More about HKUST
Medical Images Denoising and Super-Resolution by Deep Learning
PhD Thesis Proposal Defence Title: "Medical Images Denoising and Super-Resolution by Deep Learning" by Mr. Siu Chung TSANG Abstract: Medical images usually suffer from high noises and limited resolution. In many medical image modalities, the noise level and resolution are restricted by various reasons such as the integrity of the sample, patient movement, signal interference, scanning time, hardware settings, and the list goes on. Post-processing applications such as segmentation, diagnosis, and detection rely on a high-quality input image. The doctor's decision on treatment planning or biologist's research study also depends on the noise level and resolution of an image. Deep learning-based denoising and super-resolution models today have shown encouraging results in both natural images and medical images. A major limitation in the literature is that these two tasks are addressed separately. Recently, studies have shown that the joint denoising and super-resolution (JDSR) approach outperforms the sequential application of the denoiser and super-resolution model. Despite having promising results, the JDSR approach is relatively unexplored due to the absence of a suitable dataset. The training process of these methods requires noise-free ground truth or multiple noisy captures. However, these extra training datasets are often unavailable in many medical image applications. This manuscript proposes a new weakly-supervised method, in which different from other approaches, the JDSR model is trained with a single noisy-HR capture alone. We further introduce a novel training framework to approximate the supervised JDSR approach. We present both theoretical explanation and experimental analysis for our method validation. Moreover, we give a fully-unsupervised approach for JDSR when HR training data is not available. Date: Tuesday, 9 August 2022 Time: 4:00pm - 6:00pm Zoom Meeting: https://hkust.zoom.us/j/6807545958 Committee Members: Prof. Albert Chung (Supervisor) Prof. Pedro Sander (Supervisor) Dr. Dimitris Papadopoulos (Chairperson) Dr. Dan Xu **** ALL are Welcome ****