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      <title>Comparison of sEMG Encoding Accuracy Across Speech Modes Using Articulatory and Phoneme Features</title>
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      <description>这篇论文旨在为无声言语接口（SSI）选择更优的中间表示目标。研究系统比较了发音特征（SPARC）和传统的音素独热编码，在预测表面肌电（sEMG）信号包络上的表现。核心发现是：1）在出声、默语和次发声三种模式下，SPARC特征的编码准确性均显著优于音素特征；2）出声和默语模式的编码性能相当，次发声模式</description>
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