Acoustic environment classification

Ling Ma, B. Milner, Dan J. Smith
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引用次数: 149

Abstract

The acoustic environment provides a rich source of information on the types of activity, communication modes, and people involved in many situations. It can be accurately classified using recordings from microphones commonly found in PDAs and other consumer devices. We describe a prototype HMM-based acoustic environment classifier incorporating an adaptive learning mechanism and a hierarchical classification model. Experimental results show that we can accurately classify a wide variety of everyday environments. We also show good results classifying single sounds, although classification accuracy is influenced by the granularity of the classification.
声环境分类
声环境提供了丰富的信息来源,包括活动类型、通信模式和在许多情况下涉及的人员。它可以使用pda和其他消费设备中常见的麦克风录音准确分类。我们描述了一个基于hmm的原型声环境分类器,该分类器结合了自适应学习机制和分层分类模型。实验结果表明,我们可以准确地对各种日常环境进行分类。尽管分类精度受到分类粒度的影响,但我们也显示了对单个声音进行分类的良好结果。
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