THE AUTOMATIC CLASSIFICATION OF MODULATION TYPES BY PATTERN RECOGNITION.

Abstract

This report presents the preliminary results of an investigation into the use of pattern-recognition techniques to rapidly and automatically identify the type of modulation on a high-frequency radio signal. Classes of modulation initially considered include double-sideband AM, upper and lower single-sideband suppressed carrier, CW, high- and low-speed teletype (single-channel FSK), multichannel FSK, and on-off keying (Morse code). The spectrum of the signal is measured by a digital analyzer whose outputs are classified by a pattern recognizer. The spectrum analyzer and classifier are realized on a PDP-8 digital computer. The new 'nearest neighbor' type of pattern recognizer has been developed that significantly increases classification accuracy. The decision surfaces of this classifier asymptotically approach the Bayes decision surfaces with simple set size. Mis-classification rates of 5 to 10 percent have been obtained with signals recorded in a typical HF environment. Important characteristics of the system are the ability to recognize the presence of a signal when the modulation format is unknown and the ability to recognize the presence of a new signal that has not been previously encountered. (Author)

Document Details

Document Type
Technical Report
Publication Date
Apr 01, 1969
Accession Number
AD0691069

Entities

People

  • C. A. Cole
  • C. S. Weaver
  • Madeleine L. Miller
  • R. B. Krumland

Organizations

  • Stanford University

Tags

DTIC Thesaurus Topics

  • Amplitude Modulation
  • Analyzers
  • Classification
  • Computers
  • Digital Computers
  • Frequency
  • Machine Learning
  • Modulation
  • Morse Code
  • Pattern Recognition
  • Radio Signals
  • Recognition
  • Sidebands
  • Spectra
  • Spectrum Analyzers

Readers

  • Computer Science/Computer Engineering/Data Science/Digital Signal Processing.
  • Computer Vision.
  • Radio communications and signal processing.

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks