{"title":"TinyPuff: Automated design of Tiny Smoking Puff Classifiers for Body Worn Devices","authors":"Shalini Mukhopadhyay, Swarnava Dey, Avik Ghose","doi":"10.1145/3597061.3597259","DOIUrl":null,"url":null,"abstract":"Smoking is a significant cause of death and deterioration of health worldwide, affecting active and passive smokers. Cessation of smoking contributes to an essential health and wellness application owing to the broad range of health problems such as cancer, hypertension, and several cardiopulmonary diseases. Personalized smoking-cessation applications can be very effective in helping users to stop smoking if there are detections and interventions done at the right time. This requires real-time detection of smoking puffs. Such applications are made feasible by day-long monitoring and smoking puff detection from unobtrusive devices such as wearables. This paper proposes a deep inference technique for the real-time detection of smoking puffs on a wearable device. We show that a simple, sequential Convolutional Neural Network (CNN) using only 6-axis Inertial signals can be utilized in place of complex and resource-consuming Deep Learning models. The accuracy achieved is comparable to State-of-the-Art techniques with an F1 score of 0.81, although the model size is tiny - 114 kB. Such small models can be deployed on the lowest configuration hardware platforms, achieving accurate but high-speed, low-power inference on conventional smartwatches. We ensure that the auto-designed models are directly compatible with resource-constrained platforms such as TensorFlow Lite and TensorFlow Lite for Microcontrollers (TFLM) without requiring further use of model reduction and optimization techniques. Our proposed approach will allow affordable wearable device manufacturers to run smoking detection on their devices, as it is tiny enough to fit TinyML platforms and is only dependent on IMU sensors that are universally available.","PeriodicalId":126710,"journal":{"name":"Proceedings of the 8th Workshop on Body-Centric Computing Systems","volume":"55 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-06-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Proceedings of the 8th Workshop on Body-Centric Computing Systems","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1145/3597061.3597259","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 2
Abstract
Smoking is a significant cause of death and deterioration of health worldwide, affecting active and passive smokers. Cessation of smoking contributes to an essential health and wellness application owing to the broad range of health problems such as cancer, hypertension, and several cardiopulmonary diseases. Personalized smoking-cessation applications can be very effective in helping users to stop smoking if there are detections and interventions done at the right time. This requires real-time detection of smoking puffs. Such applications are made feasible by day-long monitoring and smoking puff detection from unobtrusive devices such as wearables. This paper proposes a deep inference technique for the real-time detection of smoking puffs on a wearable device. We show that a simple, sequential Convolutional Neural Network (CNN) using only 6-axis Inertial signals can be utilized in place of complex and resource-consuming Deep Learning models. The accuracy achieved is comparable to State-of-the-Art techniques with an F1 score of 0.81, although the model size is tiny - 114 kB. Such small models can be deployed on the lowest configuration hardware platforms, achieving accurate but high-speed, low-power inference on conventional smartwatches. We ensure that the auto-designed models are directly compatible with resource-constrained platforms such as TensorFlow Lite and TensorFlow Lite for Microcontrollers (TFLM) without requiring further use of model reduction and optimization techniques. Our proposed approach will allow affordable wearable device manufacturers to run smoking detection on their devices, as it is tiny enough to fit TinyML platforms and is only dependent on IMU sensors that are universally available.
吸烟是世界范围内导致死亡和健康恶化的一个重要原因,对主动吸烟者和被动吸烟者都有影响。由于癌症、高血压和几种心肺疾病等广泛的健康问题,戒烟有助于基本的健康和保健应用。如果在适当的时候进行检测和干预,个性化的戒烟应用程序可以非常有效地帮助用户戒烟。这需要实时检测烟雾。这样的应用是可行的,全天监测和烟雾检测从不显眼的设备,如可穿戴设备。本文提出了一种用于可穿戴设备上烟雾实时检测的深度推理技术。我们展示了一个简单的、顺序的卷积神经网络(CNN),它只使用6轴惯性信号,可以用来代替复杂的、消耗资源的深度学习模型。尽管模型大小很小(114 kB),但所达到的精度与F1分数为0.81的最先进技术相当。这种小型模型可以部署在最低配置的硬件平台上,在传统智能手表上实现准确、高速、低功耗的推断。我们确保自动设计的模型直接兼容资源受限的平台,如TensorFlow Lite和TensorFlow Lite for微控制器(TFLM),而不需要进一步使用模型缩减和优化技术。我们提出的方法将允许负担得起的可穿戴设备制造商在他们的设备上运行吸烟检测,因为它足够小,适合TinyML平台,并且只依赖于普遍可用的IMU传感器。