18532128. TRAVEL CONTROLLER AND METHOD FOR TRAVEL CONTROL simplified abstract (TOYOTA JIDOSHA KABUSHIKI KAISHA)

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TRAVEL CONTROLLER AND METHOD FOR TRAVEL CONTROL

Organization Name

TOYOTA JIDOSHA KABUSHIKI KAISHA

Inventor(s)

Wataru Kawashima of Nisshin-shi (JP)

TRAVEL CONTROLLER AND METHOD FOR TRAVEL CONTROL - A simplified explanation of the abstract

This abstract first appeared for US patent application 18532128 titled 'TRAVEL CONTROLLER AND METHOD FOR TRAVEL CONTROL

Simplified Explanation:

A travel controller uses neural networks to predict future surrounding conditions of a vehicle and generate control signals for its travel.

Key Features and Innovation:

  • Inputting vicinity images into neural networks to predict future conditions.
  • Generating control signals based on current and future images.
  • Utilizing two separate neural networks for image processing and control signal generation.

Potential Applications: This technology could be applied in autonomous vehicles, drones, and other self-navigating systems.

Problems Solved: This technology addresses the need for accurate prediction of future surrounding conditions for efficient vehicle control.

Benefits:

  • Improved safety and efficiency in vehicle travel.
  • Enhanced decision-making capabilities for autonomous systems.
  • Potential for reducing accidents and optimizing travel routes.

Commercial Applications: The technology could be utilized in the automotive industry for self-driving cars, in the transportation sector for logistics optimization, and in the aerospace industry for autonomous drones.

Prior Art: Readers interested in prior art related to this technology could explore research on neural network applications in autonomous systems and image processing for vehicle control.

Frequently Updated Research: Stay updated on advancements in neural network technology for autonomous systems and image processing for predictive modeling in vehicle control.

Questions about the Technology: 1. How does this technology improve the efficiency of vehicle travel? 2. What are the potential limitations of using neural networks for predicting future surrounding conditions in vehicles?


Original Abstract Submitted

A travel controller generates a future image by inputting a series of vicinity images representing surrounding conditions of a vehicle up to a current time into a first neural network. The future image represents predicted surrounding conditions of the vehicle at a future time that is a predetermined period after the current time. The travel controller generates a control signal for controlling travel of the vehicle by inputting a vicinity image outputted at the current time of the series of vicinity images, the future image, and the predetermined period into a second neural network different from the first neural network.