Showing posts with label ROS. Show all posts
Showing posts with label ROS. Show all posts

Tuesday, February 7, 2023

HUSARNET: A PEER-TO-PEER, LOW LATENCY VPN FOR ROBOTS

 https://husarnet.com/

Peer-to-Peer VPN to connect your laptops, servers or microcontrollers over the Internet with zero configuration.

VPN for ROS

From ROS perspective, Husarnet is simply a LAN network. Our tools are ROS aware and can help you configure and monitor your ROS network.

https://www.omgkrk.com/husarnet/

Tuesday, August 4, 2020

Areskey Miiboo: ROS Smart Car Platform




A Systematic Platform to Learning Robot Programming with ROS | ROS Smart Car System | SLAM Builds a map | Voice Navigation | Speech Recognition | Speech Synthesis (Package Content: 2)
$99.00
https://www.ienggbdc.com/index.php?main_page=product_info&products_id=486073

https://www.amazon.com/-/es/Platform-construye-Navegaci%C3%B3n-Reconocimiento-S%C3%ADntesis/dp/B07X2HQ23D?th=1

https://www.amazon.com/Platform-Navigation-Recognition-Synthesis-Tutorial/dp/B07X1NMQKT

Brand: Areskey   |   Manufacturer: Miiboo

US$ 528.68
ROS Smart Car Platform | SLAM construye un mapa | Navegación por voz | Reconocimiento de voz | Síntesis de voz | Tutorial de inicio de ROS

This one uses the https://www.ydlidar.com/

https://github.com/miiboo

http://miiboo.cn/







XiaoR GEEK ROS SLAM Robot Car with Laser Radar for Raspberry PI

https://www.xiaorgeek.net/collections/raspberry-pi/products/xiaor-geek-ros-slam-robot-car-with-laser-radar-for-raspberry-pi-4b

XiaoR GEEK ROS SLAM Robot Car with Laser Radar for Raspberry Pi 4B


XIAOR GEEK

$425.99 USD


RPLIDAR A1 Lidar.


https://www.xiaorgeek.net/blogs/news

http://xiao-r.com/Product/page/id/10  Manual

http://xiao-r.com/


Monday, August 3, 2020

OAK-D: OpenCV AI Kit A tiny, powerful, open source Spatial AI system

https://www.kickstarter.com/projects/opencv/opencv-ai-kit#


Based on the Intel® Movidius™ Myriad™ X Vision Processing Unit (VPU)

Intel® Movidius™ Myriad™ X VPU

The Intel® Movidius™ Myriad™ X VPU is Intel's first VPU to feature the Neural Compute Engine — a dedicated hardware accelerator for deep neural network inference. The Neural Compute Engine in conjunction with the 16 powerful SHAVE cores and high throughput intelligent memory fabric makes Movidius Myriad X ideal for on-device deep neural networks and computer vision applications.
The Movidius Myriad X VPU is programmable with the Intel® Distribution of the OpenVINO™ toolkit for porting neural network to the edge, and via the Myriad Development Kit (MDK) which includes all necessary development tools, frameworks and APIs to implement custom vision, imaging and deep neural network workloads on the chip.





Open Source Spatial AI From The Biggest Name in Computer Vision.
To celebrate OpenCV’s 20th anniversary we are proud to introduce the OpenCV AI Kit (OAK), an MIT-licensed open source software and Myriad X-based hardware solution for computer vision at any scale. 




OAK consists of the OAK API software and two different types of hardware: OAK-1 and OAK-D. They are tiny artificial intelligence (AI) and computer vision (CV) powerhouses, with OAK-D providing spatial AI leveraging stereo depth in addition to the 4K/30 12MP camera that both models share.  They are also both absurdly easy to use. Up and running in under 30 seconds, OAK-1 and OAK-D allow anyone to access this power: hobbyists, researchers, and professionals alike. Once you're done tinkering, OAK's modular, FCC/CE-approved, open-source hardware ecosystem affords direct integration into your products.








 project video thumbnail









Monday, July 27, 2020

MOV.AI Operating System For Collaborative Industrial Robots

https://mov.ai/


MOV.AI is a startup that provides an operating system for autonomous intelligent collaborative robots for universal commercial use. Their solution provides an industry-grade, ROS compatible O/S that enables easy mapping, robust, affordable and autonomous navigation and obstacle avoidance as well as a modern end-user interface which facilitates...






TUGBOT from RoboSavvy

Monday, August 12, 2019

Freedom Robotics launched out of stealth yesterday with $6.6 million in funding to help build the “AWS equivalent for robotics.”

https://news.crunchbase.com/news/freedom-robotics-launches-with-6-6m-in-seed-funding-to-build-the-aws-equivalent-for-robotics/



I have actually setup the Freedom Robotics software to run on the OpenRover platform.  It was fairly straightforward an provided and Instant remote access and control with Telepresence capability to the rover.

Anyone mildly familiar with ROS and knows how to get the webcam going in ROS can do this.



Thursday, December 13, 2018

AWS RoboMaker: Robot Operating System (ROS), with connectivity to cloud services.



https://aws.amazon.com/robomaker/
AWS RoboMaker

Easily develop, test, and deploy intelligent robotics applications

AWS RoboMaker is a service that makes it easy to develop, test, and deploy intelligent robotics applications at scale. RoboMaker extends the most widely used open-source robotics software framework, Robot Operating System (ROS), with connectivity to cloud services. This includes AWS machine learning services, monitoring services, and analytics services that enable a robot to stream data, navigate, communicate, comprehend, and learn. RoboMaker provides a robotics development environment for application development, a robotics simulation service to accelerate application testing, and a robotics fleet management service for remote application deployment, update, and management.

Robots are machines that sense, compute, and take action. Robots need instructions to accomplish tasks, and these instructions come in the form of applications that developers code to determine how the robot will behave. Receiving and processing sensor data, controlling actuators for movement, and performing a specific task are all functions that are typically automated by these intelligent robotics applications. Intelligent robots are being increasingly used in warehouses to distribute inventory, in homes to carry out tedious housework, and in retail stores to provide customer service. Robotics applications use machine learning in order to perform more complex tasks like recognizing an object or face, having a conversation with a person, following a spoken command, or navigating autonomously. Until now, developing, testing, and deploying intelligent robotics applications was difficult and time consuming. Building intelligent robotics functionality using machine learning is complex and requires specialized skills. Setting up a development environment can take each developer days and building a realistic simulation system to test an application can take months due to the underlying infrastructure needed. Once an application has been developed and tested, a developer needs to build a deployment system to deploy the application into the robot and later update the application while the robot is in use.

AWS RoboMaker provides the tools to make building intelligent robotics applications more accessible, a fully managed simulation service for quick and easy testing, and a deployment service for lifecycle management. AWS RoboMaker removes the heavy lifting from each step of robotics development so you can focus on creating innovative robotics applications.



What is AWS RoboMaker?

How it works


AWS RoboMaker provides four core capabilities for developing, testing, and deploying intelligent robotics applications.
Cloud Extensions for ROS


Robot Operating System, or ROS, is the most widely used open source robotics software framework, providing software libraries that help you build robotics applications. AWS RoboMaker provides cloud extensions for ROS so that you can offload to the cloud the more resource-intensive computing processes that are typically required for intelligent robotics applications and free up local compute resources. These extensions make it easy to integrate with AWS services like Amazon Kinesis Video Streams for video streaming, Amazon Rekognition for image and video analysis, Amazon Lex for speech recognition, Amazon Polly for speech generation, and Amazon CloudWatch for logging and monitoring. RoboMaker provides each of these cloud service extensions as open source ROS packages, so you can build functions on your robot by taking advantage of cloud APIs, all in a familiar software framework.
Development Environment


AWS RoboMaker provides a robotics development environment for building and editing robotics applications. The RoboMaker development environment is based on AWS Cloud9, so you can launch a dedicated workspace to edit, run, and debug robotics application code. RoboMaker's development environment includes the operating system, development software, and ROS automatically downloaded, compiled, and configured. Plus, RoboMaker cloud extensions and sample robotics applications are pre-integrated in the environment, so you can get started in minutes.
Simulation


Simulation is used to understand how robotics applications will act in complex or changing environments, so you don’t have to invest in expensive hardware and set up of physical testing environments. Instead, you can use simulation for testing and fine-tuning robotics applications before deploying to physical hardware. AWS RoboMaker provides a fully managed robotics simulation service that supports large scale and parallel simulations, and automatically scales the underlying infrastructure based on the complexity of the simulation. RoboMaker also provides pre-built virtual 3D worlds such as indoor rooms, retail stores, and race tracks so you can download, modify, and use these worlds in your simulations, making it quick and easy to get started.
Fleet Management


Once an application has been developed or modified, you’d build an over-the-air (OTA) system to securely deploy the application into the robot and later update the application while the robot is in use. AWS RoboMaker provides a fleet management service that has robot registry, security, and fault-tolerance built-in so that you can deploy, perform OTA updates, and manage your robotics applications throughout the lifecycle of your robots. You can use RoboMaker fleet management to group your robots and update them accordingly with bug fixes or new features, all with a few clicks in the console.



Benefits

Get started quickly


AWS RoboMaker includes sample robotics applications to help you get started quickly. These provide the starting point for the voice command, recognition, monitoring, and fleet management capabilities that are typically required for intelligent robotics applications. Sample applications come with robotics application code (instructions for the functionality of your robot) and simulation application code (defining the environment in which your simulations will run). The sample simulation applications come with pre-built worlds such as indoor rooms, retail stores, and racing tracks so you can get started in minutes. You can modify and build on the code of the robotics application or simulation application in the development environment or use your own custom applications.


Build intelligent robots


Because AWS RoboMaker is pre-integrated with popular AWS analytics, machine learning, and monitoring services, it’s easy to add functions like video streaming, face and object recognition, voice command and response, or metrics and logs collection to your robotics application. RoboMaker provides extensions for cloud services like Amazon Kinesis (video stream), Amazon Rekognition (image and video analysis), Amazon Lex (speech recognition), Amazon Polly (speech generation), and Amazon CloudWatch (logging and monitoring) to developers who are using Robot Operating System, or ROS. These services are exposed as ROS packages so that you can easily use them to build intelligent functions into your robotics applications without having to learn a new framework or programming language.


Lifecycle management


Manage the lifecycle of a robotics application from building and deploying the application, to monitoring and updating an entire fleet of robots. Using AWS RoboMaker fleet management, you can deploy an application to a fleet of robots. Using the CloudWatch metrics and logs extension for ROS, you can monitor these robots throughout their lifecycle to understand CPU, speed, memory, battery, and more. When a robot needs an update, you can use RoboMaker simulation for regression testing before deploying the fix or new feature through RoboMaker fleet management.