HAIS_2GNN: 3D Visual Grounding with Graph and Attention

Overview

HAIS_2GNN: 3D Visual Grounding with Graph and Attention

This repository is for the HAIS_2GNN research project.

Tao Gu, Yue Chen

Introduction

The motivation of this project is to improve the accuracy of 3D visual grounding. In this report, we propose a new model, named HAIS_2GNN based on the InstanceRefer model, to tackle the problem of insufficient connections between instance proposals. Our model incorporates a powerful instance segmentation model HAIS and strengthens the instance features by the structure of graph and attention, so that the text and point cloud can be better matched together. Experiments confirm that our method outperforms the InstanceRefer on ScanRefer validation datasets. Link to the technical report

Setup

The code is tested on Ubuntu 20.04.3 LTS with Python 3.9.7 PyTorch 1.10.1 CUDA 11.3.1 installed.

conda install pytorch==1.10.1 torchvision==0.11.2 cudatoolkit=11.3 -c pytorch

Install the necessary packages listed out in requirements.txt:

pip install -r requirements.txt

After all packages are properly installed, please run the following commands to compile the torchsaprse v1.4.0:

sudo apt-get install libsparsehash-dev
pip install --upgrade git+https://github.com/mit-han-lab/[email protected]

Before moving on to the next step, please don't forget to set the project root path to the CONF.PATH.BASE in lib/config.py.

Data preparation

  1. Download the ScanRefer dataset and unzip it under data/.
  2. Downloadand the preprocessed GLoVE embeddings (~990MB) and put them under data/.
  3. Download the ScanNetV2 dataset and put (or link) scans/ under (or to) data/scannet/scans/ (Please follow the ScanNet Instructions for downloading the ScanNet dataset). After this step, there should be folders containing the ScanNet scene data under the data/scannet/scans/ with names like scene0000_00
  4. Used official and pre-trained HAIS generate panoptic segmentation in PointGroupInst/. We will provide the pre-trained data soon.
  5. Pre-processed instance labels, and new data should be generated in data/scannet/pointgroup_data/
cd data/scannet/
python prepare_data.py --split train --pointgroupinst_path [YOUR_PATH]
python prepare_data.py --split val   --pointgroupinst_path [YOUR_PATH]
python prepare_data.py --split test  --pointgroupinst_path [YOUR_PATH]

Finally, the dataset folder should be organized as follows.

InstanceRefer
├── data
│   ├── glove.p
│   ├── ScanRefer_filtered.json
│   ├── ...
│   ├── scannet
│   │  ├── meta_data
│   │  ├── pointgroup_data
│   │  │  ├── scene0000_00_aligned_bbox.npy
│   │  │  ├── scene0000_00_aligned_vert.npy
│   │  ├──├──  ... ...

Training

Train the InstanceRefer model. You can change hyper-parameters in config/InstanceRefer.yaml:

python scripts/train.py --log_dir HAIS_2GNN

Evaluation

You need specific the use_checkpoint with the folder that contains model.pth in config/InstanceRefer.yaml and run with:

python scripts/eval.py

Pre-trained Models

Input [email protected] Unique [email protected] Checkpoints
xyz+rgb 39.24 33.66 will be released soon

TODO

  • Add pre-trained HAIS dataset.
  • Release pre-trained model.
  • Merge HAIS in an end-to-end manner.
  • Upload to ScanRefer benchmark

Changelog

02/09/2022: Released HAIS_2GNN

Acknowledgement

This work is a research project conducted by Tao Gu and Yue Chen for ADL4CV:Visual Computing course at the Technical University of Munich.

We acknowledge that our work is based on ScanRefer, InstanceRefer, HAIS, torchsaprse, and pytorch_geometric.

License

This repository is released under MIT License (see LICENSE file for details).

Owner
Yue Chen
Yue Chen
Diaformer: Automatic Diagnosis via Symptoms Sequence Generation

Diaformer Diaformer: Automatic Diagnosis via Symptoms Sequence Generation (AAAI 2022) Diaformer is an efficient model for automatic diagnosis via symp

Junying Chen 20 Dec 13, 2022
中文問句產生器;使用台達電閱讀理解資料集(DRCD)

Transformer QG on DRCD The inputs of the model refers to we integrate C and A into a new C' in the following form. C' = [c1, c2, ..., [HL], a1, ..., a

Philip 1 Oct 22, 2021
SimpleChinese2 集成了许多基本的中文NLP功能,使基于 Python 的中文文字处理和信息提取变得简单方便。

SimpleChinese2 SimpleChinese2 集成了许多基本的中文NLP功能,使基于 Python 的中文文字处理和信息提取变得简单方便。 声明 本项目是为方便个人工作所创建的,仅有部分代码原创。

Ming 30 Dec 02, 2022
Labelling platform for text using distant supervision

With DataQA, you can label unstructured text documents using rule-based distant supervision.

245 Aug 05, 2022
Scikit-learn style model finetuning for NLP

Scikit-learn style model finetuning for NLP Finetune is a library that allows users to leverage state-of-the-art pretrained NLP models for a wide vari

indico 665 Dec 17, 2022
Kestrel Threat Hunting Language

Kestrel Threat Hunting Language What is Kestrel? Why we need it? How to hunt with XDR support? What is the science behind it? You can find all the ans

Open Cybersecurity Alliance 201 Dec 16, 2022
InferSent sentence embeddings

InferSent InferSent is a sentence embeddings method that provides semantic representations for English sentences. It is trained on natural language in

Facebook Research 2.2k Dec 27, 2022
Korea Spell Checker

한국어 문서 koSpellPy Korean Spell checker How to use Install pip install kospellpy Use from kospellpy import spell_init spell_checker = spell_init() # d

kangsukmin 2 Oct 20, 2021
TalkNet: Audio-visual active speaker detection Model

Is someone talking? TalkNet: Audio-visual active speaker detection Model This repository contains the code for our ACM MM 2021 paper, TalkNet, an acti

142 Dec 14, 2022
An extensive UI tool built using new data scraped from BBC News

BBC-News-Analyzer An extensive UI tool built using new data scraped from BBC New

Antoreep Jana 1 Dec 31, 2021
Transformers and related deep network architectures are summarized and implemented here.

Transformers: from NLP to CV This is a practical introduction to Transformers from Natural Language Processing (NLP) to Computer Vision (CV) Introduct

Ibrahim Sobh 138 Dec 27, 2022
Part of Speech Tagging using Hidden Markov Model (HMM) POS Tagger and Brill Tagger

Part of Speech Tagging using Hidden Markov Model (HMM) POS Tagger and Brill Tagger In this project, our aim is to tune, compare, and contrast the perf

Chirag Daryani 0 Dec 25, 2021
Chinese Grammatical Error Diagnosis

nlp-CGED Chinese Grammatical Error Diagnosis 中文语法纠错研究 基于序列标注的方法 所需环境 Python==3.6 tensorflow==1.14.0 keras==2.3.1 bert4keras==0.10.6 笔者使用了开源的bert4keras

12 Nov 25, 2022
Create a machine learning model which will predict if the mortgage will be approved or not based on 5 variables

Mortgage-Application-Analysis Create a machine learning model which will predict if the mortgage will be approved or not based on 5 variables: age, in

1 Jan 29, 2022
Smart discord chatbot integrated with Dialogflow

academic-NLP-chatbot Smart discord chatbot integrated with Dialogflow to interact with students naturally and manage different classes in a school. De

Tom Huynh 5 Oct 24, 2022
CPT: A Pre-Trained Unbalanced Transformer for Both Chinese Language Understanding and Generation

CPT This repository contains code and checkpoints for CPT. CPT: A Pre-Trained Unbalanced Transformer for Both Chinese Language Understanding and Gener

fastNLP 342 Jan 05, 2023
Original implementation of the pooling method introduced in "Speaker embeddings by modeling channel-wise correlations"

Speaker-Embeddings-Correlation-Pooling This is the original implementation of the pooling method introduced in "Speaker embeddings by modeling channel

Themos Stafylakis 10 Apr 30, 2022
Text to speech for Vietnamese, ez to use, ez to update

Chào mọi người, đây là dự án mở nhằm giúp việc đọc được trở nên dễ dàng hơn. Rất cảm ơn đội ngũ Zalo đã cung cấp hạ tầng để mình có thể tạo ra app này

Trần Cao Minh Bách 32 Jul 29, 2022
Switch spaces for knowledge graph embeddings

SwisE Switch spaces for knowledge graph embeddings. Requirements: python3 pytorch numpy tqdm Reproduce the results To reproduce the reported results,

Shuai Zhang 4 Dec 01, 2021