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A Generalization Performance Study Using Deep Learning Networks in Embedded Systems.

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This study introduces an Mbed OS and TensorFlow Lite environment for embedding deep learning into general-purpose embedded systems. This approach enables real-time decision-making at the edge, proving competitive with commercial alternatives.

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Area of Science:

  • Computer Science
  • Artificial Intelligence
  • Embedded Systems

Background:

  • Deep learning adoption is rising due to increased computational power and data availability.
  • Edge computing integrates AI near the data source, enabling real-time processing without central servers.
  • Integrating deep learning into resource-constrained embedded systems is challenging.

Purpose of the Study:

  • To develop an environment for embedding deep learning architectures into general-purpose embedded systems.
  • To overcome the limitations of low-capacity embedded systems for AI integration.
  • To enable real-time, in-situ decision-making using edge AI.

Main Methods:

  • Development of an environment using Mbed OS and TensorFlow Lite.
  • Embedding deep learning architectures into general-purpose embedded systems.
  • Experimental validation of the proposed system's performance.

Main Results:

  • The proposed system successfully integrates deep learning into embedded systems.
  • The developed environment supports real-time decision-making at the edge.
  • Experimental results demonstrate competitive performance compared to commercial systems.

Conclusions:

  • The Mbed OS and TensorFlow Lite environment facilitates deep learning integration in embedded systems.
  • This approach enhances the capabilities of edge computing for real-time AI applications.
  • The system offers a viable and competitive solution for deploying AI on micro-controllers.