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Main Authors: Qi, Jundong, Sun, Weize, Chen, Shaowu, Huang, Lei, Liu, Qiuchen
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.15105
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author Qi, Jundong
Sun, Weize
Chen, Shaowu
Huang, Lei
Liu, Qiuchen
author_facet Qi, Jundong
Sun, Weize
Chen, Shaowu
Huang, Lei
Liu, Qiuchen
contents Target classification is a fundamental task in radar systems, and its performance critically depends on the quantization precision of the signal. While high-precision quantization (e.g. 16-bit) is well established, 1-bit quantization offers distinct advantages by enabling direct sampling at high frequencies and eliminating complex intermediate stages. However, its extreme quantization leads to significant information loss. Although higher sampling rates can compensate for this loss, such oversampling is impractical at the high frequencies targeted for direct sampling. To achieve high-accuracy classification directly from 1-bit radar data under the same sampling rate, this paper proposes a novel two-stage deep learning framework, CF-Net. First, we introduce a self-supervised pre-training strategy based on a dual-branch U-Net architecture. This network learns to restore high-fidelity 16-bit images from their 1-bit counterparts via a cross-feature reconstruction task, forcing the 1-bit encoder to learn robust features despite extreme quantization. Subsequently, this pre-trained encoder is repurposed and fine-tuned for the downstream multi-class target classification task. Experiments on two radar target datasets demonstrate that CF-Net can effectively extract discriminative features from 1-bit imagery, achieving comparable and even superior accuracy to some 16-bit methods without oversampling.
format Preprint
id arxiv_https___arxiv_org_abs_2512_15105
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CF-Net: A Cross-Feature Reconstruction Network for High-Accuracy 1-Bit Target Classification
Qi, Jundong
Sun, Weize
Chen, Shaowu
Huang, Lei
Liu, Qiuchen
Signal Processing
Target classification is a fundamental task in radar systems, and its performance critically depends on the quantization precision of the signal. While high-precision quantization (e.g. 16-bit) is well established, 1-bit quantization offers distinct advantages by enabling direct sampling at high frequencies and eliminating complex intermediate stages. However, its extreme quantization leads to significant information loss. Although higher sampling rates can compensate for this loss, such oversampling is impractical at the high frequencies targeted for direct sampling. To achieve high-accuracy classification directly from 1-bit radar data under the same sampling rate, this paper proposes a novel two-stage deep learning framework, CF-Net. First, we introduce a self-supervised pre-training strategy based on a dual-branch U-Net architecture. This network learns to restore high-fidelity 16-bit images from their 1-bit counterparts via a cross-feature reconstruction task, forcing the 1-bit encoder to learn robust features despite extreme quantization. Subsequently, this pre-trained encoder is repurposed and fine-tuned for the downstream multi-class target classification task. Experiments on two radar target datasets demonstrate that CF-Net can effectively extract discriminative features from 1-bit imagery, achieving comparable and even superior accuracy to some 16-bit methods without oversampling.
title CF-Net: A Cross-Feature Reconstruction Network for High-Accuracy 1-Bit Target Classification
topic Signal Processing
url https://arxiv.org/abs/2512.15105