XR-ROSHunter Tracked SLAM Autonomous Navigation Robot Parameters
  1. Product images

 

ROS Hunter tracked autonomous navigation robot is designed by XiaoR Technology for in-depth exploration of unmanned driving and robot navigation technology. It is based on NVIDIA Jetson Nano and uses the advanced ROS2 framework. It is a professional-grade autonomous navigation car. The chassis of the car adopts a track structure, which gives the robot unparalleled adaptability and stability in various complex terrains. Combined with nylon tracks and high-performance DC motors, it is particularly suitable for scenarios that require precise operations in complex environments, such as logistics transportation and exploration activities.

In order to meet advanced navigation and task execution requirements, ROSHunter is equipped with a series of high-performance hardware. This includes high-torque encoder reduction motors, laser radars, 3D depth cameras, 7-inch LCD screens, programmable lights, etc. The integration of these high-performance components not only optimizes the robot's motion control accuracy, but also makes it more efficient when performing complex tasks such as ROS SLAM algorithm mapping, navigation path planning, deep learning and visual interaction.

In order to enhance the user experience, ROS Hunter supports multiple control methods, including mobile phone APP, virtual machine RVIZ, PS4 controller, etc. These diverse control methods provide users with flexible operation options, making the process from map building to navigation more convenient. In addition, the complete ROS course provided by XiaoR Technology contains rich technical information, source code, documents and teaching videos, aiming to help users quickly master the core skills of robot development and application.

In addition, ROS Hunter is equipped with the "ROS human-computer interaction system" independently developed by XiaoR Technology, which can provide real-time feedback on the robot's operating status, program execution (such as map building, navigation and map saving, etc.) and system information viewing, further enhancing the robot's user interaction ability and practicality. This autonomous navigation robot is not only an ideal choice for technology enthusiasts and researchers, but also an excellent tool for advanced technology teaching in the field of education.

Key technologies: C++/Python/ROS2/SLAM autonomous navigation/3D depth vision/autonomous driving

Overall product parameters

Body structure parameters

Size

260*230*225mm

Weight

3.4kg

Material

Metal aluminum alloy

Craftsmanship

Anodized

Color

Blue

Moving mechanism

Crawler-type travel structure

Speed

0.8m/s

Auxiliary control board interface performance parameters

Main control chip

Chip model

STM32F103RCT6

Operating voltage

3.3V

Operating frequency

72MHZ

Sensor interface

Number of interfaces

3

Interface type

4PIN-ZH1.5

Voltage

5V

Current

200mA

Communication method

UART

Servo interface

Number of interfaces

2

Interface type

3PIN-PH2.0

Voltage

12.6V

Current

8A

Communication method

UART

Motor interface

Number of interfaces

4

Interface type

6PIN-PH2.0

Voltage

12.6V

Rated current

2A

Peak current

3A

Onboard USB interface

Number of interfaces

2

Interface type

4PIN-ZH1.5

Voltage

5V

Rated current

1.5A

Communication method

USB

Peripheral electronic devices

Display screen

Model

HDMI Display high-definition display

Camera

Model

Binocular depth camera, 1080P

Motor parameters

Reduction ratio

1:30

No-load current

1.2A

Locked-rotor current

3.5A

Rated torque

0.3kg.cm

Locked-rotor torque

6.0kg.cm

Servo parameters

Drive voltage

6V-12V

No-load current

180mA

Locked-rotor current

2.7A

Communication method

UART

Communication frequency

1Mbps

Development software

Programming language/programming tool

C language, Python, IAR

Control system

XR-GUI

XR-GUI human-computer interaction system

Main control board

Parameters

Main chip

Quad-core ARM quad-core A57; 128-Maxwell architecture

Interface

USB2.0, 100M network port, serial port, 40PIN I/O port

WIFI transmission distance

About 80M under 5dBi conditions

Compatible video format

Mjpeg, YUV

Control method

2.4G handle/APP/virtual machine RVIZ

PTZ parameters

Degree of freedom

Two degrees of freedom

Servo

S015M metal axis

 

Shipping list

The product is shipped as a finished product, the product list is as follows:

Accessory name

Quantity

Crawler robot chassis

1

Jetson Nano main control board

1

PWR.4RPL robot driver board

1

Encoder motor

4

5DBi patch antenna

2

Binocular depth HD camera

1

10000mAh lithium battery

1

Charger

1

Hardware package

1

2-DOF gimbal

1

XR-S002 laser radar

1

2.4G remote control handle

1

Instruction manual

1

 

Product Features

Tracked travel mode

Combined with nylon tracks and high-performance DC motors, it is particularly suitable for scenarios that require precise operations in complex environments, such as logistics transportation and exploration activities.

2-DOF PTZ gimbal

The robot is equipped with a high-performance 2-DOF PTZ gimbal, which enables the robot to look around and look up in the up and down, left and right directions, thereby expanding the robot's viewing angle rotation range.

WIFI wireless remote control

After the car is turned on, it generates a WiFi signal. The mobile phone or tablet can connect to the car through WiFi and control it with a dedicated APP.

2.4G wireless handle remote control

The car is compatible with 2.4G wireless handle real-time remote control, supports handle control of the robot, and the control link is stable;

SLAM mapping and navigation

With the XR-ROS human-computer interaction system, the SLAM laser radar mapping and automatic navigation functions can be realized through the APP or virtual machine, and obstacles can be encountered during the journey. Automatically plan a new route to avoid.

3D deep vision mapping and navigation

Using the RTAB SLAM algorithm, combined with visual and radar information, a three-dimensional color map is constructed. On this basis, the robot can realize autonomous navigation and obstacle avoidance in the map, and support global relocation and autonomous positioning functions.

Opencv visual line patrol

Through the camera machine vision, the black line on the road can be autonomously judged, and the black line can be followed to achieve tracking driving.

Machine vision processing

The built-in visual development framework can realize functions such as face detection, edge detection, augmented reality, and color recognition.

 

Product information

Provide detailed electronic files and source code to assist learning, and provide supporting practical training materials with no less than 11 categories and 74 courses. The content covers from understanding ROS to fully mastering ROS-SLAM development and artificial intelligence technology. Knowledge points include: Linux system application, wireless remote control technology, single-chip microcomputer technology, Internet of Things sensor application technology, SLAM mapping and navigation technology, ROS robot application technology, program code open source, and support for secondary development.

 

Course List

Catalogue

Chapter 1 Overview of ROS2

Chapter 2 Introduction to the ROS2 SLAM Car Architecture

  1. Introduction to the robot motherboard and driver board
  2. Description of the overall framework

Chapter 3 Basic Operations

  1. APP installation and operation
  2. Virtual machine installation and keyboard operation
  3. Network settings between the robot and the computer
  4. Keyboard control on the virtual machine

Chapter 4 Secondary Development Environment Construction

  1. Secondary Development Software Installation and Use

1.1 Backup Image

1.2 Restore Image

  1. Introduction to SSH and Two Remote Login Methods

2.1 Using SSH in Linux/Terminal

2.2 Using SSH in Windows

  1. ROS2 Car Source Code
  2. System Architecture

Chapter 5 Introduction to ROS Basics

  1. Installation of ROS2 Framework
  2. Introduction to ROS2 Architecture
  3. Introduction to ROS2 Communication Mechanism
  4. Creation of ROS2 Application Workspace and Function Package

4.1 Create ROS2 Application Workspace

4.2 Create ROS2 Function Package

4.3 Compilation of ROS2 function package

  1. Introduction to ROS2 nodes

5.1 ros2 run

5.2 ros2 node list

5.3 remapping

5.4 node information

  1. Introduction to launch files and commands in ROS2

6.1 Introduction to launch files in ROS2

6.2 Common launch file writing methods

6.3 Create a single-node launch file

6.4 Create a multi-node launch file

  1. Introduction to RVIZ2 visualization platform
  2. Introduction to xros
  3. Introduction to xrosmanager2

Chapter 6 Introduction to SLAM mapping and navigation

  1. Introduction to SLAM

1.1 Development history of SLAM

1.2 Typical application areas of SLAM

1.3 SLAM framework

1.4 SLAM classification (sensor-based SLAM classification)

  1. Common SLAM algorithms

2.1 Hector SLAM algorithm

2.2 Gmapping algorithm

2.3 cartographer algorithm

  1. SLAM mapping and map saving operations

3.1 Laser SLAM mapping operations

3.2 Save map operations

3.3 Visual mapping operations

  1. Navigation introduction

4.1 Nav2 (2D navigation)

4.2 rtabmap visual navigation

  1. Robot underlying driver

Chapter 7 AI artificial intelligence technology

  1. Introduction to AI artificial intelligence technology
  2. AI artificial intelligence technology case analysis

2.1 Edge detection

2.2 Aruco augmented reality

2.3 Face recognition

2.4 Color recognition

2.5 Visual line patrol

  1. Simple follow function case

3.1 Radar follow

3.2 Visual tracking

3.3 Visual line patrol

Ai robotJetson nanoLidarProgrammable robotProgrammable smart carRosRos robotRos robot carRos2Slam

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