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Deep 3D Body Landmarks Estimation for Smart Garments Design

机译:智能服装设计的深度3D身体地标估计

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We propose a framework to automatically extract body landmarks and related measurements from 3D body scans and replace manual body shape estimation in fitting smart garments. Our framework comprises five steps: 3D scan acquisition and segmentation, 2D image conversion, extraction of body landmarks using a Convolutional Neural Network (CNN), back projection and mapping of extracted landmarks to 3D space, body measurements estimation and tailored garment generation. We trained and tested the algorithm on 3000 synthetic 3D body models and estimated body landmarks required for T-Shirt design. The results show that the algorithm can successfully extract 3D body landmarks of the upper front with a mean error of 1.01 cm and of the upper back with a mean error of 0.78 cm. We validated the framework the framework in automated tailoring of an electrocardiogram (ECG)-monitoring shirt based on the predicted landmarks. The ECG shirt can fit all evaluated body shapes with an average electrode-skin distance of 0.61 cm.
机译:我们提出了一个框架,自动提取来自3D体扫描的身体地标和相关测量,并在拟合智能服装中替换手动体型估计。我们的框架包括五个步骤:3D扫描采集和分割,2D图像转换,使用卷积神经网络(CNN)提取身体地标(CNN),后投影和提取的地标对3D空间的映射,身体测量估计和定制服装生成。我们培训并测试了3000种合成3D体型和T恤设计所需的估计身体地标算法。结果表明,该算法可以成功提取上部的3D身体地标,平均误差为1.01厘米,上背部的平均误差为0.78厘米。我们验证了基于预测的地标的心电图(ECG)-Menoritoring衬衫自动剪裁框架的框架。 ECG衬衫可以适合所有评估的身体形状,平均电极 - 皮肤距离为0.61厘米。

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