test

Overview

Lidar-data-decode

In this project, you can decode your lidar data frame(pcap file) and make your own datasets(test dataset) in Windows without any huge c++-based lib or ROS under Ubuntu

  1. in lidar data frame decode part:
  • Supports just LSC32(LeiShen Intelligent System) at the moment(you can also change the parameters to fit other lidars like velodyne, robosense...).
  • Takes a pcap file recorded by LSC32 lidar as input.
  • Extracts all Frames from the pcap file.
  • Saves data-frames: Data frames are saved as Pointcloud files (.pcd) and/or as Text files(.txt)
  • Can be parameterizes by yaml file.
  1. in dataset prepare part:
  • Files format conversion(txt to bin, if you want to make your datasets like KITTI format)
  • Files rename
  • Data frames visualization
Output

Below a sample out of 2 Points in a point cloud file

All Point Cloud Text-Files have follwoing fields: Time [musec], X [m], Y [m], Z [m], ID, Intensity, Latitude [Deg], Longitudes [Deg], Distance [m] 2795827803, 0.032293, 5.781942, -1.549291, 0, 6, 0.320, -15.000, 5.986

All Point Cloud PCD-Files have follwoing fields:

  1. X-Coordinate
  2. Y-Coordinate
  3. Z-Coordinate
  4. Intensity
Dependencies
  1. for lidar frame decode: Veloparser has follwoing package dependencies:
  • dpkt
  • numpy
  • tqdm
  1. for lidar frame Visualization:
  • mayavi
  • torch
  • opencv-python (using pip install opencv-python)
Run

Firstly, clone this project by: "git clone https://github.com/hitxing/Lidar-data-decode.git"

Because empty folders can not be upload on Github, after you clone this project, please create some empty folders as follows: 20210301215614471

a. for lidar frame decode:

  1. make sure test.pcap is in dir .\input\test.pcap
  2. check your parameters in params.yaml, then, run: "python main.py --path=.\input\test.pcap --out-dir=.\output --config=.\params.yaml"

after this operation, you can get your Text files/PCD files as follows:

​ 1)Text files in .\output\velodynevlp16\data_ascii:

1614600893415

​ 2)PCD files in .\output\velodynevlp16\data_pcl:

1614600836040

b. for Format conversion and rename:

If you want to make your datasets like KITTI format(bin files), you should convert your txt files to bin files at first, if you want to make a datset like nuscenes(pcd files), just go to next step and ignore that.

  1. put all your txt files to dir .\txt2bin\txt and run ''python txt2bin.py"

then, your txt files will convert to bin format and saved in dir ./txt2bin/bin like this:

1614602160574

  1. To make a test dataset like KITTI format, the next step is to rename your files like 000000.bin, for bin files(also fits for pcd files, change the parameters in file_rename.py, line 31), run "python file_rename.py", you can get your test dataset in the dir .\txt2bin\bin like this:

    1614602847542

c. for visualization your data frames(just for bin files now)

Please make sure that all of those packages are installed (pip or conda).

  1. copy your bin files in dir .\txt2bin\bin to your own dir(default is in .\visualization)

  2. run "python point_visul.py", the visual will like this:

    1614603301315

Note that lidar data in 000000.bin is not complete(after 000000.bin is complete), that why the visualization result is as above, you can delect this frame when you make your own test dataset .000001.bin will like this:

1614603496357

If you want to make your full dataset and labeling your data frame, I hope here will be helpful(https://github.com/Gltina/ACP-3Detection).

Note

Thanks ArashJavan a lot for provide this fantastic project! lidar data frame decode part in Lidar-data-decode is based on https://github.com/ArashJavan/veloparser which Supports Velodyne VLP16, At this moment, Lidar-data-decode supports LSC32-151A andLSC32-151C, actually, this project can support any lidar as long as you change the parameters follow the corresponding technical manual.

The reason why i wrote this project: a. I could not find any simple way without installing ROS (Robot operating software) or other huge c++-based lib that does 'just' extract the point clouds from pcap-file. b. Provide a reference to expand this project to fit your own lidar and make your own datasets

Python package to easily retrain OpenAI's GPT-2 text-generating model on new texts

gpt-2-simple A simple Python package that wraps existing model fine-tuning and generation scripts for OpenAI's GPT-2 text generation model (specifical

Max Woolf 3.1k Jan 07, 2023
Python port of Google's libphonenumber

phonenumbers Python Library This is a Python port of Google's libphonenumber library It supports Python 2.5-2.7 and Python 3.x (in the same codebase,

David Drysdale 3.1k Dec 29, 2022
💫 Industrial-strength Natural Language Processing (NLP) in Python

spaCy: Industrial-strength NLP spaCy is a library for advanced Natural Language Processing in Python and Cython. It's built on the very latest researc

Explosion 24.9k Jan 02, 2023
Dense Passage Retriever - is a set of tools and models for open domain Q&A task.

Dense Passage Retrieval Dense Passage Retrieval (DPR) - is a set of tools and models for state-of-the-art open-domain Q&A research. It is based on the

Meta Research 1.1k Jan 07, 2023
Yomichad - a Japanese pop-up dictionary that can display readings and English definitions of Japanese words

Yomichad is a Japanese pop-up dictionary that can display readings and English definitions of Japanese words, kanji, and optionally named entities. It is similar to yomichan, 10ten, and rikaikun in s

Jonas Belouadi 7 Nov 07, 2022
LSTM model - IMDB review sentiment analysis

NLP - Movie review sentiment analysis The colab notebook contains the code for building a LSTM Recurrent Neural Network that gives 87-88% accuracy on

Sundeep Bhimireddy 1 Jan 29, 2022
This repository collects together basic linguistic processing data for using dataset dumps from the Common Voice project

Common Voice Utils This repository collects together basic linguistic processing data for using dataset dumps from the Common Voice project. It aims t

Francis Tyers 40 Dec 20, 2022
Simple, Fast, Powerful and Easily extensible python package for extracting patterns from text, with over than 60 predefined Regular Expressions.

patterns-finder Simple, Fast, Powerful and Easily extensible python package for extracting patterns from text, with over than 60 predefined Regular Ex

22 Dec 19, 2022
The simple project to separate mixed voice (2 clean voices) to 2 separate voices.

Speech Separation The simple project to separate mixed voice (2 clean voices) to 2 separate voices. Result Example (Clisk to hear the voices): mix ||

vuthede 31 Oct 30, 2022
Research code for ECCV 2020 paper "UNITER: UNiversal Image-TExt Representation Learning"

UNITER: UNiversal Image-TExt Representation Learning This is the official repository of UNITER (ECCV 2020). This repository currently supports finetun

Yen-Chun Chen 680 Dec 24, 2022
Open-Source Toolkit for End-to-End Speech Recognition leveraging PyTorch-Lightning and Hydra.

OpenSpeech provides reference implementations of various ASR modeling papers and three languages recipe to perform tasks on automatic speech recogniti

Soohwan Kim 26 Dec 14, 2022
Source code and dataset for ACL 2019 paper "ERNIE: Enhanced Language Representation with Informative Entities"

ERNIE Source code and dataset for "ERNIE: Enhanced Language Representation with Informative Entities" Reqirements: Pytorch=0.4.1 Python3 tqdm boto3 r

THUNLP 1.3k Dec 30, 2022
Implementation for paper BLEU: a Method for Automatic Evaluation of Machine Translation

BLEU Score Implementation for paper: BLEU: a Method for Automatic Evaluation of Machine Translation Author: Ba Ngoc from ProtonX BLEU score is a popul

Ngoc Nguyen Ba 6 Oct 07, 2021
Generate vector graphics from a textual caption

VectorAscent: Generate vector graphics from a textual description Example "a painting of an evergreen tree" python text_to_painting.py --prompt "a pai

Ajay Jain 97 Dec 15, 2022
A list of NLP(Natural Language Processing) tutorials

NLP Tutorial A list of NLP(Natural Language Processing) tutorials built on PyTorch. Table of Contents A step-by-step tutorial on how to implement and

Allen Lee 1.3k Dec 25, 2022
Idea is to build a model which will take keywords as inputs and generate sentences as outputs.

keytotext Idea is to build a model which will take keywords as inputs and generate sentences as outputs. Potential use case can include: Marketing Sea

Gagan Bhatia 364 Jan 03, 2023
Geometry-Consistent Neural Shape Representation with Implicit Displacement Fields

Geometry-Consistent Neural Shape Representation with Implicit Displacement Fields [project page][paper][cite] Geometry-Consistent Neural Shape Represe

Yifan Wang 100 Dec 19, 2022
Code for the Findings of NAACL 2022(Long Paper): AdapterBias: Parameter-efficient Token-dependent Representation Shift for Adapters in NLP Tasks

AdapterBias: Parameter-efficient Token-dependent Representation Shift for Adapters in NLP Tasks arXiv link: upcoming To be published in Findings of NA

Allen 16 Nov 12, 2022
Python bindings to the dutch NLP tool Frog (pos tagger, lemmatiser, NER tagger, morphological analysis, shallow parser, dependency parser)

Frog for Python This is a Python binding to the Natural Language Processing suite Frog. Frog is intended for Dutch and performs part-of-speech tagging

Maarten van Gompel 46 Dec 14, 2022
A multi-lingual approach to AllenNLP CoReference Resolution along with a wrapper for spaCy.

Crosslingual Coreference Coreference is amazing but the data required for training a model is very scarce. In our case, the available training for non

Pandora Intelligence 71 Jan 04, 2023