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On-Device Deep Learning Inference for Efficient Activity Data Collection

机译:设备上深度学习推理可有效收集活动数据

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摘要

Labeling activity data is a central part of the design and evaluation of human activity recognition systems. The performance of the systems greatly depends on the quantity and “quality” of annotations; therefore, it is inevitable to rely on users and to keep them motivated to provide activity labels. While mobile and embedded devices are increasingly using deep learning models to infer user context, we propose to exploit on-device deep learning inference using a long short-term memory (LSTM)-based method to alleviate the labeling effort and ground truth data collection in activity recognition systems using smartphone sensors. The novel idea behind this is that estimated activities are used as feedback for motivating users to collect accurate activity labels. To enable us to perform evaluations, we conduct the experiments with two conditional methods. We compare the proposed method showing estimated activities using on-device deep learning inference with the traditional method showing sentences without estimated activities through smartphone notifications. By evaluating with the dataset gathered, the results show our proposed method has improvements in both data quality (i.e., the performance of a classification model) and data quantity (i.e., the number of data collected) that reflect our method could improve activity data collection, which can enhance human activity recognition systems. We discuss the results, limitations, challenges, and implications for on-device deep learning inference that support activity data collection. Also, we publish the preliminary dataset collected to the research community for activity recognition.
机译:标记活动数据是人类活动识别系统设计和评估的核心部分。系统的性能在很大程度上取决于注释的数量和“质量”。因此,不可避免地要依靠用户并保持他们提供活动标签的动力。当移动和嵌入式设备越来越多地使用深度学习模型来推断用户上下文时,我们建议使用基于长短期记忆(LSTM)的方法来利用设备上的深度学习推断,以减轻标签工作量和地面真相数据收集的难度。使用智能手机传感器的活动识别系统。这背后的新颖思想是,将估计的活动用作反馈,以激励用户收集准确的活动标签。为了使我们能够执行评估,我们使用两种条件方法进行实验。我们将使用设备上深度学习推理显示估计活动的提议方法与通过智能手机通知显示没有估计活动的句子的传统方法进行了比较。通过对收集的数据集进行评估,结果表明我们提出的方法在数据质量(即分类模型的性能)和数据量(即收集的数据数量)方面都有改进,反映出我们的方法可以改善活动数据收集,可以增强人类活动识别系统。我们讨论了支持活动数据收集的设备上深度学习推理的结果,局限性,挑战和含义。此外,我们还将收集的初步数据集发布给研究团体以进行活动识别。

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