Design World

  • Home
  • Technologies
    • 3D CAD
    • Electronics • electrical
    • Fastening & Joining
    • Factory automation
    • Linear Motion
    • Motion Control
    • Test & Measurement
    • Sensors
    • Fluid power
  • Learn
    • Ebooks / Tech Tips
    • Engineering Week
    • Future of Design Engineering
    • MC² Motion Control Classrooms
    • Podcasts
    • Videos
    • Webinars
  • LEAP AWARDS
  • Leadership
    • 2022 Voting
    • 2021 Winners
  • Design Guide Library
  • Resources
    • 3D Cad Models
      • PARTsolutions
      • TraceParts
    • Digital Issues
      • Design World
      • EE World
    • Women in Engineering
  • Supplier Listings

nuScenes open-sources self-driving dataset with 1.4M images

By Steve Crowe | September 19, 2018

Share

nuScenes dataset

nuScenes data set was created by nuTonomy and Scale. (Credit: nuScenes)

Data is the key to developing reliable self-driving cars. But it’s about having the right data, not necessarily the most data. And nuTonomy, a Boston-based self-driving vehicle company recently purchased by Delphi for $450 million, believes it has the right data to allow researchers across the world to develop safe autonomous vehicles.

nuTonomy released a self-driving dataset called nuScenes that it claims is the “largest open-source, multi-sensor self-driving dataset available to public.” According to nuTonomy, other self-driving datasets such as Cityscapes, Mapillary Vistas, Apolloscapes, and Berkeley Deep Drive focused only on camera-based object detection.

Collecting 1,000 scenes from Boston and Singapore, two cities that are home to nuTonomy self-driving car tests, dense traffic and challenging driving environments, the nuScenes dataset includes 1.4 million camera images, 400,000 LIDAR sweeps, 1.3 million radar sweeps and 1.1 million object bounding boxes in 40k keyframes.

All of this data has been meticulously labeled with Scale’s Sensor Fusion Annotation API, which taps AI and teams of humans for data annotation. All objects in the nuScenes dataset come with a semantic category, as well as a a 3D bounding box and attributes for each frame they occur in. Compared to 2D bounding boxes, this allowed nuTonomy to accurately infer an object’s position and orientation in space. Here’s the list of annotations available with the launch of nuScenes.

nuScenes dataset

The nuScenes dataset was captured by two nuTonomy vehicles with this sensor suite. (Credit: nuScenes)

Related: UC Berkeley open-sources BDD100K self-driving dataset

The nuScenes data was captured using a combination of six cameras, one lidar, five radars, GPS, and an inertial measurement sensor. nuTonomy used two Renault Zoe cars with identical sensor layouts to drive in Boston and Singapore. The data was gathered from a research platform and is not indicative of the setup used in nuTonomy-Aptiv products.

nuTonomy says the driving routes in Boston and Singapore were carefully chosen to capture challenging scenarios. “We aim for a diverse set of locations, times and weather conditions. To balance the class frequency distribution, we include more scenes with rare classes (such as bicycles).” Below is an image of the respective driving routes. nuScenes also has an online tool with sample scenes that have been captured.

nuScenes dataset“We’re proud to provide the annotations … as the most robust open source multi-sensor self-driving dataset ever released,” said Scale CEO Alexandr Wang. “We believe this will be an invaluable resource for researchers developing autonomous vehicle systems, and one that will help to shape and accelerate their production for years to come.”

Related: MapLite enables autonomous vehicles to navigate unmapped roads

Starting from 2019, nuScenes will organize challenges on object detection and other computer vision tasks to provide a benchmark to measure performance and advance the state-of-the-art. nuScenes can also be used for 2D object detection. Using the known camera calibration parameters, it can project 3D object bounding boxes into any of the cameras and therefore also provide boxes for 2D object detection.

Scale, whose autonomous vehicle customers also include Lyft, General Motors through its Cruise business unit, Zoox, Nuro, has raised a total of $22.7 million to date. It has labeled more than 200,000 miles of autonomous driving data for clients that include Lyft, Voyage, General Motors, Zoox, and Embark since its founding in 2016.


Filed Under: Automotive, The Robot Report
Tagged With: nutonomy
 

Tell Us What You Think!

Related Articles Read More >

Teradyne’s Robotics Summit keynote to discuss how cobots can solve labor crisis
auto radar
The basics of automotive radar
Softbank Whiz cleaning robot available outside of Japan
CMR Surgical raises $240M for Versius surgical robot

DESIGN GUIDE LIBRARY

“motion

Enews Sign Up

Motion Control Classroom

Design World Digital Edition

cover

Browse the most current issue of Design World and back issues in an easy to use high quality format. Clip, share and download with the leading design engineering magazine today.

EDABoard the Forum for Electronics

Top global problem solving EE forum covering Microcontrollers, DSP, Networking, Analog and Digital Design, RF, Power Electronics, PCB Routing and much more

EDABoard: Forum for electronics

Sponsored Content

  • Pushing performance: Adding functionality to terminal blocks
  • Get to Know Würth Industrial Division
  • Renishaw next-generation FORTiS™ enclosed linear encoders offer enhanced metrology and reliability for machine tools
  • WAGO’s smartDESIGNER Online Provides Seamless Progression for Projects
  • Epoxy Certified for UL 1203 Standard
  • The Importance of Industrial Cable Resistance to Chemicals and Oils

Design World Podcasts

June 12, 2022
How to avoid over engineering a part
See More >
Engineering Exchange

The Engineering Exchange is a global educational networking community for engineers.

Connect, share, and learn today »

Design World
  • Advertising
  • About us
  • Contact
  • Manage your Design World Subscription
  • Subscribe
  • Design World Digital Network
  • Engineering White Papers
  • LEAP AWARDS

Copyright © 2022 WTWH Media LLC. All Rights Reserved. The material on this site may not be reproduced, distributed, transmitted, cached or otherwise used, except with the prior written permission of WTWH Media
Privacy Policy | Advertising | About Us

Search Design World

  • Home
  • Technologies
    • 3D CAD
    • Electronics • electrical
    • Fastening & Joining
    • Factory automation
    • Linear Motion
    • Motion Control
    • Test & Measurement
    • Sensors
    • Fluid power
  • Learn
    • Ebooks / Tech Tips
    • Engineering Week
    • Future of Design Engineering
    • MC² Motion Control Classrooms
    • Podcasts
    • Videos
    • Webinars
  • LEAP AWARDS
  • Leadership
    • 2022 Voting
    • 2021 Winners
  • Design Guide Library
  • Resources
    • 3D Cad Models
      • PARTsolutions
      • TraceParts
    • Digital Issues
      • Design World
      • EE World
    • Women in Engineering
  • Supplier Listings