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Multispecies bioacoustic classification using transfer learning of deep convolutional neural networks with pseudo-labeling

机译:多数生物声学分类使用伪标签的深卷积神经网络传输学习

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In this study, we evaluated deep convolutional neural networks for classifying the calls of 24 birds and amphibian species detected in ambient field recordings from the tropical mountains of Puerto Rico. Training data were collected using a template-based detection algorithm followed by a manual validation process. As preparing sufficient training data is a major challenge for many deep learning applications, we propose a novel approach that combines transfer learning of a pre-trained deep convolutional neural network (CNN) model and a semi-supervised pseudo-labeling method with a custom loss function to meet this challenge. Our proposed methodology enables the network to be trained in a supervised fashion with labeled and unlabeled data simultaneously, which effectively increases the size of training set and thus boosts the model performance. In classifying a test set of manually validated positive and negative template-based detections, our proposed model achieves 97.7% sensitivity (true positive rate), 96.4% specificity (true negative rate) and 99.5% Area Under a Curve (AUC). This multi-label multi-species classification methodology and its framework can be easily adopted by other acoustic classification problems. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在这项研究中,我们评估了深度卷积神经网络,用于分类Puerto Rico热带山脉的环境田间录像中检测到的24只鸟和两栖物种的呼叫。使用基于模板的检测算法收集训练数据,然后是手动验证过程。由于为许多深度学习应用程序提供足够的培训数据是一个主要的挑战,我们提出了一种新的方法,该方法结合了预训练的深度卷积神经网络(CNN)模型的转移学习和具有自定义损耗的半监控伪标签方法努力满足这一挑战。我们所提出的方法使网络能够以监督方式培训,同时具有标记和未标记的数据,从而有效地增加了训练集的大小,从而提高了模型性能。在分类手动验证的基于模板检测的测试集时,我们所提出的模型达到97.7%的灵敏度(真正的阳性率),96.4%(真实负率)和曲线下的99.5%面积。其他声学分类问题,可以轻松采用这种多标签多种分类方法及其框架。 (c)2020 elestvier有限公司保留所有权利。

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