4.7 Article

A feature-selection algorithm based on Support Vector Machine-Multiclass for hyperspectral visible spectral analysis

Journal

JOURNAL OF FOOD ENGINEERING
Volume 119, Issue 1, Pages 159-166

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jfoodeng.2013.05.024

Keywords

Food quality inspection; Feature selection; Hyperspectral visible and near infrared (Vis-NIR); Support Vector Machine-Multiclass Forward Feature Selection (SVM-MFFS); Sesame oil

Funding

  1. 863 National High-Tech Research and Development Plan [2013AA102301]
  2. National Natural Science Foundation of China [61170033]
  3. National Science and Technology Support Program of China [2011BAD20B12-04, 2011BAD21B02]

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Quality and safety of foods is one of the world's top topics. Using high-precision spectral devices is a main technology trends by its high accuracy and nondestructive of food inspection, but the common obstacle is how to extract informative variables from raw data without losing significant information. This article proposes a novel feature selection algorithm named Support Vector Machine-Multiclass Forward Feature Selection (SVM-MFFS). SVM-MFFS adopts the wrapper and forward feature selection strategy, explores the stability of spectral variables, and uses classical SVM as classification and regression model to select the most relevant wavelengths from hundreds of spectral data. We compare SVM-MFFS with Successive Projection Analysis and Uninformative Variable Elimination in the experiment of identifying different brands of sesame oil. The results show that SVM-MFFS outperforms in accuracy, Receiver Operating Characteristic curve, Prediction and Cumulative Stability, and it will provide a reliable and rapid method in food quality inspection. (c) 2013 Elsevier Ltd. All rights reserved.

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