深度学习拟人化3D点云从单一深度地图相机视点

Nolan Lunscher, J. Zelek
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引用次数: 5

摘要

在鞋类方面,合脚高度依赖于脚型,而这并不能完全由鞋码反映出来。扫描仪可用于获取更好的尺寸信息,并允许更个性化的鞋子匹配,然而,当扫描一个对象时,通常需要许多图像进行重建。在给定一个输入视图的情况下,可以利用诸如了解视图中对象类型之类的语义来确定完整的3D形状。深度学习方法已被证明能够从高度对称的物体(如家具和车辆)的有限输入中重建3D形状。我们将深度学习方法应用于足部扫描领域,并提出了一种从单个输入深度图重建三维点云的方法。拟人化的身体部位可能具有挑战性,因为它们的形状不规则,难以参数化和有限的对称性。我们训练了一个基于视图合成的网络,并表明我们的方法可以从单个输入深度图产生精度为1.55 mm的足部扫描。
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Deep Learning Anthropomorphic 3D Point Clouds from a Single Depth Map Camera Viewpoint
In footwear, fit is highly dependent on foot shape, which is not fully captured by shoe size. Scanners can be used to acquire better sizing information and allow for more personalized footwear matching, however when scanning an object, many images are usually needed for reconstruction. Semantics such as knowing the kind of object in view can be leveraged to determine the full 3D shape given only one input view. Deep learning methods have been shown to be able to reconstruct 3D shape from limited inputs in highly symmetrical objects such as furniture and vehicles. We apply a deep learning approach to the domain of foot scanning, and present a method to reconstruct a 3D point cloud from a single input depth map. Anthropomorphic body parts can be challenging due to their irregular shapes, difficulty for parameterizing and limited symmetries. We train a view synthesis based network and show that our method can produce foot scans with accuracies of 1.55 mm from a single input depth map.
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