基于变压器的视觉分割:一项调查

Xiangtai Li, Henghui Ding, Haobo Yuan, Wenwei Zhang, Jiangmiao Pang, Guangliang Cheng, Kai Chen, Ziwei Liu, Chen Change Loy
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引用次数: 0

摘要

视觉分割旨在将图像、视频帧或点云分割成多个片段或组。这项技术在现实世界中应用广泛,如自动驾驶、图像编辑、机器人传感和医学分析等。过去十年来,基于深度学习的方法在这一领域取得了显著进展。最近,变换器(一种基于自我注意的神经网络,最初设计用于自然语言处理)在各种视觉处理任务中大大超过了以前的卷积或递归方法。具体来说,视觉变换器为各种分割任务提供了稳健、统一甚至更简单的解决方案。本调查全面概述了基于变换器的视觉分割,并总结了最新进展。我们首先回顾了背景情况,包括问题定义、数据集和先前的卷积方法。接下来,我们总结了一种元架构,它统一了所有最新的基于变换器的方法。在此元架构的基础上,我们研究了各种方法设计,包括对元架构的修改和相关应用。我们还介绍了几个特定的子领域,包括三维点云分割、基础模型调整、领域感知分割、高效分割和医疗分割。此外,我们还在几个成熟的数据集上汇编并重新评估了已评审过的方法。最后,我们确定了这一领域的挑战,并提出了未来的研究方向。项目网页:https://github.com/lxtGH/Awesome-Segmentation-With-Transformer。
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Transformer-Based Visual Segmentation: A Survey.

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 specific subfields, 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.

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