论文标题
人体测量估计与对抗性增强
Human Body Measurement Estimation with Adversarial Augmentation
论文作者
论文摘要
我们提出了一个人体测量网络(BMNET),用于估算剪影图像对人体形状的3D拟人化测量。 BMNET的培训是对来自真实人类受试者的数据进行的,并通过一种新型的对抗体模拟器(ABS)进行了增强,该模拟器(ABS)发现并综合了具有挑战性的身体形状。 ABS基于皮肤多erser线性(SMPL)身体模型,旨在相对于潜在的SMPL形状参数,旨在最大化BMNET测量预测误差。相对于这些参数,ABS是完全可区分的,并且通过循环中的BMNET反向传播进行了训练的端到端。实验表明,ABS有效地发现了对抗性实例,例如具有极端体重指数(BMI)的身体,与BMNET训练集中极端BMI体的稀有性一致。因此,ABS能够揭示训练数据中的差距和预测代表性不足的身体形状的潜在失败。结果表明,与没有增强或随机体形采样相比,具有ABS的训练BMNET提高了真实身体的测量预测准确性高达10%。此外,我们的方法显着优于SOTA测量估计方法高达3倍。最后,我们释放了Bodym,这是第一个具有挑战性的大型照片剪影数据集和对真实人类受试者的身体测量值,以进一步促进该领域的研究。项目网站:https://adversarialbodysim.github.io
We present a Body Measurement network (BMnet) for estimating 3D anthropomorphic measurements of the human body shape from silhouette images. Training of BMnet is performed on data from real human subjects, and augmented with a novel adversarial body simulator (ABS) that finds and synthesizes challenging body shapes. ABS is based on the skinned multiperson linear (SMPL) body model, and aims to maximize BMnet measurement prediction error with respect to latent SMPL shape parameters. ABS is fully differentiable with respect to these parameters, and trained end-to-end via backpropagation with BMnet in the loop. Experiments show that ABS effectively discovers adversarial examples, such as bodies with extreme body mass indices (BMI), consistent with the rarity of extreme-BMI bodies in BMnet's training set. Thus ABS is able to reveal gaps in training data and potential failures in predicting under-represented body shapes. Results show that training BMnet with ABS improves measurement prediction accuracy on real bodies by up to 10%, when compared to no augmentation or random body shape sampling. Furthermore, our method significantly outperforms SOTA measurement estimation methods by as much as 3x. Finally, we release BodyM, the first challenging, large-scale dataset of photo silhouettes and body measurements of real human subjects, to further promote research in this area. Project website: https://adversarialbodysim.github.io