This research aims to study a self-supervised 3D clothing reconstruction method, which recovers the geometry shape and texture of human clothing from a single image. Compared with existing methods, we observe that three primary challenges remain: (1) 3D ground-truth meshes of clothing are usually inaccessible due to annotation difficulties and time costs; (2) Conventional template-based methods are limited to modeling non-rigid objects, e.g., handbags and dresses, which are common in fashion images; (3) The inherent ambiguity compromises the model training, such as the dilemma between a large shape with a remote camera or a small shape with a close camera. In an attempt to address the above limitations, we propose a causality-aware self-supervised learning method to adaptively reconstruct 3D non-rigid objects from 2D images without 3D annotations. In particular, to solve the inherent ambiguity among four implicit variables, i.e., camera position, shape, texture, and illumination, we introduce an explainable structural causal map (SCM) to build our model. The proposed model structure follows the spirit of the causal map, which explicitly considers the prior template in the camera estimation and shape prediction. When optimization, the causality intervention tool, i.e., two expectation-maximization loops, is deeply embedded in our algorithm to (1) disentangle four encoders and (2) facilitate the prior template. Extensive experiments on two 2D fashion benchmarks (ATR and Market-HQ) show that the proposed method could yield high-fidelity 3D reconstruction. Furthermore, we also verify the scalability of the proposed method on a fine-grained bird dataset, i.e., CUB. The code is available at https://github.com/layumi/ 3D-Magic-Mirror .
翻译:该研究旨在研究一种自我监督的3D服装重建方法,这种方法从单一图像中恢复了人类服装的几何形状和纹理。与现有方法相比,我们观察到仍然存在三大挑战:(1) 由于笔记困难和时间成本,通常无法获取3D的3D地真真真真真假服装;(2) 基于常规模板的方法仅限于建模非硬性物体,例如,在时装图像中常见的手袋和服装;(3) 内在的模糊性影响了模型培训,例如,使用远程相机的大形状或使用近距离相机的小形状之间的两难境地。 为了解决上述局限性,我们建议采用一种因果性认知的自我监督学习方法,从2D的图像中重建3D非硬性对象,但没有3D说明时间成本;(2) 常规基于常规的方法仅限于解决四个隐含变量之间的内在模糊性,即:摄像头位置、形状、纹理、纹理和明晰度,我们引入了一种可解释的结构因果性图(SCMM) 。拟议的模型结构结构遵循了两个摄像机的精度、预感测、预估测、预估测前结果、预估测、预估测、预测、预测、预测、预测、预测的货币、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预测、预算、预算、预估、预测、预测、预的4的4的4的4的内变、预估、预测、预测。</s>