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Minke Whale Detection in Underwater Imagery using Classification CNNs

机译:使用分类CNNS的水下图像中的米克鲸鱼检测

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A predictable aggregation of dwarf minke whales occurs annually in the Australian offshore waters of the northern Great Barrier Reef in June–July, which has been the subject of a long-term photo-identification study. Researchers from the Minke Whale Project (MWP) at James Cook University collect large volumes of underwater digital imagery each season (e.g. 1.8TB in 2018), much of which is contributed by citizen scientists. Manual processing and analysis of this quantity of data had become infeasible, and Convolutional Neural Networks (CNNs) offered a potential solution. Our study sought to design and train a CNN that could detect whales from video footage in complex near-surface underwater surroundings containing multiple people, boats, research and recreational gear. We modified known classification CNNs to localize whales in video frames and digital still images. The required high detection accuracy was achieved by discovering an effective negative-labeling training technique. This resulted in a less than 1% false-positive detection rate and below 0.1% false-negative rate. The final operation-version CNN-pipeline processed all videos (with the interval of 10 frames) in approximately four days (running on two GPUs) delivering 1.95 million sorted images.
机译:Dwarf Minke Whales的可预测的聚合每年在北方大堡礁的澳大利亚 - 7月在澳大利亚海上水域发生,这是长期照片鉴定研究的主题。 Minke Whale项目(MWP)的研究人员在詹姆斯库克大学收集大量的水下数字图像(例如,2018年1.8TB),其中大部分是公民科学家的贡献。手动处理和分析此类数据变得不可行,并且卷积神经网络(CNNS)提供了潜在的解决方案。我们的研究寻求设计和培训CNN,可以检测来自近近表面水下周围环境中的视频镜头的鲸鱼,其中包含多人,船只,研究和休闲齿轮。我们修改了已知的分类CNN,以定位视频帧和数字静止图像中的鲸鱼。通过发现有效的负标记训练技术实现所需的高检测精度。这导致误阳性频率低于1%和低于0.1%的假阴性率。最终操作 - 版本CNN-管道在大约四天(在两个GPU上运行时)处理了所有视频(10帧的间隔),提供了165万种分类图像。

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