Human shape estimation has become increasingly important both theoretically and practically, for instance, in 3D mesh estimation, distance garment production and computational forensics, to mention just a few examples. As a further specialization, \emph{Human Body Dimensions Estimation} (HBDE) focuses on estimating human body measurements like shoulder width or chest circumference from images or 3D meshes usually using supervised learning approaches. The main obstacle in this context is the data scarcity problem, as collecting this ground truth requires expensive and difficult procedures. This obstacle can be overcome by obtaining realistic human measurements from 3D human meshes. However, a) there are no well established methods to calculate HBDs from 3D meshes and b) there are no benchmarks to fairly compare results on the HBDE task. Our contribution is twofold. On the one hand, we present a method to calculate right and left arm length, shoulder width, and inseam (crotch height) from 3D meshes with focus on potential medical, virtual try-on and distance tailoring applications. On the other hand, we use four additional body dimensions calculated using recently published methods to assemble a set of eight body dimensions which we use as a supervision signal to our Neural Anthropometer: a convolutional neural network capable of estimating these dimensions. To assess the estimation, we train the Neural Anthropometer with synthetic images of 3D meshes, from which we calculated the HBDs and observed that the network's overall mean estimate error is $20.89$ mm (relative error of 2.84\%). The results we present are fully reproducible and establish a fair baseline for research on the task of HBDE, therefore enabling the community with a valuable method.
翻译:人类形状估计在理论上和实际上都变得日益重要,例如,在3D网目估计、远程服装制作和计算法医学中,仅举几个例子。作为进一步的专业化, \ emph{ 人体尺寸估计} (HBDE) 侧重于估计人体的测量,例如肩宽度或胸部宽度,或通常使用监督的学习方法对图像或3D网目进行胸部环绕。 这方面的主要障碍是数据稀缺问题, 因为收集这一地面真相需要昂贵和困难的程序。 通过从 3D 网目中获取现实的人体测量,这一障碍是可以克服的。 但是, a (a) 没有固定的方法从 3D 网目和b) 计算HB 尺寸。 (HB) 进一步专业化, 我们没有基准来比较HB 任务的结果。 一方面, 我们提出一种方法来计算右和左臂长度, 肩宽度, 而在3D网目中, 以可能的医学, 虚拟试试验和距离调整应用程序。 在另一边, 我们使用另外四个正值, 我们用最近公布的内线线线线网线估计的内, 用来计算出一个能测量测算的网络的模型的模型, 因此算了八维的深度。