基于内容的野生动物声音特征选择分类与检索

S. Gunasekaran, K. Revathy
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引用次数: 24

摘要

动物声音的自动分类和检索对生物声学和音频检索应用有很大的帮助。在本文中,我们提出了一个系统来定义和提取一组声音特征从所有存档的野生动物录音,用于随后的特征选择,分类和检索任务。这个数据库由六种野生动物的声音组成。选择基于分形维数分析的分割方法,因为它能够选择合适的信号部分进行特征提取。该算法的特征向量由动物发声的光谱特征、时间特征和感知特征组成。利用最小冗余,最大相关性(mRMR)特征选择分析来提高紧凑特征集的分类精度。这些特征被用作两个神经网络的输入,即k-最近邻(kNN)、多层感知器(MLP)及其融合。该系统为分类和检索提供了可靠的方法,特别是对野生动物的声音。
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Content-Based Classification and Retrieval of Wild Animal Sounds Using Feature Selection Algorithm
Automatic animal sound classification and retrieval is very helpful for bioacoustic and audio retrieval applications. In this paper we propose a system to define and extract a set of acoustic features from all archived wild animal sound recordings that is used in subsequent feature selection, classification and retrieval tasks. The database consisted of sounds of six wild animals. The Fractal Dimension analysis based segmentation was selected due to its ability to select the right portion of signal for extracting the features. The feature vectors of the proposed algorithm consist of spectral, temporal and perceptual features of the animal vocalizations. The minimal Redundancy, Maximal Relevance (mRMR) feature selection analysis was exploited to increase the classification accuracy at a compact set of features. These features were used as the inputs of two neural networks, the k-Nearest Neighbor (kNN), the Multi-Layer Perceptron (MLP) and its fusion. The proposed system provides quite robust approach for classification and retrieval purposes, especially for the wild animal sounds.
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