General Class-Balanced Multicentric Dynamic Prototype Pseudo-Labeling for Source-Free Domain Adaptation

Academic Background and Problem Statement In recent years, deep learning models (Deep Neural Networks, DNNs) have achieved remarkable success in computer vision tasks. However, the training of these models relies heavily on large amounts of annotated data. When models are applied to new, unlabeled target domains, their generalization ability often ...

PICK: Predict and Mask for Semi-Supervised Medical Image Segmentation

Report on the Paper “PICK: Predict and Mask for Semi-Supervised Medical Image Segmentation” Academic Background Accurate segmentation of medical images is crucial in clinical practice, as it provides vital insights into organ/tumor characteristics such as volume, location, and shape. Recent studies have highlighted the significant potential of data...

Robust Sequential Deepfake Detection

Robust Sequential Deepfake Detection Academic Background With the rapid development of deep generative models (such as GANs), generating photorealistic facial images has become increasingly easy. However, the misuse of this technology has raised significant security concerns, particularly with the rise of Deepfake technology. Deepfake technology ca...

Heuristic Underwater Perceptual Enhancement with Semantic Collaborative Learning

Academic Background and Problem Statement Underwater images have significant application value in fields such as marine exploration, underwater robotics, and marine life identification. However, due to the refraction and absorption of light by water, underwater images often suffer from low contrast and color distortion, which severely impacts the a...

Blind Image Quality Assessment: Exploring Content Fidelity Perceptibility via Quality Adversarial Learning

Exploring Content Fidelity Perceptibility via Quality Adversarial Learning Academic Background Image Quality Assessment (IQA) is a fundamental problem in the field of computer vision, aiming to evaluate the fidelity of visual content in images. IQA has significant applications in areas such as image compression and restoration. Traditional IQA meth...

RepsNet: A Nucleus Instance Segmentation Model Based on Boundary Regression and Structural Re-parameterization

RepsNet: A Nucleus Instance Segmentation Model Based on Boundary Regression and Structural Re-parameterization

Report on the Paper “RepsNet: A Nucleus Instance Segmentation Model Based on Boundary Regression and Structural Re-parameterization” Academic Background Pathological diagnosis is the gold standard for tumor diagnosis, and nucleus instance segmentation is a key step in digital pathology analysis and pathological diagnosis. However, the computational...