Parsons S, Jones G
School of Biological Sciences, University of Bristol, Woodland Road, Bristol BS8 1UG, UK.
J Exp Biol. 2000 Sep;203(Pt 17):2641-56. doi: 10.1242/jeb.203.17.2641.
We recorded echolocation calls from 14 sympatric species of bat in Britain. Once digitised, one temporal and four spectral features were measured from each call. The frequency-time course of each call was approximated by fitting eight mathematical functions, and the goodness of fit, represented by the mean-squared error, was calculated. Measurements were taken using an automated process that extracted a single call from background noise and measured all variables without intervention. Two species of Rhinolophus were easily identified from call duration and spectral measurements. For the remaining 12 species, discriminant function analysis and multilayer back-propagation perceptrons were used to classify calls to species level. Analyses were carried out with and without the inclusion of curve-fitting data to evaluate its usefulness in distinguishing among species. Discriminant function analysis achieved an overall correct classification rate of 79% with curve-fitting data included, while an artificial neural network achieved 87%. The removal of curve-fitting data improved the performance of the discriminant function analysis by 2 %, while the performance of a perceptron decreased by 2 %. However, an increase in correct identification rates when curve-fitting information was included was not found for all species. The use of a hierarchical classification system, whereby calls were first classified to genus level and then to species level, had little effect on correct classification rates by discriminant function analysis but did improve rates achieved by perceptrons. This is the first published study to use artificial neural networks to classify the echolocation calls of bats to species level. Our findings are discussed in terms of recent advances in recording and analysis technologies, and are related to factors causing convergence and divergence of echolocation call design in bats.
我们记录了英国14种同域分布蝙蝠的回声定位叫声。数字化后,对每个叫声测量了一个时间特征和四个频谱特征。通过拟合八个数学函数来近似每个叫声的频率-时间过程,并计算以均方误差表示的拟合优度。测量是使用自动过程进行的,该过程从背景噪声中提取单个叫声并在无需干预的情况下测量所有变量。从叫声持续时间和频谱测量中很容易识别出两种菊头蝠。对于其余12种蝙蝠,使用判别函数分析和多层反向传播感知器将叫声分类到物种水平。分析在包含和不包含曲线拟合数据的情况下进行,以评估其在区分物种方面的有用性。包含曲线拟合数据时,判别函数分析的总体正确分类率为79%,而人工神经网络为87%。去除曲线拟合数据后,判别函数分析的性能提高了2%,而感知器的性能下降了2%。然而,并非所有物种在包含曲线拟合信息时正确识别率都会提高。使用分层分类系统,即先将叫声分类到属水平,然后再分类到物种水平,对判别函数分析的正确分类率影响不大,但确实提高了感知器的分类率。这是首次发表的使用人工神经网络将蝙蝠回声定位叫声分类到物种水平的研究。我们根据记录和分析技术的最新进展对研究结果进行了讨论,并与导致蝙蝠回声定位叫声设计趋同和分化的因素相关联。