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Automatic classification of flying bird species using computer vision techniques

机译:使用计算机视觉技术对飞鸟物种进行自动分类

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Bird populations are identified as important biodiversity indicators, so collecting reliable population data is important to ecologists and scientists. However, existing manual monitoring methods are labour-intensive, time-consuming, and potentially error prone. The aim of our work is to develop a reliable automated system, capable of classifying the species of individual birds, during flight, using video data. This is challenging, but appropriate for use in the field, since there is often a requirement to identify in flight, rather than while stationary. We present our work, which uses a new and rich set of appearance features for classification from video. We also introduce motion features including curvature and wing beat frequency. Combined with Normal Bayes classifier and a Support Vector Machine classifier, we present experimental evaluations of our appearance and motion features across a data set comprising seven species. Using our appearance feature set alone we achieved a classification rate of 92% and 89% (using Normal Bayes and SVM classifiers respectively) which significantly outperforms a recent comparable state-of-the-art system. Using motion features alone we achieved a lower -classification rate, but motivate our on -going work which we seeks to combine these appearance and motion feature to achieve even more robust classification. (C) 2015 Elsevier B.V. All rights reserved.
机译:鸟类种群被确定为重要的生物多样性指标,因此收集可靠的种群数据对生态学家和科学家而言很重要。但是,现有的手动监视方法劳动强度大,耗时且容易出错。我们的工作目标是开发一个可靠的自动化系统,能够使用视频数据在飞行过程中对单个鸟类的种类进行分类。这具有挑战性,但适合在现场使用,因为通常需要在飞行中而不是在静止时进行识别。我们介绍了我们的工作,该工作使用了一组新的外观特征来对视频进行分类。我们还介绍了运动功能,包括曲率和机翼拍频。结合正常贝叶斯分类器和支持向量机分类器,我们对包含七个物种的数据集进行了外观和运动特征的实验评估。仅使用外观特征集,我们就达到了92%和89%的分类率(分别使用Normal Bayes和SVM分类器),明显优于最新的同类先进系统。仅使用运动特征就可以实现较低的分类率,但可以促进正在进行的工作,我们力求将这些外观和运动特征结合起来以实现更可靠的分类。 (C)2015 Elsevier B.V.保留所有权利。

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