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Exploring The Potential Of Sparse Coding For Machine Learning, Sheng Yang Lundquist
Exploring The Potential Of Sparse Coding For Machine Learning, Sheng Yang Lundquist
Dissertations and Theses
While deep learning has proven to be successful for various tasks in the field of computer vision, there are several limitations of deep-learning models when compared to human performance. Specifically, human vision is largely robust to noise and distortions, whereas deep learning performance tends to be brittle to modifications of test images, including being susceptible to adversarial examples. Additionally, deep-learning methods typically require very large collections of training examples for good performance on a task, whereas humans can learn to perform the same task with a much smaller number of training examples.
In this dissertation, I investigate whether the use …