Automated pollen identification using microscopic imaging and texture analysis

Micron. 2015 Jan:68:36-46. doi: 10.1016/j.micron.2014.09.002. Epub 2014 Sep 16.

Abstract

Pollen identification is required in different scenarios such as prevention of allergic reactions, climate analysis or apiculture. However, it is a time-consuming task since experts are required to recognize each pollen grain through the microscope. In this study, we performed an exhaustive assessment on the utility of texture analysis for automated characterisation of pollen samples. A database composed of 1800 brightfield microscopy images of pollen grains from 15 different taxa was used for this purpose. A pattern recognition-based methodology was adopted to perform pollen classification. Four different methods were evaluated for texture feature extraction from the pollen image: Haralick's gray-level co-occurrence matrices (GLCM), log-Gabor filters (LGF), local binary patterns (LBP) and discrete Tchebichef moments (DTM). Fisher's discriminant analysis and k-nearest neighbour were subsequently applied to perform dimensionality reduction and multivariate classification, respectively. Our results reveal that LGF and DTM, which are based on the spectral properties of the image, outperformed GLCM and LBP in the proposed classification problem. Furthermore, we found that the combination of all the texture features resulted in the highest performance, yielding an accuracy of 95%. Therefore, thorough texture characterisation could be considered in further implementations of automatic pollen recognition systems based on image processing techniques.

Keywords: Discrete Tchebichef moments; Gray-level co-occurrence matrix; Local binary patterns; Log-Gabor filters; Pollen identification; Texture analysis.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Automation, Laboratory / methods
  • Chemical Phenomena
  • Image Processing, Computer-Assisted / methods*
  • Microscopy / methods*
  • Pollen / classification*
  • Surface Properties*