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A missing feature approach to instrument identification in polyphonic music

机译:和弦音乐中乐器识别的缺失功能方法

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Summary form only given. Gaussian mixture model (GMM) classifiers have been shown to give good instrument recognition performance for monophonic music played by a single instrument. However, many applications (such as automatic music transcription) require instrument identification from polyphonic, multi-instrumental recordings. We address this problem by incorporating ideas from missing feature theory into a GMM classifier. Specifically, frequency regions that are dominated by energy from an interfering tone are marked as unreliable and excluded from the classification process. This approach has been evaluated on random two-tone chords and an excerpt from a commercially available compact disc, with promising results.
机译:仅提供摘要表格。高斯混合模型(GMM)分类器已被证明可以为单个乐器演奏的单声道音乐提供良好的乐器识别性能。但是,许多应用程序(例如自动音乐转录)都需要从复音,多乐器录音中识别乐器。我们通过将缺失特征理论中的思想纳入GMM分类器中来解决此问题。具体地,被来自干扰音的能量支配的频率区域被标记为不可靠的并且被排除在分类处理之外。已经对随机两音和弦和市售光盘的摘录进行了评估,并获得了可喜的结果。

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