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Deep Learning Whole Body Point Cloud Scans from a Single Depth Map

机译:深度学习整个身体点云扫描从一个深度图扫描

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Personalized knowledge about body shape has numerous applications in fashion and clothing, as well as in health monitoring. Whole body 3D scanning presents a relatively simple mechanism for individuals to obtain this information about themselves without needing much knowledge of anthropometry. With current implementations however, scanning devices are large, complex and expensive. In order to make such systems as accessible and widespread as possible, it is necessary to simplify the process and reduce their hardware requirements. Deep learning models have emerged as the leading method of tackling visual tasks, including various aspects of 3D reconstruction. In this paper we demonstrate that by leveraging deep learning it is possible to create very simple whole body scanners that only require a single input depth map to operate. We show that our presented model is able to produce whole body point clouds with an accuracy of 5.19 mm.
机译:关于车身形状的个性化知识在时装和服装中具有许多应用,以及健康监测。整个身体3D扫描为个人提供了一个相对简单的机制,以获得关于自己的信息,而无需多么了解人类测量。然而,利用电流实现,扫描设备大,复杂且昂贵。为了使这些系统尽可能地访问和广泛,有必要简化过程并降低其硬件要求。深入学习模型作为解决视觉任务的领先方法,包括三维重建的各个方面。在本文中,我们证明了通过利用深度学习,可以创建非常简单的全身扫描仪,只需要单个输入深度映射来运行。我们表明我们所提出的模型能够以5.19毫米的精度制作整个体点云。

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