Heckel, ReinhardBaraniuk, Richard G.2023-08-092023-08-092023-052023-04-14May 2023Zalbagi Darestani, Mohammad. "Improving the Robustness of Deep Learning Based Image Reconstruction Models Against Natural Distribution Shifts." (2023) Diss., Rice University. <a href="https://hdl.handle.net/1911/115153">https://hdl.handle.net/1911/115153</a>.https://hdl.handle.net/1911/115153Deep neural networks give state-of-the-art accuracy for reconstructing images from few and noisy measurements, a problem arising for example in accelerated magnetic resonance imaging (MRI). However, recent works have raised concerns that deep-learning-based image reconstruction methods are sensitive to perturbations and are less robust than traditional methods: Neural networks (i) may be sensitive to small, yet adversarially-selected perturbations, (ii) may perform poorly under distribution shifts, and (iii) may fail to recover small but important features in an image. In order to understand the sensitivity to such perturbations, in this work, we measure the robustness of different approaches for image reconstruction including trained and un-trained neural networks as well as traditional sparsity-based methods. We find, contrary to prior works, that both trained and un-trained methods are vulnerable to adversarial perturbations. Moreover, both trained and un-trained methods tuned for a particular dataset suffer very similarly from distribution shifts. Finally, we demonstrate that an image reconstruction method that achieves higher reconstruction quality, also performs better in terms of accurately recovering fine details. Our results indicate that the state-of-the-art deep-learning-based image reconstruction methods provide improved performance than traditional methods without compromising robustness. Based on the afore-mentioned conclusions, we target deep learning based models in order to improve their robustness to natural distribution shifts. Note that this is a natural choice since deep learning based models are equally vulnerable to distribution shifts compared to other families of reconstruction methods, yet they give superior performance. We also selected natural distribution shifts since they occur frequently in practice. For example, we train a network on data from one hospital, and apply the network to data from a different hospital. Or we train on data acquired with one scanner type and acquisition mode, and apply it to a different scanner type or acquisition mode. In this work, we propose a domain adaptation method for deep learning based compressive sensing that relies on self-supervision during training paired with test-time training at inference. We show that for four natural distribution shifts, this method essentially closes the distribution shift performance gap for state-of-the-art architectures for accelerated MRI.application/pdfengCopyright is held by the author, unless otherwise indicated. Permission to reuse, publish, or reproduce the work beyond the bounds of fair use or other exemptions to copyright law must be obtained from the copyright holder.Computer VisionRobustnessDeep LearningImage ReconstructionCompressed SensingImproving the Robustness of Deep Learning Based Image Reconstruction Models Against Natural Distribution ShiftsThesis2023-08-09