FaceLite:使用深度学习的实时轻量面罩检测:边缘计算的全面分析、机遇与挑战

Anup Kumar Paul
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引用次数: 0

摘要

运行基于深度学习模型的边缘计算设备作为处理基于人工智能的各种应用的重要方式,引起了人们的广泛兴趣。由于内存和计算资源有限,在生产环境中将深度学习模型部署到边缘设备上并进行有效推理仍然很困难。本研究探讨了在边缘设备上部署具有实时推理功能的轻量级面罩检测模型。提议的框架使用双级卷积神经网络(CNN)架构,其中两个主要模块使用 Caffe-DNN 进行人脸检测,另一个是基于 CNN 架构的提议模型或基于迁移学习的定制模型(如 MobileNet-v2、resNet50、denseNet121、NASNetMobile、Inception-v3 和 XceptionNet)进行面罩分类。研究根据模型在准确度、精确度、召回率和 F1 分数方面的表现进行了大量分析,并对所有模型进行了比较,认为对于内存受限的边缘设备来说,磁盘容量小和准确度高是主要优先考虑的因素。针对面罩检测提出的 CNN 模型在准确率方面优于其他最先进的模型,在 Kaggle 上提供的面罩检测 ~12K 图像数据集的训练、验证和测试中分别达到了 99%、99% 和 99%。这一准确率可与其他基于迁移学习的模型相媲美,而且在所有模型中,它的可训练参数总数最少,因此磁盘大小也最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FaceLite: A Real-Time Light-Weight Facemask Detection Using Deep Learning: A Comprehensive Analysis, Opportunities, and Challenges for Edge Computing
The edge computing devices running models based on deep learning have drawn a lot of interest as a prominent way of handling various applications based on AI. Due to limited memory and computing resources, it is still difficult to deploy deep learning models on edge devices in a production context with effective inference. This study examines the deployment of a lightweight facemask detection model on edge devices with real-time inference. The proposed framework uses a dual-stage convolutional neural network (CNN) architecture with two main modules that use Caffe-DNN for face detection and a proposed model based on CNN architecture or customized models based on transfer learning (e.g., MobileNet-v2, resNet50, denseNet121, NASNetMobile, Inception-v3, and XceptionNet) for facemask classification. The study does numerous analyses based on the models' performance in terms of accuracy, precision, recall, and F1-score and compares all models with low disk size and good accuracy as the main priorities for memory-constrained edge devices. The proposed CNN model for facemask detection outperforms other state-of-the-art models in terms of accuracy, achieving 99%, 99%, and 99% on the training, validation, and testing, respectively, with the facemask detection ~12K image datasets available on Kaggle. This accuracy is comparable to other transfer learning-based models, and it also achieves the smallest number of total trainable parameters and, thus, the smallest disk size of all models.
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