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Multi-human Parsing with a Graph-based Generative Adversarial Model

机译:用基于图形的生成的对抗性模型的多人解析

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摘要

Human parsing is an important task in human-centric image understanding in computer vision and multimedia systems. However, most existing works on human parsing mainly tackle the single-person scenario, which deviates from real-world applications where multiple persons are present simultaneously with interaction and occlusion. To address such a challenging multi-human parsing problem, we introduce a novel multi-human parsing model named MI-I-Parser, which uses a graph-based generative adversarial model to address the challenges of close-person interaction and occlusion in multi-human parsing. To validate the effectiveness of the new model, we collect a new dataset named Multi-Human Parsing (MHP), which contains multiple persons with intensive person interaction and entanglement. Experiments on the new MHP dataset and existing datasets demonstrate that the proposed method is effective in addressing the multi-human parsing problem compared with existing solutions in the literature.
机译:人类解析是计算机视觉和多媒体系统中以人为本的图像理解的重要任务。 然而,人类解析的大多数现有工程主要解决单人的场景,其偏离了多人与交互和闭塞同时存在的现实世界应用。 为了解决如此挑战的多人解析问题,我们介绍了一个名为MI-I-PARSER的新型多人解析模型,它使用基于图的生成的对抗模型来解决多重 - 的亲密交互和闭塞的挑战 人类解析。 为了验证新模型的有效性,我们收集一个名为Multi-Lean Parsing(MHP)的新数据集,其中包含具有密集的人交互和纠缠的多人。 新的MHP数据集和现有数据集上的实验表明,与文献中的现有解决方案相比,所提出的方法有效地解决了多人解析问题。

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