基于低功耗硬件的深度学习诊断支持案例研究

Khushal Sethi, V. Parmar, M. Suri
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引用次数: 13

摘要

深度学习研究引起了广泛的兴趣,导致了各种各样的技术创新和应用的出现。由于深度学习研究的很大一部分侧重于基于视觉的应用,因此存在使用其中一些技术实现低功耗便携式医疗保健诊断支持解决方案的潜力。在本文中,我们提出了一种基于嵌入式硬件的显微镜诊断支持系统,用于PoC案例研究:(a)厚血涂片中的疟疾,(b)痰样本中的结核病,以及(c)粪便样本中的肠道寄生虫感染。我们使用基于Squeeze-Net的模型来减少网络大小和计算时间。我们还利用训练量化技术来进一步减少学习模型的内存占用。这使得基于显微镜的病原体检测能够作为独立的嵌入式硬件平台,以实验室专家级别的准确性进行分类。与传统的基于cpu的实现相比,所提出的实现的能效提高了6倍,并且推理时间为~ 3 ms/sample。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-Power Hardware-Based Deep-Learning Diagnostics Support Case Study
Deep learning research has generated widespread interest leading to emergence of a large variety of technological innovations and applications. As significant proportion of deep learning research focuses on vision based applications, there exists a potential for using some of these techniques to enable low-power portable health-care diagnostic support solutions. In this paper, we propose an embedded-hardware-based implementation of microscopy diagnostic support system for PoC case study on: (a) Malaria in thick blood smears, (b) Tuberculosis in sputum samples, and (c) Intestinal parasite infection in stool samples. We use a Squeeze-Net based model to reduce the network size and computation time. We also utilize the Trained Quantization technique to further reduce memory footprint of the learned models. This enables microscopy-based detection of pathogens that classifies with laboratory expert level accuracy as a standalone embedded hardware platform. The proposed implementation is 6x more power-efficient compared to conventional CPU-based implementation and has an inference time of ~ 3 ms/sample.
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