Deep Learning Networks for Eating and Drinking Recognition based on Smartwatch Sensors

S. Mekruksavanich, Ponnipa Jantawong, Narit Hnoohom, A. Jitpattanakul
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引用次数: 2

Abstract

Smartwatches are becoming more popular for recognizing and monitoring human actions in everyday life. These wearable devices are equipped with various IMU sensors for ubiquitous data processing and recording of human physical activity data. Sensor-based human activity recognition (HAR) has risen to the top of the list of the most active research topic due to its widely real-life applications in various practical domains, such as healthcare monitoring, sports and exercise tracking, and misbehavior prevention. Many machine learning and deep learning approaches have been recently proposed to solve the problem of human activity recognition, focusing on activities of daily living. However, an exciting and challenging HAR topic deals with more complex human activities such as eating-related activities. This paper proposes a sensor-based HAR framework using data from eating-related activities recorded by a smartwatch sensor. In this framework, five d eep learning networks (CNN, LSTM, BiLSTM, Stacked LSTM, CNN-LSTM, and LSTM-CNN) are evaluated for their recognition of eating-related activities. To ensure the model’s dependability, data from eating-related activities on the standard publicly available dataset WISDM-HARB are utilized to evaluate the proposed framework using state-of-the-art metrics: accuracy and confusion matrices. Experiment findings demonstrate that the S tacked LSTM model outperforms other deep learning models, achieving an accuracy of 97.37%.
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基于智能手表传感器的饮食识别深度学习网络
智能手表在识别和监控日常生活中的人类行为方面越来越受欢迎。这些可穿戴设备配备了各种IMU传感器,用于无处不在的数据处理和人类身体活动数据的记录。基于传感器的人体活动识别(HAR)已成为最活跃的研究课题之一,因为它在各种实际领域中得到了广泛的应用,如医疗监测、运动和运动跟踪、行为不当预防等。最近提出了许多机器学习和深度学习方法来解决人类活动识别问题,重点关注日常生活活动。然而,一个令人兴奋和具有挑战性的HAR主题涉及更复杂的人类活动,如与饮食有关的活动。本文提出了一个基于传感器的HAR框架,使用智能手表传感器记录的与饮食相关的活动数据。在这个框架中,评估了五维深度学习网络(CNN、LSTM、BiLSTM、Stacked LSTM、CNN-LSTM和LSTM-CNN)对饮食相关活动的识别能力。为了确保模型的可靠性,研究人员利用标准公开数据集WISDM-HARB上与饮食相关的活动数据,使用最先进的指标:准确性和混淆矩阵来评估拟议的框架。实验结果表明,S - tacked LSTM模型优于其他深度学习模型,准确率达到97.37%。
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