In order to extract knowledge from the large data collected by edge devices, traditional cloud based approach that requires data upload may not be feasible due to communication bandwidth limitation as well as privacy and security concerns of end users. To address these challenges, a novel privacy preserving edge computing framework is proposed in this paper for image classification. Specifically, autoencoder will be trained unsupervised at each edge device individually, then the obtained latent vectors will be transmitted to the edge server for the training of a classifier. This framework would reduce the communications overhead and protect the data of the end users. Comparing to federated learning, the training of the classifier in the proposed framework does not subject to the constraints of the edge devices, and the autoencoder can be trained independently at each edge device without any server involvement. Furthermore, the privacy of the end users' data is protected by transmitting latent vectors without additional cost of encryption. Experimental results provide insights on the image classification performance vs. various design parameters such as the data compression ratio of the autoencoder and the model complexity.
翻译:为了从边缘装置收集的大数据中获取知识,由于通信带宽限制以及终端用户的隐私和安全考虑,需要上传数据的传统云基方法可能不可行。为了应对这些挑战,本文件提出了一个新的隐私保护边缘计算框架,以便进行图像分类。具体地说,自动编码器将受到每个边缘装置单独培训而不受监督,然后获得的潜伏矢量将传送到边缘服务器,以培训一个分类器。这个框架将减少通信管理费并保护终端用户的数据。比照联合学习,拟议框架中分类器的培训不受边缘装置的限制,自动编码器可以在没有服务器参与的情况下在每一个边缘装置上独立培训。此外,终端用户数据的隐私是通过在没有额外加密费用的情况下传输潜在矢量而受到保护的。实验结果将提供关于图像分类性能和图像复杂性的各种设计参数,例如自动编码器的数据压缩率和模型复杂性。