Performance Comparison of Feature Extraction Algorithms for Target Detection and Classification

Abstract

This paper addresses the problem of target detection and classification, where the performance is often limited due to high rates of false alarm and classification error, possibly because of inadequacies in the underlying algorithms of feature extraction from sensory data and subsequent pattern classification. In this paper, a recently reported feature extraction algorithm, symbolic dynamic filtering (SDF), is investigated for target detection and classification by using unmanned ground sensors (UGS). In SDF, sensor time series data are first symbolized to construct probabilistic finite state automata (PFSA) that, in turn, generate low-dimensional feature vectors. In this paper, the performance of SDF is compared with that of two commonly used feature extractors, namely Cepstrum and principal component analysis (PCA), for target detection and classification. Three different pattern classifiers have been employed to compare the performance of the three feature extractors for target detection and human/animal classification by UGS systems based on two sets of field data that consist of passive infrared (PIR) and seismic sensors. The results show consistently superior performance of SDF-based feature extraction over Cepstrum-based and PCA-based feature extraction in terms of successful detection, false alarm, and misclassification rates.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 2013
Accession Number
ADA580366

Entities

People

  • Asok Ray
  • Nasser M. Nasrabadi
  • Soheil Bahrampour
  • Soumalya Sarka
  • Thyagaraju Damarla

Organizations

  • Pennsylvania State University

Tags

Communities of Interest

  • Sensors

DTIC Thesaurus Topics

  • Algorithms
  • Automata
  • Classification
  • Data Sets
  • Detection
  • Detectors
  • Electrical Engineering
  • Factor Analysis
  • False Alarms
  • Feature Extraction
  • Filtration
  • Information Science
  • Infrared Detectors
  • Machine Learning
  • Supervised Machine Learning
  • Target Detection
  • Warning Systems

Readers

  • Neural Network Machine Learning.
  • Sensor Fusion and Tracking Systems.

Technology Areas

  • AI & ML
  • Autonomy