移动设备上资源高效活动识别的深度学习模型转换

Sevda Ozge Bursa, Özlem Durmaz Incel, G. Alptekin
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引用次数: 3

摘要

移动和可穿戴传感器技术已逐渐将其可用性扩展到广泛的应用领域,从福祉到医疗保健。收集的数据量很快就会变得巨大,需要处理。这些耗费时间和资源的计算需要有效的分类和分析方法,而深度学习是一种很有前途的技术。然而,由于有限的电池电量、内存和计算单元等资源限制,在移动设备上训练和运行深度学习算法是具有挑战性的。在本文中,我们专注于评估四种不同深度架构在使用Tensorflow Lite平台进行优化时的性能,这些平台将部署在移动设备上,用于人类活动识别领域。我们使用了文献中的两个数据集(WISDM和MobiAct)并训练了深度学习算法。我们比较了原始模型在模型精度、模型大小和资源使用方面的性能,例如CPU、内存和能源使用,以及它们的优化版本。实验结果表明,与原始模型相比,优化后的模型尺寸和资源消耗显著减少。
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Transforming Deep Learning Models for Resource-Efficient Activity Recognition on Mobile Devices
Mobile and wearable sensor technologies have gradually extended their usability into a wide range of applications, from well-being to healthcare. The amount of collected data can quickly become immense to be processed. These time and resource-consuming computations require efficient methods of classification and analysis, where deep learning is a promising technique. However, it is challenging to train and run deep learning algorithms on mobile devices due to resource constraints, such as limited battery power, memory, and computation units. In this paper, we have focused on evaluating the performance of four different deep architectures when optimized with the Tensorflow Lite platform to be deployed on mobile devices in the field of human activity recognition. We have used two datasets from the literature (WISDM and MobiAct) and trained the deep learning algorithms. We have compared the performance of the original models in terms of model accuracy, model size, and resource usages, such as CPU, memory, and energy usage, with their optimized versions. As a result of the experiments, we observe that the model sizes and resource consumption were significantly reduced when the models are optimized compared to the original models.
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