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首页> 外文期刊>Remote Sensing in Ecology and Conservation >Automated identification of avian vocalizations with deep convolutional neural networks
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Automated identification of avian vocalizations with deep convolutional neural networks

机译:深度卷积神经网络自动识别禽流号

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Passive acoustic monitoring is an emerging approach to wildlife monitoring that leverages recent improvements in automated recording units and other technologies. A central challenge of this approach is the task of locating and identifying target species vocalizations in large volumes of audio data. To address this issue, we developed an efficient data processing pipeline using a deep convolutional neural network (CNN) to automate the detection of owl vocalizations in spectrograms generated from unprocessed field recordings. While the project was initially focused on spotted and barred owls, we also trained the network to recognize northern saw‐whet owl, great horned owl, northern pygmy‐owl, and western screech‐owl. Although classification performance varies across species, initial results are promising. Recall, or the proportion of calls in the dataset that are detected and correctly identified, ranged from 63.1% for barred owl to 91.5% for spotted owl based on raw network output. Precision, the rate of true positives among apparent detections, ranged from 0.4% for spotted owl to 77.1% for northern saw‐whet owl based on raw output. In limited tests, the CNN performed as well as or better than human technicians at detecting owl calls. Our model output is suitable for developing species encounter histories for occupancy models and other analyses. We believe our approach is sufficiently general to support long‐term, large‐scale monitoring of a broad range of species beyond our target species list, including birds, mammals, and others.
机译:被动声学监测是一种新兴的野生动物监测方法,可利用最近改进自动录音装置和其他技术。这种方法的中央挑战是在大量音频数据中定位和识别目标物种声学的任务。为了解决这个问题,我们开发了一种使用深卷积神经网络(CNN)的有效数据处理管道,以自动检测从未处理的现场记录生成的频谱图中的猫头鹰发声。虽然该项目最初专注于发现和禁止猫头鹰,但我们还培训了该网络识别北锯猫头鹰,大角猫头鹰,北部侏儒猫头鹰和西方尖叫猫头鹰。虽然分类性能在物种上变化,但初步结果是有前途的。召回或检测到和正确识别的数据集中的呼叫的比例,范围为基于原始网络输出的斑点猫头鹰的禁止owl的63.1%。精度,明显检测的真实阳性率,范围为北锯猫头鹰的0.4%,基于原始输出,北锯猫头鹰的77.1%。在有限的测试中,CNN在检测到OWL呼叫时执行的CNN以及人员技术人员。我们的模型输出适用于开发物种遭遇占用模型和其他分析的历史历史。我们相信我们的方法足以支持长期,大规模监测广泛的各种物种,包括鸟类,哺乳动物和其他人。

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