Feature based order recognition of continuous-phase FSK using principal component analysis

Ambaw B. Ambaw, M. Doroslovački
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引用次数: 1

Abstract

Principal component analysis (PCA) is a technique that performs a linear transformation on the input space to align directions of maximum variation with the directions of the axises. In this paper, we study the feasibility of principal component analysis based order recognition of continuous phase FSK. The approximate entropy (ApEn) of the received signal, ApEn of the phase of the received signal, and ApEn of the instantaneous frequency of the received signal are used as a set of distinguishing features. The work aims in devising an unsupervised learning algorithm under noisy, carrier frequency offset and fast fading channel conditions. The instantaneous frequency is shaped by using root raised cosine pulses. Performance of principal component based method is compared to stacked autoencoder (SAE) based approach which is more computationally complex technique that can model relatively complicated relationships and non-linearities. For fair comparison both the PCA and SAE based methods use approximate entropy features. The benefit of employing PCA is that after PCA transformations the computation cost can really be decreased a lot. Also in both methods, no a priori information is required about carrier phase, symbol rate and carrier amplitude. The PCA based method shows higher accuracy than the SAE method.
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基于主成分分析的连续相位FSK序列特征识别
主成分分析(PCA)是一种对输入空间进行线性变换以使变化最大的方向与轴的方向对齐的技术。本文研究了基于主成分分析的连续相位FSK序列识别的可行性。采用接收信号的近似熵(ApEn)、接收信号的相位熵(ApEn)和接收信号的瞬时频率熵(ApEn)作为一组区分特征。该工作旨在设计一种无监督学习算法在噪声、载波频偏和快速衰落信道条件下。瞬时频率是通过使用根提升余弦脉冲形成的。将基于主成分的方法与基于叠置自编码器(SAE)的方法进行性能比较,叠置自编码器是一种计算量更大的方法,可以对相对复杂的关系和非线性进行建模。为了公平比较,PCA和基于SAE的方法都使用近似熵特征。采用主成分分析的好处是,经过主成分分析变换后,计算量大大减少。在这两种方法中,也不需要先验的载波相位、符号速率和载波幅度信息。与SAE方法相比,基于PCA的方法具有更高的精度。
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