Transformer-Based Visual Segmentation: A Survey

分割 计算机科学 人工智能 卷积神经网络 深度学习 变压器 建筑 点云 图像分割 基于分割的对象分类 尺度空间分割 计算机视觉 机器学习 工程类 地理 考古 电压 电气工程
作者
Xiangtai Li,Henghui Ding,Wenwei Zhang,Haobo Yuan,Jiangmiao Pang,Guangliang Cheng,Kai Chen,Ziwei Liu,Chen Change Loy
出处
期刊:Cornell University - arXiv 被引量:15
标识
DOI:10.48550/arxiv.2304.09854
摘要

Visual segmentation seeks to partition images, video frames, or point clouds into multiple segments or groups. This technique has numerous real-world applications, such as autonomous driving, image editing, robot sensing, and medical analysis. Over the past decade, deep learning-based methods have made remarkable strides in this area. Recently, transformers, a type of neural network based on self-attention originally designed for natural language processing, have considerably surpassed previous convolutional or recurrent approaches in various vision processing tasks. Specifically, vision transformers offer robust, unified, and even simpler solutions for various segmentation tasks. This survey provides a thorough overview of transformer-based visual segmentation, summarizing recent advancements. We first review the background, encompassing problem definitions, datasets, and prior convolutional methods. Next, we summarize a meta-architecture that unifies all recent transformer-based approaches. Based on this meta-architecture, we examine various method designs, including modifications to the meta-architecture and associated applications. We also present several closely related settings, including 3D point cloud segmentation, foundation model tuning, domain-aware segmentation, efficient segmentation, and medical segmentation. Additionally, we compile and re-evaluate the reviewed methods on several well-established datasets. Finally, we identify open challenges in this field and propose directions for future research. The project page can be found at https://github.com/lxtGH/Awesome-Segmentation-With-Transformer. We will also continually monitor developments in this rapidly evolving field.
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