首页> 外文会议>IEEE International Conference on Computer-Aided Industrial Design Conceptual Design >Eco-environmental sounds classification with time-frequency features under noise conditions
【24h】

Eco-environmental sounds classification with time-frequency features under noise conditions

机译:生态环境声音对噪声条件下的时频特征进行分类

获取原文

摘要

Eco-environmental sounds depict the sound content of varieties of creatures' survival and activities in the ecological environment at a time interval. Research on eco-environmental sounds is useful in monitoring of the wildlife and their evolution with time. Due to varieties of noises in the ecological environment, we consider the task of eco-environmental sounds classification under noise conditions. Time-frequency representations have the potential to be powerful features for nonstationary signals. Especially, time-frequency domain features can classify sounds with noise where using frequency-domain features (e.g., MFCCs) fail. Hence, a classification approach using time-frequency features for eco-environmental sounds under noise conditions is presented in this paper. Matching pursuit (MP) algorithm is proposed to extract time-frequency features (MP-based features, for short) of effective signals. Besides statistical features extracted under Choi-Williams distribution (CWD-based features, for short) also perform more effectively than other conventional audio features under noise conditions. Considering the effectiveness of features and robustness of classifier, a classification model using time-frequency features (the combination features of MP-based features and CWD-based features) and support vector machine (MP+CWD-SVM for short) is proposed. Experimentally, CWD+MP-SVM is able to achieve a higher classification rate for eco-environmental sounds under noise conditions. The result shows that time-frequency features and SVM classifier have better noise immunity.
机译:生态环境声音描绘了在时间间隔的生物生物生存和活动中的品种的声音含量。生态环境声音的研究可用于监测野生动物及其随着时间的推移。由于生态环境中的噪音品种,我们考虑了噪声条件下生态环境声音分类的任务。时频表示具有对非间平信号的强大功能。特别地,时间频域特征可以使用频域特征(例如,MFCC)失败的噪声分类声音。因此,本文介绍了在噪声条件下使用用于生态环境声音的时频特征的分类方法。匹配追求(MP)算法提出提取有效信号的时频特征(基于MP的特征,短)。除了在Choi-Williams分布下提取的统计特征(基于CWD的特征,短路)也比噪声条件下的其他传统音频特征更有效地执行。考虑到分类器的特征和稳健性的有效性,提出了一种使用时频特征的分类模型(基于MP的特征和基于CWD的功能的组合特征)和支持向量机(短路的MP + CWD-SVM)。通过实验,CWD + MP-SVM能够在噪声条件下实现更高的生态环境声音的分类率。结果表明,时频特征和SVM分类器具有更好的抗噪性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号