Sep 07, 2022
Copy Paste positive polyp using poisson image blending for medical image segmentation

Copy Paste positive polyp using poisson image blending for medical image segmentation According poisson image blending I've completely used it for bio

Phạm Vũ Hùng 2 Oct 19, 2021
SCALE: Modeling Clothed Humans with a Surface Codec of Articulated Local Elements (CVPR 2021)

SCALE: Modeling Clothed Humans with a Surface Codec of Articulated Local Elements (CVPR 2021) This repository contains the official PyTorch implementa

Qianli Ma 133 Jan 05, 2023
Official implementation of MSR-GCN (ICCV 2021 paper)

MSR-GCN Official implementation of MSR-GCN: Multi-Scale Residual Graph Convolution Networks for Human Motion Prediction (ICCV 2021 paper) [Paper] [Sup

LevonDang 42 Nov 07, 2022
This repository contains FEDOT - an open-source framework for automated modeling and machine learning (AutoML)

package tests docs license stats support This repository contains FEDOT - an open-source framework for automated modeling and machine learning (AutoML

National Center for Cognitive Research of ITMO University 482 Dec 26, 2022
EMNLP 2021 Adapting Language Models for Zero-shot Learning by Meta-tuning on Dataset and Prompt Collections

Adapting Language Models for Zero-shot Learning by Meta-tuning on Dataset and Prompt Collections Ruiqi Zhong, Kristy Lee*, Zheng Zhang*, Dan Klein EMN

Ruiqi Zhong 42 Nov 03, 2022
Multimodal Descriptions of Social Concepts: Automatic Modeling and Detection of (Highly Abstract) Social Concepts evoked by Art Images

MUSCO - Multimodal Descriptions of Social Concepts Automatic Modeling of (Highly Abstract) Social Concepts evoked by Art Images This project aims to i

0 Aug 22, 2021
FlowTorch is a PyTorch library for learning and sampling from complex probability distributions using a class of methods called Normalizing Flows

FlowTorch is a PyTorch library for learning and sampling from complex probability distributions using a class of methods called Normalizing Flows.

Meta Incubator 272 Jan 02, 2023
Auto-Lama combines object detection and image inpainting to automate object removals

Auto-Lama Auto-Lama combines object detection and image inpainting to automate object removals. It is build on top of DE:TR from Facebook Research and

44 Dec 09, 2022
Unofficial PyTorch implementation of TokenLearner by Google AI

tokenlearner-pytorch Unofficial PyTorch implementation of TokenLearner by Ryoo et al. from Google AI (abs, pdf) Installation You can install TokenLear

Rishabh Anand 46 Dec 20, 2022
Enhancing Aspect-Based Sentiment Analysis with Supervised Contrastive Learning.

Enhancing Aspect-Based Sentiment Analysis with Supervised Contrastive Learning. Enhancing Aspect-Based Sentiment Analysis with Supervised Contrastive

<a href=[email protected](SZ)"> 7 Dec 16, 2021
Kaggle: Cell Instance Segmentation

Kaggle: Cell Instance Segmentation The goal of this challenge is to detect cells in microscope images. with simple view on how many cels have been ann

Jirka Borovec 9 Aug 12, 2022
Python implementation of Project Fluent

Project Fluent This is a collection of Python packages to use the Fluent localization system. python-fluent consists of these packages: fluent.syntax

Project Fluent 155 Dec 28, 2022
Code implementation for the paper 'Conditional Gaussian PAC-Bayes'.

CondGauss This repository contains PyTorch code for the paper Stochastic Gaussian PAC-Bayes. A novel PAC-Bayesian training method is implemented. Ther

0 Nov 01, 2021
An example showing how to use jax to train resnet50 on multi-node multi-GPU

jax-multi-gpu-resnet50-example This repo shows how to use jax for multi-node multi-GPU training. The example is adapted from the resnet50 example in d

Yangzihao Wang 20 Jul 04, 2022
Pytorch code for "Text-Independent Speaker Verification Using 3D Convolutional Neural Networks".

:speaker: Deep Learning & 3D Convolutional Neural Networks for Speaker Verification

Amirsina Torfi 114 Dec 18, 2022
Code for Environment Dynamics Decomposition (ED2).

ED2 Code for Environment Dynamics Decomposition (ED2). Installation Follow the installation in MBPO and Dreamer. Usage First follow the SD2 method for

0 Aug 10, 2021