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A Fast One-Pass-Training Feature Selection Technique for GMM-based Acoustic Event Detection with Audio-Visual Data

机译:一种基于GMM的视听数据声事件检测的快速单次训练特征选择技术

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Acoustic event detection becomes a difficult task, even for a small number of events, in scenarios where events are produced rather spontaneously and often overlap in time. In this work, we aim to improve the detection rate by means of feature selection. Using a one-against-all detection approach, a new fast one-pass-training algorithm, and an associated highly-precise metric are developed. Choosing a different subset of multimodal features for each acoustic event class, the results obtained from audiovisual data collected in the UPC multimodal room show an improvement in average detection rate with respect to using the whole set of features.
机译:在事件相当自然地产生并且经常在时间上重叠的情况下,即使对于少量事件,声音事件检测也成为一项艰巨的任务。在这项工作中,我们旨在通过特征选择来提高检测率。使用一种针对所有人的检测方法,开发了一种新的快速单程训练算法以及相关的高精度度量。为每个声音事件类别选择不同的多峰特征子集,从UPC多峰室收集的视听数据获得的结果表明,相对于使用整个特征集,平均检测率有所提高。

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