Learning to detect auditory signals in noise: Active top-down selection and stable change in signal representations.

两分听 语调(文学) 噪音(视频) 积极倾听 心理学 背景(考古学) 听觉感知 探测理论 听力学 语音识别 计算机科学 感知 沟通 人工智能 神经科学 医学 文学类 图像(数学) 艺术 古生物学 探测器 生物 电信
作者
Matthew G. Wisniewski,Chelsea Joyner,Alexandria C. Zakrzewski,Alexys Anguiano
出处
期刊:Journal of Experimental Psychology: Human Perception and Performance [American Psychological Association]
卷期号:49 (3): 428-440 被引量:1
标识
DOI:10.1037/xhp0001082
摘要

Training can improve detection of auditory signals in noise. This learning could potentially occur through active top-down selection mechanisms or stable changes in signal representations. Here, participants were trained and tested (pretest vs. posttest design) on abilities to detect pure tone signals in noise. Auditory evoked potentials (AEPs) to tones were gathered under dichotic listening conditions where participants attended to nontonal stimuli in the opposite ear. Improvements in detection sensitivity were observable regardless of tested tone frequency. This was true in generalization between 861 Hz and 1058-Hz tones (Experiment 1a), and when testing a frequency range > 1 octave (Experiment 2). Such learning was not apparent without training (Experiment 1b). In contrast to behavior, AEP amplitude increases from pre- to posttest were partially specific to trained tone frequencies, even when selective attention was diverted to the opposite ear of tone presentation. Placed in the context of previous work, results suggest that changes in active top-down selection mechanisms and stable signal representations both play a role in auditory detection learning. The mismatch between AEP and behavioral effects suggests a need to consider how these different learning processes can impact detection performance in the variety of listening scenarios a listener may face. (PsycInfo Database Record (c) 2023 APA, all rights reserved).

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