An ontology-based hybrid methodology for image synthesis and identification with convex objects |
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Authors: | Nanfei Sun Jian Lin Michael Yu-Chi Wu |
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Affiliation: | 1. Department of Management Information Systems, University of Houston-Clear Lake, Houston, TX, USAsun@uhcl.edu sunnf98@hotmail.com;3. Department of Management Information Systems, University of Houston-Clear Lake, Houston, TX, USA |
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Abstract: | ABSTRACTOne of the core challenges in developing a computer system for machine learning is to make the system learn efficiently and effectively like a real human by grasping the domain knowledge exemplified by human experts. In this challenge, we have introduced a hybrid image synthesis model that can simulate one of the human’s learning capabilities in the vision field – the ability to synthesize images of convex objects by identifying solid geometries and textures of specific objects using few photographs. We have incorporated an ontology-based, domain knowledge on solid geometries into our model to synthesize large number of training images with only a minimum number of input images. Our initial experiments have shown that our model has convincing improvements by demonstrating a substantially better FAR/FRR/EER results when it is compared with a smaller set of non-synthetic images. |
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Keywords: | Ontology pattern recognition image synthesis feature extraction object identification solid geometries |
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