Superpixel Method
Superpixel methods aim to oversegment images into perceptually meaningful groups of pixels (superpixels), simplifying image data while preserving important boundaries and reducing computational load. Current research focuses on adapting superpixel algorithms for diverse image types (e.g., hyperspectral, spherical, satellite) and integrating them with deep learning architectures, such as convolutional neural networks and graph neural networks, to improve segmentation accuracy and efficiency. These advancements have significant implications for various applications, including remote sensing, medical image analysis, and object detection, by enhancing the performance and scalability of image processing tasks.
Papers
Point Label Aware Superpixels for Multi-species Segmentation of Underwater Imagery
Scarlett Raine, Ross Marchant, Brano Kusy, Frederic Maire, Tobias Fischer
A Dual Neighborhood Hypergraph Neural Network for Change Detection in VHR Remote Sensing Images
Junzheng Wu, Ruigang Fu, Qiang Liu, Weiping Ni, Kenan Cheng, Biao Li, Yuli Sun