Exoskeleton-Based Multimodal Action and Movement Recognition: Identifying and Developing the Optimal Boosted Learning Approach

Nirmalya Thakur, C. Han
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引用次数: 4

Abstract

This paper makes two scientific contributions to the field of exoskeleton-based action and movement recognition. First, it presents a novel machine learning and pattern recognition-based framework that can detect a wide range of actions and movements - walking, walking upstairs, walking downstairs, sitting, standing, lying, stand to sit, sit to stand, sit to lie, lie to sit, stand to lie, and lie to stand, with an overall accuracy of 82.63%. Second, it presents a comprehensive comparative study of different learning approaches - Random Forest, Artificial Neural Network, Decision Tree, Multiway Decision Tree, Support Vector Machine, k-NN, Gradient Boosted Trees, Decision Stump, AutoMLP, Linear Regression, Vector Linear Regression, Random Tree, Naïve Bayes, Naïve Bayes (Kernel), Linear Discriminant Analysis, Quadratic Discriminant Analysis, and Deep Learning applied to this framework. The performance of each of these learning approaches was boosted by using the AdaBoost algorithm, and the Cross Validation approach was used for training and testing. The results show that in boosted form, the k-NN classifier outperforms all the other boosted learning approaches and is, therefore, the optimal learning method for this purpose. The results presented and discussed uphold the importance of this work to contribute towards augmenting the abilities of exoskeleton-based assisted and independent living of the elderly in the future of Internet of Things-based living environments, such as Smart Homes. As a specific use case, we also discuss how the findings of our work are relevant for augmenting the capabilities of the Hybrid Assistive Limb exoskeleton, a highly functional lower limb exoskeleton.
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基于外骨骼的多模态动作和运动识别:识别和开发最佳的增强学习方法
本文在基于外骨骼的动作和运动识别领域做出了两项科学贡献。首先,它提出了一种新颖的基于机器学习和模式识别的框架,可以检测各种各样的动作和动作——走路、上楼、下楼、坐着、站着、躺着、站着坐着、坐着坐着、躺着坐着、站着躺着、站着躺着、躺着站着,总体准确率为82.63%。其次,它提出了不同的学习方法的全面比较研究-随机森林,人工神经网络,决策树,多路决策树,支持向量机,k-NN,梯度提升树,决策树桩,AutoMLP,线性回归,向量线性回归,随机树,Naïve贝叶斯,Naïve贝叶斯(核),线性判别分析,二次判别分析和深度学习应用于该框架。使用AdaBoost算法提高了每种学习方法的性能,并使用交叉验证方法进行训练和测试。结果表明,在增强形式下,k-NN分类器优于所有其他增强学习方法,因此是用于此目的的最佳学习方法。提出和讨论的结果支持了这项工作的重要性,有助于在未来基于物联网的生活环境中增强老年人的外骨骼辅助和独立生活能力,例如智能家居。作为一个具体的用例,我们还讨论了我们的研究结果如何与增强混合辅助肢体外骨骼(一种功能强大的下肢外骨骼)的能力相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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