基于机器学习的智能医疗保健系统框架

A. Zahin, L. Tan, R. Hu
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引用次数: 1

摘要

在本文中,我们为智能医疗系统提出了一个新的框架,其中我们采用压缩感知(CS)和最先进的基于机器学习的去噪器的组合以及乘法器(ADMM)结构的交替方向。由于ADMM的模块化结构,这种集成大大简化了低复杂度编码器的软件实现。此外,我们专注于从图像流中检测跌落动作。因此,本研究的主要目的是尽可能清晰地重建图像,从而有助于训练后分类器的检测步骤。对于这种高效的智能健康监测框架,我们采用训练好的二元卷积神经网络(CNN)分类器作为跌倒动作分类器,因为该方案是监测场景的一部分。在该场景中,我们对图像进行处理,对图像进行压缩、传输和重构。实验结果表明,与传统方法相比,该方法对网络参数的影响显著。
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A Machine Learning Based Framework for the Smart Healthcare System
In this paper, we propose a novel framework for the smart healthcare system, where we employ the compressed sensing (CS) and the combination of the state-of-the-art machine learning based denoiser as well as the alternating direction of method of multipliers (ADMM) structure. This integration significantly simplifies the software implementation for the low-complexity encoder, thanks to the modular structure of ADMM. Furthermore, we focus on detecting fall down actions from image streams. Thus, the primary purpose of this study is to reconstruct the image as visibly clear as possible and hence it helps the detection step at the trained classifier. For this efficient smart health monitoring framework, we employ the trained binary convolutional neural network (CNN) classifier for the fall-action classifier, because this scheme is a part of surveillance scenario. In this scenario, we deal with the fall-images, thus, we compress, transmit and reconstruct the fall-images. Experimental results demonstrate the impacts of network parameters and the significant performance gain of the proposal compared to traditional methods.
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