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Main Authors: Zhang, Ruhui, Lin, Wei, Chen, Binbin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.07474
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author Zhang, Ruhui
Lin, Wei
Chen, Binbin
author_facet Zhang, Ruhui
Lin, Wei
Chen, Binbin
contents Artificial intelligence (AI) techniques, particularly autoencoders (AEs), have gained significant attention in wireless communication systems. This paper investigates using an AE to generate featureless signals with a low probability of detection and interception (LPD/LPI). Firstly, we introduce a novel loss function that adds a KL divergence term to the categorical cross entropy, enhancing the noise like characteristics of AE-generated signals while preserving block error rate (BLER). Secondly, to support long source message blocks for the AE's inputs, we replace one-hot inputs of source blocks with binary inputs pre-encoded by conventional error correction coding schemes. The AE's outputs are then decoded back to the source blocks using the same scheme. This design enables the AE to learn the coding structure, yielding superior BLER performance on coded blocks and the BLER of the source blocks is further decreased by the error correction decoder. Moreover, we also validate the AE based communication system in the over-the-air communication. Experimental results demonstrate that our proposed methods improve the featureless properties of AE signals and significantly reduce the BLER of message blocks, underscoring the promise of our AE-based approach for secure and reliable wireless communication systems.
format Preprint
id arxiv_https___arxiv_org_abs_2507_07474
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Featureless Wireless Communications using Enhanced Autoencoder
Zhang, Ruhui
Lin, Wei
Chen, Binbin
Signal Processing
Artificial intelligence (AI) techniques, particularly autoencoders (AEs), have gained significant attention in wireless communication systems. This paper investigates using an AE to generate featureless signals with a low probability of detection and interception (LPD/LPI). Firstly, we introduce a novel loss function that adds a KL divergence term to the categorical cross entropy, enhancing the noise like characteristics of AE-generated signals while preserving block error rate (BLER). Secondly, to support long source message blocks for the AE's inputs, we replace one-hot inputs of source blocks with binary inputs pre-encoded by conventional error correction coding schemes. The AE's outputs are then decoded back to the source blocks using the same scheme. This design enables the AE to learn the coding structure, yielding superior BLER performance on coded blocks and the BLER of the source blocks is further decreased by the error correction decoder. Moreover, we also validate the AE based communication system in the over-the-air communication. Experimental results demonstrate that our proposed methods improve the featureless properties of AE signals and significantly reduce the BLER of message blocks, underscoring the promise of our AE-based approach for secure and reliable wireless communication systems.
title Featureless Wireless Communications using Enhanced Autoencoder
topic Signal Processing
url https://arxiv.org/abs/2507.07474