Energy-Weighted Multi-Band Novelty Functions for Onset Detection in Piano Music

K. Subramani, Srivatsan Sridhar, Rohit Ma, P. Rao
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Abstract

Onset detection refers to the estimation of the timing of events in a music signal. It is an important sub-task in music information retrieval and forms the basis of high-level tasks such as beat tracking and tempo estimation. Typically, the onsets of new events in the audio such as melodic notes and percussive strikes are marked by short-time energy rises and changes in spectral distribution. However, each musical instrument is characterized by its own peculiarities and challenges. In this work, we consider the accurate detection of onsets in piano music. An annotated dataset is presented. The operations in a typical onset detection system are considered and modified based on specific observations on the piano music data. In particular, the use of energy-based weighting of multi-band onset detection functions and the use of a new criterion for adapting the final peak-picking threshold are shown to improve the detection of soft onsets in the vicinity of loud notes. We further present a grouping algorithm which reduces spurious onset detections.
钢琴音乐起始点的能量加权多波段新奇函数检测
起始检测是指对音乐信号中事件的时序进行估计。它是音乐信息检索中的一个重要子任务,是节拍跟踪、节奏估计等高级任务的基础。通常,音频中新事件的开始,如旋律音符和打击打击,以短时间的能量上升和频谱分布的变化为特征。然而,每种乐器都有自己的特点和挑战。在这项工作中,我们考虑了钢琴音乐开始的准确检测。给出了一个带注释的数据集。基于对钢琴音乐数据的具体观察,对典型的起跳检测系统中的操作进行了考虑和修改。特别地,使用基于能量的多频带起始检测函数加权和使用一个新的标准来适应最终的拾峰阈值,可以提高在大声音符附近的软起始检测。我们进一步提出了一种分组算法,以减少虚假开始检测。
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