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首页> 外文期刊>IEEE Sensors Letters >A Customized Convolutional Neural Network Model Integrated With Acceleration-Based Smart Insole Toward Personalized Foot Gesture Recognition
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A Customized Convolutional Neural Network Model Integrated With Acceleration-Based Smart Insole Toward Personalized Foot Gesture Recognition

机译:一种定制的卷积神经网络模型,集成了基于加速的智能鞋垫对个性化的脚掌识别

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摘要

Foot gestures play an important role in human machine interface and also indicate the lower-limb motor functionalities. Lately, machine learning models have been integrated with different kinds of wearable devices for foot gesture recognition. However, most existing wearable devices lack of robustness and facileness and existing machine learning models suffer from inconsistent recognition accuracy due to limited and unbalanced training datasets and, therefore, do not work well for new users. To address this, a customized convolutional neural network model architecture is designed, and strategies for achieving personalized models are presented, considering potential fairness sensitive attributes of a diverse training group, including age, gender, body mass index (defined by height and weight), shoe size, and health conditions. The proposed model to be embodied into a flexible smart insole with only two accelerometers aims to recognize four types of foot gestures—toe tapping, heel tapping, foot kicking, and foot stepping–in a sitting posture at high accuracies. After the hyperparameters are well-tuned, average recognition accuracy reaches 92% in training sets, 88.05% in validation sets, 85.27% in test sets, and 83.09% in fivefold cross-validation. The evaluation results from both in-group and leave-one-subject-out show that our unified model is easily transformable for individual uses by further fine-tuning the key hyperparameters.
机译:足手势在人机界面中发挥着重要作用,并指示下肢电机功能。最近,机器学习模型已与不同种类的可穿戴设备集成,用于足部手势识别。然而,由于有限和不平衡的训练数据集,大多数现有的可穿戴设备缺乏鲁棒性和舒适性和现有机器学习模型的识别准确性,因此,对新用户不起作用。为了解决此问题,设计了一种定制的卷积神经网络模型架构,并介绍了实现个性化模型的策略,考虑到各种培训组的潜在公平敏感属性,包括年龄,性别,体重指数(由身高和体重定义),鞋尺寸和健康状况。所提出的模型以柔性智能鞋垫体现为只有两个加速度计的旨在识别四种类型的脚手势 - 脚趾敲击,脚跟敲击,脚踢,高精度踩踏脚步。在高级参数经过良好调整之后,培训集中的平均识别精度达到92%,验证集中的88.05%,测试集85.27%,五倍交叉验证中的83.09%。本组和休假的评估结果表明,通过进一步微调密钥封面,我们的统一模型很容易变换。

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