一个复值无线电信号自编码器

Kyle Logue
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引用次数: 1

摘要

提出了一种能对任意模型尺度的射频信号进行压缩降噪的复值自编码器神经网络。将接收到的带有各种损伤的复值时间样本编码成嵌入向量,然后再解码回复值时间样本。嵌入和相关的潜在空间允许对信号进行搜索、比较和聚类。传统的信号处理任务,如特定发射器识别、地理定位或模糊估计,可以同时利用多个压缩嵌入。本文演示了一种能够压缩64倍的自动编码器实现,该实现仍然能够抵御RF信道损伤。自动编码器允许根据网络深度、宽度和分辨率进行单独扩展,或者在复合意义上针对嵌入式和数据中心部署进行扩展。通用构建块的灵感来自于由EfficientNetV2和MobileNetV3推广的融合倒残差块(fuse - mbconv),但其内核大小更适合于时间序列信号处理。复杂值PyTorch实现和预训练模型一起可用,网址为https://github.com/the-aerospace-corporation/glaucus。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Glaucus: A Complex-Valued Radio Signal Autoencoder
A complex-valued autoencoder neural network ca-pable of compressing & denoising radio frequency signals with arbitrary model scaling is proposed. Complex-valued time sam-ples received with various impairments are encoded into an embedding vector, then decoded back into complex-valued time samples. The embedding and the related latent space allow search, comparison, and clustering of signals. Traditional signal processing tasks like specific emitter identification, geolocation, or ambiguity estimation can utilize multiple compressed embed-dings simultaneously. This paper demonstrates an autoencoder implementation capable of compression by a factor of 64 that is still resilient against RF channel impairments. The autoencoder allows individual scaling by network depth, width, and resolution or in a compound sense to target both embedded and data center deployments. The common building block is inspired by the fused inverted residual block (Fused-MBConv), popularized by EfficientNetV2 & MobileNetV3, but with kernel sizes more appropriate for time-series signal processing. A complex-valued PyTorch implementation is available along with a pre-trained model, at https://github.com/the-aerospace-corporation/glaucus.
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