• SME MS900610
Provide PDF Format

Learn More

SME MS900610

  • A Bi-Directional Artificial Neural Network For 3d Motion Prediction
  • standard by Society of Manufacturing Engineers, 06/01/1990
  • Publisher: SME

$9.00$18.00


A BI-DIRECTIONAL NEURAL NETWORK MODEL FOR 3-D OBJECT MOTION PREDICTION IS PRESENTED. MOTION DETECTION AND PREDICTION REQUIRES VERY FAST COMPUTATION SPEED AND HIGH ACCURACY. ARTIFICIAL NEURAL NETWORK, A MASSIVELY PARALLEL AND DISTRIBUTED COMPUTATION ARCHITECTURE, IS VERY SUITABLE FOR THIS SPEED-CRITICAL REAL-TIME COMPUTER APPLICATION. DERIVED FROM SIMPLE NEURAL NETWORK MODELS, A BI-DIRECTIONAL DYNAMIC ASSOCIATIVE NEURAL NETWORK (BDANN) CAN PREDICT OBJECT MOTIONS ADEQUATELY FOR REAL-TIME APPLICATION. THE NETWORK APPLIES A RETROSPECTIVE AUTOREGRESSION MOVING AVERAGE (RARMA) COMPUTATION SCHEME FOR CONTINUAL UP-DATING OF NETWORK PARAMETERS. SIMULATION RESULTS SHOW THE EFFICIENCY AND ACCURACY OF THE APPROACH.

Related Products

SME MS910293

SME MS910293

Feature Recognition Reduces Cmm Programming Time While Speeding Analysis..

$9.00 $18.00

SME EM94-116

SME EM94-116

A Unique Spray Coating Process To Create Corrosion Control Resistance..

$9.00 $18.00

SME EM910107

SME EM910107

Environmentalism In The Composites Industry..

$9.00 $18.00

SME MS900742

SME MS900742

A Case Study: Methods And Tools For Optimization..

$9.00 $18.00