二值化 ResNet:在资源受限的边缘实现稳健的自动调制分类

IF 7.4 1区 计算机科学 Q1 TELECOMMUNICATIONS
Nitin Priyadarshini Shankar;Deepsayan Sadhukhan;Nancy Nayak;Thulasi Tholeti;Sheetal Kalyani
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引用次数: 0

摘要

最近,深度神经网络(DNN)被广泛用于自动调制分类(AMC)。由于其复杂性较高,DNN 通常不适合部署在资源有限的边缘网络中。它们还容易受到恶意攻击,这也是一个重要的安全问题。本研究提出了一种用于 AMC 的旋转二进制大型 ResNet (RBLResNet),由于其复杂度低,可以部署在边缘网络中。RBLResNet 与采用浮点权重和激活的现有架构之间的性能差距可通过两种建议的集合方法来缩小:(i) 多级分类 (MC) 和 (ii) 对多个 RBLResNet 进行分组。在 Deepsig 数据集的所有 24 个调制类别中,MC 方法在 10 分贝时的准确率达到 93.39%。这一性能与最先进的性能相当,内存和计算量分别降低了 4.75 倍和 1214 倍。此外,与现有的 DNN 模型相比,RBLResNet 表现出较高的对抗鲁棒性。据我们所知,采用 RBLResNets 的 MC 方法在各种信噪比(SNR)下的对抗准确率高达 87.25%,优于现有方法和成熟的防御机制。低内存、低计算量和最高的对抗鲁棒性使其成为低功耗边缘设备中鲁棒性 AMC 的最佳选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Binarized ResNet: Enabling Robust Automatic Modulation Classification at the Resource-Constrained Edge
Recently, Deep Neural Networks (DNNs) have been used extensively for Automatic Modulation Classification (AMC). Due to their high complexity, DNNs are typically unsuitable for deployment at resource-constrained edge networks. They are also vulnerable to adversarial attacks, which is a significant security concern. This work proposes a Rotated Binary Large ResNet (RBLResNet) for AMC that can be deployed at the edge network because of its low complexity. The performance gap between the RBLResNet and existing architectures with floating-point weights and activations can be closed by two proposed ensemble methods: (i) Multilevel Classification (MC) and (ii) bagging multiple RBLResNets. The MC method achieves an accuracy of 93.39% at 10dB over all the 24 modulation classes of the Deepsig dataset. This performance is comparable to state-of-the-art performances, with 4.75 times lower memory and 1214 times lower computation. Furthermore, RBLResNet exhibits high adversarial robustness compared to existing DNN models. The proposed MC method employing RBLResNets demonstrates a notable adversarial accuracy of 87.25% across a diverse spectrum of Signal-to-Noise Ratios (SNRs), outperforming existing methods and well-established defense mechanisms to the best of our knowledge. Low memory, low computation, and the highest adversarial robustness make it a better choice for robust AMC in low-power edge devices.
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来源期刊
IEEE Transactions on Cognitive Communications and Networking
IEEE Transactions on Cognitive Communications and Networking Computer Science-Artificial Intelligence
CiteScore
15.50
自引率
7.00%
发文量
108
期刊介绍: The IEEE Transactions on Cognitive Communications and Networking (TCCN) aims to publish high-quality manuscripts that push the boundaries of cognitive communications and networking research. Cognitive, in this context, refers to the application of perception, learning, reasoning, memory, and adaptive approaches in communication system design. The transactions welcome submissions that explore various aspects of cognitive communications and networks, focusing on innovative and holistic approaches to complex system design. Key topics covered include architecture, protocols, cross-layer design, and cognition cycle design for cognitive networks. Additionally, research on machine learning, artificial intelligence, end-to-end and distributed intelligence, software-defined networking, cognitive radios, spectrum sharing, and security and privacy issues in cognitive networks are of interest. The publication also encourages papers addressing novel services and applications enabled by these cognitive concepts.
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