Generation of Pedestrian Pose Structures using Generative Adversarial Networks

James Spooner, Madeline Cheah, V. Palade, S. Kanarachos, A. Daneshkhah
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引用次数: 1

Abstract

The safety of vulnerable road users is of paramount importance as transport moves towards fully automated driving. The richness of real-world data required for testing autonomous vehicles is limited, and furthermore, the available data does not have a fair representation of different scenarios and rare events. This work presents a novel approach for the generation of human pose structures, specifically the type of pose structures that would appear to be in pedestrian scenarios. The results show that the generated pedestrian structures are indistinguishable from the ground truth pose structures when classified using a suitably trained classifier. The paper demonstrates that the Generative Adversarial Network architecture can be used to create realistic new training samples, and, in future, new pedestrian events.
使用生成对抗网络生成行人姿态结构
随着交通运输向全自动驾驶方向发展,弱势道路使用者的安全至关重要。测试自动驾驶汽车所需的真实世界数据的丰富性是有限的,此外,可用的数据不能公平地代表不同的场景和罕见事件。这项工作提出了一种新的方法来生成人体姿势结构,特别是在行人场景中出现的姿势结构类型。结果表明,当使用适当训练的分类器进行分类时,生成的行人结构与地面真位姿结构无法区分。本文证明了生成对抗网络架构可用于创建逼真的新训练样本,并在未来创建新的行人事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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