Human motion prediction aims to predict future 3D skeletal sequences by giving a limited human motion as inputs. Two popular methods, recurrent neural networks and feed-forward deep networks, are able to predict rough motion trend, but motion details such as limb movement may be lost. To predict more accurate future human motion, we propose an Adversarial Refinement Network (ARNet) following a simple yet effective coarse-to-fine mechanism with novel adversarial error augmentation. Specifically, we take both the historical motion sequences and coarse prediction as input of our cascaded refinement network to predict refined human motion and strengthen the refinement network with adversarial error augmentation. During training, we deliberately introduce the error distribution by learning through the adversarial mechanism among different subjects. In testing, our cascaded refinement network alleviates the prediction error from the coarse predictor resulting in a finer prediction robustly. This adversarial error augmentation provides rich error cases as input to our refinement network, leading to better generalization performance on the testing dataset. We conduct extensive experiments on three standard benchmark datasets and show that our proposed ARNet outperforms other state-of-the-art methods, especially on challenging aperiodic actions in both short-term and long-term predictions.
翻译:人类运动预测旨在预测未来的3D骨骼序列,方法是以有限的人类运动作为投入。两种流行的方法,即经常的神经网络和前进的深网,都能够预测粗略运动趋势,但四肢运动等运动细节可能会丢失。为了更准确地预测未来人类运动,我们提议采用简单有效的粗略至软体改进网络(ARNet)机制,加上新的对抗性差错增加。具体地说,我们把历史运动序列和粗略预测作为我们分层精细化网络的投入,以预测精细的人类运动和加强精细化网络,同时增加对抗性错误。在培训期间,我们有意通过在不同主体之间学习对抗性机制来推广错误分布。在测试中,我们分层改进网络从粗糙的预测中减轻了预测错误,导致精确的预测。这种对抗性错误增加提供了丰富的错误案例,作为我们精细化网络的投入,导致测试数据集的更普及性表现。我们在三个标准基准数据集上进行广泛的实验,并显示我们提议的ARNet在短期和长期预测中都比其他的短期行动具有挑战性。