DISSERTATION

Feature extraction in image processing and deep learning

Yiran Li

Year: 2018 University:   University Libraries (University of Maryland)   Publisher: University of Maryland, College Park

Abstract

This thesis develops theoretical analysis of the approximation properties of neural networks, and algorithms to extract useful features of images in fields of deep learning, quantum energy regression and cancer image analysis. The separate applications are connected by using representation systems in harmonic analysis; we focus on deriving proper representations of data using Gabor transform in this thesis. A novel neural network with proven approximation properties dependent on its size is developed using Gabor system. In quantum energy regression, invariant representation of chemical molecules using electron densities is obtained based on the Gabor transform. Additionally, we dig into pooling functions, the feature extractor in deep neural networks, and develop a novel pooling strategy originated from the maximal function with stability property and stable performance. Anisotropic representation of data using the Shearlet transform is also explored in its ability to detect regions of interests of nuclei in cancer images.

Keywords:
Artificial intelligence Feature extraction Feature (linguistics) Computer science Image processing Extraction (chemistry) Pattern recognition (psychology) Image (mathematics) Chemistry

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Citation History

Topics

Brain Tumor Detection and Classification
Life Sciences →  Neuroscience →  Neurology
Image Processing and 3D Reconstruction
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Neural Networks and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
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