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Investigating the Effectiveness of Wavelet Approximations in Resizing Images for Ultrasound Image Classification.

Umar ManzoorSamia NeftiMilella Ferdinando
Published in: Journal of medical systems (2016)
Images are difficult to classify and annotate but the availability of digital image databases creates a constant demand for tools that automatically analyze image content and describe it with either a category or a set of variables. Ultrasound Imaging is very popular and is widely used to see the internal organ(s) condition of the patient. The main target of this research is to develop a robust image processing techniques for a better and more accurate medical image retrieval and categorization. This paper looks at an alternative to feature extraction for image classification such as image resizing technique. A new mean for image resizing using wavelet transform is proposed. Results, using real medical images, have shown the effectiveness of the proposed technique for classification task comparing to bi-cubic interpolation and feature extraction.
Keyphrases
  • deep learning
  • convolutional neural network
  • artificial intelligence
  • machine learning
  • randomized controlled trial
  • healthcare
  • magnetic resonance imaging
  • optical coherence tomography