基于线性预测方法的水源地鸟鸣谱矢量压缩及其在贝叶斯物种自动分类中的应用

K. Sasaki, M. Yamazaki
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引用次数: 3

摘要

提出了一种基于线性预测和主成分分析的水源地鸟类鸣叫光谱自动向量压缩方法,并通过对采集到的14种不同鸣叫的压缩向量进行贝叶斯自动判别,验证了该方法的特点和有效性。结果表明,可以将歌曲完整分类的全部信息基本压缩为残差序列方差和最优预测系数组成的至少30维的向量。通过统一类间不同特征的协方差矩阵提出进一步的压缩,主成分分析的特殊之处是,即使在常规不能进行判别的情况下,也可以进行贝叶斯判别,其增强率为1.58 ~ 1.73倍,平均正确分类率仅降低0.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vector compression of bird songs spectra in water sites by using the linear prediction method and its application to an automated Bayesian species classification
We propose an automated vector compression of bird songs spectra in water-sites by linear prediction method and principal component analysis, and present the experimental validation of the special features and effectiveness of the proposed method through automatic Bayesian discrimination of compressed vectors of the 14 different songs gathered. The result shows that the whole information to classify the songs completely can be fundamentally compressed to a vector of at least 30 dimensions consisting of the variance of residue series and optimal prediction coefficients. Further compression is proposed by unification of covariance matrices of different characteristics among the classes, and principal component analysis has the special features that it makes Bayesian discrimination possible even for cases where the conventional can not conduct the discrimination, with enhanced rates of 1.58 to 1.73 times and within reduction of mean correct classification rate only of 0.8%.
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