Segmentation of auditory brainstem response signals

Jilei Tian, Martti Juhola, Tapio Grönfors
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引用次数: 1

Abstract

Auditory brainstem responses are used to detect hearing defects in audiology and otoncurology. The use of computer programs for the analysis of such recordings is increasing. To identify their detailed properties a pattern recognition algorithm implemented in an analysis program must be highly reliable. For the recognition process, some preprocessing phases after recording are necessary, such as filtering and often also segmentation. In the following, we will explore segmentation, which can be used in preprocessing of biomedical signals after filtering. We studied linear segmentation, where slopes of short signal segments are computed and divided into different classes according to their values. A segment length of 8 samples for a sampling frequency of 50 kHz employed was best according to our tests and error criteria. Using clustering, we found that less than 10 segment classes is suitable for pattern recognition.

听觉脑干反应信号的分割
听觉脑干反应被用来检测听力学和耳鼻喉学的听力缺陷。越来越多的人使用计算机程序来分析这类录音。为了识别它们的详细属性,在分析程序中实现的模式识别算法必须是高度可靠的。在识别过程中,记录后的一些预处理阶段是必要的,如滤波和分割。接下来,我们将探讨分割,它可以用于滤波后的生物医学信号的预处理。我们研究了线性分割,其中计算短信号段的斜率并根据其值划分为不同的类别。根据我们的测试和误差标准,采用采样频率为50 kHz的8个样本的段长度是最好的。通过聚类,我们发现适合模式识别的片段类不超过10个。
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