PLoS ONE (Jan 2018)

A Hybrid Geometric Spatial Image Representation for scene classification.

  • Nouman Ali,
  • Bushra Zafar,
  • Faisal Riaz,
  • Saadat Hanif Dar,
  • Naeem Iqbal Ratyal,
  • Khalid Bashir Bajwa,
  • Muhammad Kashif Iqbal,
  • Muhammad Sajid

DOI
https://doi.org/10.1371/journal.pone.0203339
Journal volume & issue
Vol. 13, no. 9
p. e0203339

Abstract

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The recent development in the technology has increased the complexity of image contents and demand for image classification becomes more imperative. Digital images play a vital role in many applied domains such as remote sensing, scene analysis, medical care, textile industry and crime investigation. Feature extraction and image representation is considered as an important step in scene analysis as it affects the image classification performance. Automatic classification of images is an open research problem for image analysis and pattern recognition applications. The Bag-of-Features (BoF) model is commonly used to solve image classification, object recognition and other computer vision-based problems. In BoF model, the final feature vector representation of an image contains no information about the co-occurrence of features in the 2D image space. This is considered as a limitation, as the spatial arrangement among visual words in image space contains the information that is beneficial for image representation and learning of classification model. To deal with this, researchers have proposed different image representations. Among these, the division of image-space into different geometric sub-regions for the extraction of histogram for BoF model is considered as a notable contribution for the extraction of spatial clues. Keeping this in view, we aim to explore a Hybrid Geometric Spatial Image Representation (HGSIR) that is based on the combination of histograms computed over the rectangular, triangular and circular regions of the image. Five standard image datasets are used to evaluate the performance of the proposed research. The quantitative analysis demonstrates that the proposed research outperforms the state-of-art research in terms of classification accuracy.