This paper aims to design robust Edge Intelligence using semantic communication for time-critical IoT applications. We systematically analyze the effect of image DCT coefficients on inference accuracy and propose the channel-agnostic effectiveness encoding for offloading by transmitting the most meaningful task data first. This scheme can well utilize all available communication resource and strike a balance between transmission latency and inference accuracy. Then, we design an effectiveness decoding by implementing a novel image augmentation process for convolutional neural network (CNN) training, through which an original CNN model is transformed into a Robust CNN model. We use the proposed training method to generate Robust MobileNet-v2 and Robust ResNet-50. The proposed Edge Intelligence framework consists of the proposed effectiveness encoding and effectiveness decoding. The experimental results show that the effectiveness decoding using the Robust CNN models perform consistently better under various image distortions caused by channel errors or limited communication resource. The proposed Edge Intelligence framework using semantic communication significantly outperforms the conventional approach under latency and data rate constraints, in particular, under ultra stringent deadlines and low data rate.
翻译:本文旨在为时间紧迫的 IoT 应用程序设计强大的边缘情报。 我们系统地分析图像DCT 系数对推断准确性的影响,并通过首先传输最有意义的任务数据,提出频道-不可知有效性编码。 这个计划可以充分利用所有可用的通信资源,并在传输潜伏和推断准确性之间取得平衡。 然后,我们设计一种效力解码,方法是为循环神经网络培训实施新的图像增强程序,通过该程序将原CNN 模型转换成Robust CNN 模型。我们使用拟议的培训方法生成Robust Mobust-v2 和robust ResNet-50。拟议的Edge情报框架包括拟议的有效性编码和编码。实验结果表明,在频道错误或通信资源有限造成各种图像扭曲的情况下,使用网络网络模型进行的效率解码效果始终要好得多。拟议的Edge情报框架使用语言通讯,大大超出了在超严格期限和低数据率限制下的传统方法,特别是在超严格期限和低数据率下。