Scene Parsing through ADE20K Dataset

Bolei Zhou, Hang Zhao, Xavier Puig, S. Fidler, Adela Barriuso, A. Torralba
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引用次数: 2156

Abstract

Scene parsing, or recognizing and segmenting objects and stuff in an image, is one of the key problems in computer vision. Despite the communitys efforts in data collection, there are still few image datasets covering a wide range of scenes and object categories with dense and detailed annotations for scene parsing. In this paper, we introduce and analyze the ADE20K dataset, spanning diverse annotations of scenes, objects, parts of objects, and in some cases even parts of parts. A scene parsing benchmark is built upon the ADE20K with 150 object and stuff classes included. Several segmentation baseline models are evaluated on the benchmark. A novel network design called Cascade Segmentation Module is proposed to parse a scene into stuff, objects, and object parts in a cascade and improve over the baselines. We further show that the trained scene parsing networks can lead to applications such as image content removal and scene synthesis1.
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通过ADE20K数据集进行场景解析
场景解析,或识别和分割图像中的物体和材料,是计算机视觉的关键问题之一。尽管社区在数据收集方面做出了努力,但仍然很少有涵盖广泛场景和对象类别的图像数据集具有密集和详细的场景解析注释。在本文中,我们介绍并分析了ADE20K数据集,该数据集涵盖了场景、对象、对象的部分以及某些情况下甚至部分的部分的各种注释。场景解析基准是建立在ADE20K上的,包含150个对象和材料类。在基准上对几种分割基线模型进行了评估。提出了一种新的网络设计,称为级联分割模块,将场景解析为级联的材料,对象和对象部分,并在基线上进行改进。我们进一步证明,经过训练的场景解析网络可以用于图像内容去除和场景合成等应用。
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