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Artificial senses for characterization of food quality

HUANG Yan-bo 1, LAN Yu-bin 2, R.E. Lacey 1   

  1. 1. Biological and Agricultural Engineering Department, Texas A & M University, USA
    2. Agricultural Engineering Technology/Agricultural Research Station, Fort Valley State University, USA
  • Received:1900-01-01 Revised:1900-01-01 Online:2004-09-30 Published:1900-01-01
  • Contact: HUANG Yan-bo

Abstract: Food quality is of primary concern in the food industry and to the consumer. Systems that mimic human senses have been developed and applied to the characterization of food quality. The five primary senses are: vision, hearing, smell, taste and touch. In the characterization of food quality, people assess the samples sensorially and differentiate “good” from “bad” on a continuum. However, the human sensory system is subjective, with mental and physical inconsistencies, and needs time to work. Artificial senses such as machine vision, the electronic ear, electronic nose, electronic tongue, artificial mouth and even artificial the head have been developed that mimic the human senses. These artificial senses are coordinated individually or collectively by a pat-tern recognition technique, typically artificial neural networks, which have been developed based on studies of the mechanism of the human brain. Such a structure has been used to formulate methods for rapid characterization of food quality. This research presents and discusses individual artificial sensing systems. With the concept of multi-sensor data fusion these sensor systems can work collectively in some way. Two such fused systems, artificial mouth and artificial head, are described and discussed. It indicates that each of the individual systems has their own artificially sensing ability to differentiate food samples. It further indicates that with a more complete mimic of human intelligence the fused systems are more powerful than the individual sys-tems in differentiation of food samples.

Key words: artificial senses, food quality, quality quantification, artificial neural networks, feature extraction, multi-sensor data fusion