Google llc (20240345212). Detecting a Frame-of-Reference Change in a Smart-Device-Based Radar System simplified abstract

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Detecting a Frame-of-Reference Change in a Smart-Device-Based Radar System

Organization Name

google llc

Inventor(s)

Nicholas Edward Gillian of Palo Alto CA (US)

Detecting a Frame-of-Reference Change in a Smart-Device-Based Radar System - A simplified explanation of the abstract

This abstract first appeared for US patent application 20240345212 titled 'Detecting a Frame-of-Reference Change in a Smart-Device-Based Radar System

Simplified Explanation: The patent application describes a radar system that uses machine learning to detect changes in the frame of reference, allowing it to operate as a motion sensor without relying on non-radar-based sensors.

Key Features and Innovation:

  • Radar system with a frame-of-reference machine-learned module
  • Analyzes complex radar data to detect relative motion of objects
  • Operates as a motion sensor without non-radar-based sensors
  • Can determine if a gesture is likely to occur and compensate for radar system motion

Potential Applications: This technology can be used in:

  • Gesture recognition systems
  • Security systems
  • Autonomous vehicles
  • Robotics

Problems Solved:

  • Eliminates the need for additional sensors in motion detection systems
  • Improves accuracy and reliability of motion sensing technology

Benefits:

  • Enhanced motion detection capabilities
  • Reduced reliance on external sensors
  • Improved performance in various applications

Commercial Applications: Potential commercial uses include:

  • Smart home devices
  • Automotive industry for autonomous vehicles
  • Security and surveillance systems

Prior Art: Readers can explore prior art related to this technology in the field of radar systems, machine learning, and motion sensing technologies.

Frequently Updated Research: Stay updated on advancements in radar technology, machine learning applications in sensor systems, and motion detection research.

Questions about Radar System with Frame-of-Reference Machine-Learned Module: 1. How does the radar system with a frame-of-reference machine-learned module improve motion detection capabilities? 2. What are the potential commercial applications of this technology in the automotive industry?


Original Abstract Submitted

techniques and apparatuses are described that implement a smart-device-based radar system capable of detecting a frame-of-reference change. in particular, a radar system includes a frame-of-reference machine-learned module trained to recognize whether or not the radar system's frame of reference changes. the frame-of-reference machine-learned module analyzes complex radar data generated from at least one chirp of a reflected radar signal to analyze a relative motion of at least one object over time. by analyzing the complex radar data directly using machine learning, the radar system can operate as a motion sensor without relying on non-radar-based sensors, such as gyroscopes, inertial sensors, or accelerometers. with knowledge of whether the frame-of-reference is stationary or moving, the radar system can determine whether or not a gesture is likely to occur and, in some cases, compensate for the relative motion of the radar system itself.