In this paper, we investigate the effectiveness of two-stage classification strategies in detecting north Atlantic right whale upcalls. Time-frequency measurements of data from passive acoustic monitoring devices are evaluated as images. Vocalization spectrograms are preprocessed for noise reduction and tone removal. First stage of the algorithm eliminates non-upcalls by an energy detection algorithm. In the second stage, two sets of features are extracted from the remaining signals using contour-based and texture based methods. The former is based on extraction of time-frequency features from upcall contours, and the latter employs a Local Binary Pattern operator to extract distinguishing texture features of the upcalls. Subsequently evaluation phase is carried out by using several classifiers to assess the effectiveness of both the contour-based and texture-based features for upcall detection. Experimental results with the data set provided by the Cornell University Bioacoustics Research Program reveal that classifiers show accuracy improvements of 3% to 4% when using LBP features over time-frequency features. Classifiers such as the Linear Discriminant Analysis, Support Vector Machine, and TreeBagger achieve high upcall detection rates with LBP features.
翻译:在本文中,我们调查两阶段分类战略在探测北大西洋右鲸向上呼唤方面的效力;对被动声学监测装置数据的时间频率测量作为图像进行评价;为降低噪音和调音而预先处理挥发光谱;第一阶段算法通过能量检测算法消除非呼唤;在第二阶段,利用光谱和纹理方法从其余信号中抽取两套特征;前者基于从上调等距提取时间频率特性,后者使用当地二进制模式操作器来提取上调调的纹理特征;随后的评估阶段由数个叙级器进行,以评价调频检测基于等离子和基于纹理的特征的有效性;Cornell大学生物学研究方案提供的数据集的实验结果显示,在使用LBP特征时,精度提高了3%至4%。诸如线分辨分析、支持矢量机和树形BG等分类工具实现了高调率。