Instance Segmentation
Instance segmentation, a computer vision task, aims to identify and delineate individual objects within an image or point cloud, going beyond simple object detection by providing precise pixel-level masks. Current research emphasizes improving efficiency and accuracy, particularly in challenging scenarios like dense object arrangements, limited data, and noisy annotations; popular approaches involve transformer-based models, prototype-based methods, and techniques leveraging self-supervised learning or language-vision prompts. This field is crucial for diverse applications, including medical image analysis, autonomous driving, agricultural monitoring, and remote sensing, enabling automated analysis and improved decision-making in various domains.
Papers
Better (pseudo-)labels for semi-supervised instance segmentation
François Porcher, Camille Couprie, Marc Szafraniec, Jakob Verbeek
MISS: Memory-efficient Instance Segmentation Framework By Visual Inductive Priors Flow Propagation
Chih-Chung Hsu, Chia-Ming Lee
Augment Before Copy-Paste: Data and Memory Efficiency-Oriented Instance Segmentation Framework for Sport-scenes
Chih-Chung Hsu, Chia-Ming Lee, Ming-Shyen Wu
Circle Representation for Medical Instance Object Segmentation
Juming Xiong, Ethan H. Nguyen, Yilin Liu, Ruining Deng, Regina N Tyree, Hernan Correa, Girish Hiremath, Yaohong Wang, Haichun Yang, Agnes B. Fogo, Yuankai Huo
Outline-Guided Object Inpainting with Diffusion Models
Markus Pobitzer, Filip Janicki, Mattia Rigotti, Cristiano Malossi
SPINEPS -- Automatic Whole Spine Segmentation of T2-weighted MR images using a Two-Phase Approach to Multi-class Semantic and Instance Segmentation
Hendrik Möller, Robert Graf, Joachim Schmitt, Benjamin Keinert, Matan Atad, Anjany Sekuboyina, Felix Streckenbach, Hanna Schön, Florian Kofler, Thomas Kroencke, Stefanie Bette, Stefan Willich, Thomas Keil, Thoralf Niendorf, Tobias Pischon, Beate Endemann, Bjoern Menze, Daniel Rueckert, Jan S. Kirschke