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Development of Novel Attention-Aware Deep Learning Models and Their Applications in Computer Vision and Dynamical System Calibration

In recent years, deep learning has revolutionized computer vision and natural language processing tasks, but the black-box nature of these models poses significant challenges for their interpretability and reliability, especially in critical applications such as healthcare. To address this, attention-based methods have been proposed to enhance the focus and interpretability of deep learning models. In this dissertation, we investigate the effectiveness of attention mechanisms in improving prediction and modeling tasks across different domains.
We propose three essays that utilize task-specific designed trainable attention modules in manufacturing, healthcare, and system identification applications. In essay 1, we introduce a novel computer vision tool that tracks the melt pool in X-ray images of laser powder bed fusion using attention modules. In essay 2, we present a mask-guided attention (MGA) classifier for COVID-19 classification on lung CT scan images. The MGA classifier incorporates lesion masks to improve both the accuracy and interpretability of the model, outperforming state-of-the-art models with limited training data. Finally, in essay 3, we propose a Transformer-based model, utilizing self-attention mechanisms, for parameter estimation in system dynamics models that outpaces the conventional system calibration methods. Overall, our results demonstrate the effectiveness of attention-based methods in improving deep learning model performance and reliability in diverse applications. / Doctor of Philosophy / Deep learning, a type of artificial intelligence, has brought significant advancements to tasks like recognizing images or understanding texts. However, the inner workings of these models are often not transparent, which can make it difficult to comprehend and have confidence in their decision-making processes. Transparency is particularly important in areas like healthcare, where understanding why a decision was made can be as crucial as the decision itself. To help with this, we've been exploring an interpretable tool that helps the computer focus on the most important parts of the data, which we call the ``attention module''. Inspired by the human perception system, these modules focus more on certain important details, similar to how our eyes might be drawn to a familiar face in a crowded room. We propose three essays that utilize task-specific attention modules in manufacturing, healthcare, and system identification applications.
In essay one, we introduce a computer vision tool that tracks a moving object in a manufacturing X-ray image sequence using attention modules. In the second essay, we discuss a new deep learning model that uses focused attention on lung lesions for more accurate COVID-19 detection on CT scan images, outperforming other top models even with less training data. In essay three, we propose an attention-based deep learning model for faster parameter estimation in system dynamics models.
Overall, our research shows that attention-based methods can enhance the performance, transparency, and usability of deep learning models across diverse applications.

Identiferoai:union.ndltd.org:VTETD/oai:vtechworks.lib.vt.edu:10919/115755
Date12 July 2023
CreatorsMaftouni, Maede
ContributorsIndustrial and Systems Engineering, Kong, Zhenyu, Chen, Xi, Ghaffarzadegan, Navid, Yue, Xiaowei
PublisherVirginia Tech
Source SetsVirginia Tech Theses and Dissertation
LanguageEnglish
Detected LanguageEnglish
TypeDissertation
FormatETD, application/pdf
RightsIn Copyright, http://rightsstatements.org/vocab/InC/1.0/

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