Recognizing human locomotion intent and activities is important for controlling the wearable robots while walking in complex environments. However, human-robot interface signals are usually user-dependent, which causes that the classifier trained on source subjects performs poorly on new subjects. To address this issue, this paper designs the ensemble diverse hypotheses and knowledge distillation (EDHKD) method to realize unsupervised cross-subject adaptation. EDH mitigates the divergence between labeled data of source subjects and unlabeled data of target subjects to accurately classify the locomotion modes of target subjects without labeling data. Compared to previous domain adaptation methods based on the single learner, which may only learn a subset of features from input signals, EDH can learn diverse features by incorporating multiple diverse feature generators and thus increases the accuracy and decreases the variance of classifying target data, but it sacrifices the efficiency. To solve this problem, EDHKD (student) distills the knowledge from the EDH (teacher) to a single network to remain efficient and accurate. The performance of the EDHKD is theoretically proved and experimentally validated on a 2D moon dataset and two public human locomotion datasets. Experimental results show that the EDHKD outperforms all other methods. The EDHKD can classify target data with 96.9%, 94.4%, and 97.4% average accuracy on the above three datasets with a short computing time (1 ms). Compared to a benchmark (BM) method, the EDHKD increases 1.3% and 7.1% average accuracy for classifying the locomotion modes of target subjects. The EDHKD also stabilizes the learning curves. Therefore, the EDHKD is significant for increasing the generalization ability and efficiency of the human intent prediction and human activity recognition system, which will improve human-robot interactions.
翻译:在复杂环境中行走时,认识到人类运动的意图和活动对于控制可磨损机器人十分重要。然而,人类机器人接口信号通常取决于用户,这导致在源主题方面受过训练的分类员在新主题上表现不佳。为解决这一问题,本文件设计了混合的多种假设和知识蒸馏方法,以实现不受监督的跨子适应。EDH将源主题的标签数据与目标对象的未贴标签数据之间的差异缩小,以便准确分类目标对象的移动模式,而不给数据贴标签。与以前基于单一的服务器学习器的域调整方法相比,该方法可能只能从输入信号中学习一系列特征。为解决这一问题,本文件设计了各种混合的多种假设和知识蒸馏方法,目的是实现不受监督的跨子适应。 EDHD(图解) 将一般的源数据数据(教师) 和单个网络的知识(教师) 提升到保持效率和准确性。EDHD的性能表现,EDD. 提高ED.