Common Methods of Image Panoptic Segmentation Based on Deep Learning

Congcong Wang
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Abstract

In recent years, with the rapid development of deep learning technology and its wide application in the field of computer vision, various image understanding tasks including semantic segmentation and instance segmentation have made great progress, and people's further demand for image understanding has spawned a more comprehensive task image panoptic segmentation. Image panoptic segmentation can be seen as the combination of semantic segmentation and instance segmentation. For uncountable object categories (called stuff), the pixel category is distinguished. For countable object categories (called things), not only the semantic category of the target is recognized, but also each instance is distinguished. This task can provide more comprehensive scene information, and can be widely used in the understanding of various natural scenes. This paper investigate the commonly used panoptic segmentation methods, including the basic shared feature extraction method, the information combination method between semantic segmentation and instance segmentation sub-tasks, and the learnable method to remove the overlap between instances. This paper also summarize the commonly used panoptic segmentation datasets and the evaluation metrics, then the experimental performance evaluation results of various methods on commonly used datasets are showed. Finally, this paper summarize the general direction of panoptic segmentation, and predict the future research direction.
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基于深度学习的图像全视分割的常用方法
近年来,随着深度学习技术的快速发展及其在计算机视觉领域的广泛应用,包括语义分割和实例分割在内的各种图像理解任务都取得了长足的进步,人们对图像理解的进一步需求催生了更全面的任务图像全景分割。图像全光学分割可以看作是语义分割和实例分割的结合。对于不可数的对象类别(称为物质),区分像素类别。对于可数的对象类别(称为事物),不仅要识别目标的语义类别,而且要区分每个实例。该任务可以提供更全面的场景信息,可以广泛应用于对各种自然场景的理解。本文研究了常用的泛视分割方法,包括基本共享特征提取方法、语义分割子任务与实例分割子任务的信息组合方法以及去除实例间重叠的可学习方法。总结了常用的全光分割数据集和评价指标,给出了各种方法在常用数据集上的实验性能评价结果。最后,对全视分割的研究方向进行了总结,并对未来的研究方向进行了展望。
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