Most 3D human mesh regressors are fully supervised with 3D pseudo-GT human model parameters and weakly supervised with GT 2D/3D joint coordinates as the 3D pseudo-GTs bring great performance gain. The 3D pseudo-GTs are obtained by annotators, systems that iteratively fit 3D human model parameters to GT 2D/3D joint coordinates of training sets in the pre-processing stage of the regressors. The fitted 3D parameters at the last fitting iteration become the 3D pseudo-GTs, used to fully supervise the regressors. Optimization-based annotators, such as SMPLify-X, have been widely used to obtain the 3D pseudo-GTs. However, they often produce wrong 3D pseudo-GTs as they fit the 3D parameters to GT of each sample independently. To overcome the limitation, we present NeuralAnnot, a neural network-based annotator. The main idea of NeuralAnnot is to employ a neural network-based regressor and dedicate it for the annotation. Assuming no 3D pseudo-GTs are available, NeuralAnnot is weakly supervised with GT 2D/3D joint coordinates of training sets. The testing results on the same training sets become 3D pseudo-GTs, used to fully supervise the regressors. We show that 3D pseudo-GTs of NeuralAnnot are highly beneficial to train the regressors. We made our 3D pseudo-GTs publicly available.
翻译:大多数 3D 人类网格递减器都配有 3D 假 GT 模型参数, 并配有 3D 2D/3D 联合坐标, 3D 假 GT 带来巨大的性能增益。 3D 假 GT 由注解器获取, 系统迭接3D 人类模型参数与 GT 2D/3D 在递减器预处理阶段的成套培训联合坐标相匹配。 安装的 3D 参数是 3D 假 GT 模型参数, 用于全面监督 递增器。 优化基于 GD 的辨别器, 如 SMPLIF- X 等基于优化的辨别器已被广泛用于获取 3D 伪GT 。 然而, 它们往往产生错误的 3D 假假的 3D 模拟 GTG 模型, 独立匹配 。 我们介绍 Neural Annot, 以神经网络为基础的说明器主要想法是使用一个基于 神经网络的逆向轨变换的网络, 将它用于说明。