用于人体活动识别的1D CNN模型评估与优化

Rafael Schild Reusch, L. Juracy, Fernando Gehm Moraes
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引用次数: 1

摘要

人工智能(AI)解决复杂的任务,如人类活动和语音识别。精度驱动的人工智能模型在资源稀缺系统中的适用性方面带来了新的挑战。在人类活动识别(HAR)中,最先进的技术提出了使用复杂的多层LSTM网络的建议。文献表明,LSTM网络适合于处理时间序列数据,这是HAR的一个关键特征。文献中的大多数工作都在寻求尽可能好的准确性,很少评估运行推理阶段的总体计算成本。在HAR中,可穿戴传感器等低功耗物联网设备被广泛用作数据收集设备,但在这些设备中部署人工智能技术的努力很少。大多数研究建议使用边缘设备或云计算架构的方法,其中终端设备的任务是收集数据并将其发送到边缘/云设备。大多数语音助手,如亚马逊的Alexa和谷歌,都使用这种架构。在现实应用程序中,主要是在医疗保健行业,仅依赖边缘/云设备是不可接受的,因为这些设备并非总是可用或可访问。这项工作的目的是用一个更简单的结构来评估卷积网络的准确性,使用1D卷积,用于HAR。使用具有更简单网络架构的网络的动机是将它们嵌入功率和内存受限的设备的可能性。
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Assessment and Optimization of 1D CNN Model for Human Activity Recognition
Artificial Intelligence (AI) solves complex tasks like human activity and speech recognition. Accuracy-driven AI models introduced new challenges related to their applicability in resource-scarce systems. In Human Activity Recognition (HAR), state-of-the-art presents proposals using complex multi-layer LSTM networks. The literature states that LSTM networks are suitable for treating temporal-series data, a key feature for HAR. Most works in the literature seek the best possible accuracy, with few evaluating the overall computational cost to run the inference phase. In HAR, low-power IoT devices such as wearable sensors are widely used as data-gathering devices, but little effort is made to deploy AI technology in these devices. Most studies suggest an approach using edge devices or cloud computing architectures, where the end-device task is to gather and send data to the edge/cloud device. Most voice assistants, such as Amazon's Alexa and Google, use this architecture. In real-life applications, mainly in the healthcare industry, relying only on edge/cloud devices is not acceptable since these devices are not always available or reachable. The objective of this work is to evaluate the accuracy of convolutional networks with a simpler architecture, using 1D convolution, for HAR. The motivation for using networks with simpler network architectures is the possibility of embedding them in power- and memory-constrained devices.
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