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Tracking Hammerhead Sharks With Deep Learning

机译:通过深度学习跟踪锤头鲨

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摘要

In this study, we propose a new automated method based on deep convolutional neural networks to detect and track endangered hammerhead sharks in video sequences. The proposed method improved the standard YOLOv3 deep architecture by adding 18 more layers (16 convolutional and 2 Yolo layers), which increased the model performance in detecting the species under analysis at different scales. According to the frame analysis based validation, the proposed method outperformed the standard YOLOv3 architecture in terms of accuracy scores for the majority of inspected frames. Also, the mean of precision and recall on an experimental frames dataset formed using the 10-fold cross-validation method highlighted that the proposed method was better than the standard YOLOv3 architecture, reaching scores of 0.99 and 0.93 versus 0.95 and 0.89 for the mean of precision and recall, respectively. Furthermore, both methods were able to avoid introducing false positive detections. However, they were unable to handle the problem of species occlusion. Our results indicate that the proposed method is a feasible alternative tool that could help to monitor relative abundance of hammerhead sharks in the wild.
机译:在这项研究中,我们提出了一种基于深度卷积神经网络的新自动化方法,用于检测和跟踪视频序列中濒临灭绝的锤头鲨。所提出的方法通过增加18个层(16个卷积层和2个Yolo层)改进了标准YOLOv3深度体系结构,从而提高了在不同规模下检测物种的模型性能。根据基于帧分析的验证,在大多数检查帧的准确性得分方面,该方法优于标准YOLOv3体系结构。此外,使用10倍交叉验证方法形成的实验帧数据集的精度和查全率的均值突显出,该方法优于标准YOLOv3体系结构,得分分别为0.99和0.93、0.95和0.89。精度和召回率。此外,两种方法都能够避免引入假阳性检测。但是,他们无法解决物种阻塞的问题。我们的结果表明,所提出的方法是一种可行的替代工具,可以帮助监测野外锤头鲨的相对丰度。

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