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Lights and Pitfalls of Convolutional Neural Networks for Diatom Identification

机译:卷积神经网络用于硅藻识别的光与陷阱

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Diatom detection has been a challenging task for computer scientist and biologist during past years. In this work, the new state of art techniques based on the deep learning framework have been tested, in order to check whether they are suitable for this purpose. On the one hand, RCNNs (Region based Convolutional Neural Networks), which select candidate regions and applies a convolutional neural network and, on the other hand, YOLO (You Only Look Once), which applies a single neural network over the whole image, have been tested. The first one is able to reach poor results in out experimentation, with an average of 0.68 recall and some tricky aspects, as for example it is needed to apply a bounding box merging algorithm to get stable detections; but the second one gets remarkable results, with an average of 0.84 recall in the evaluation that have been carried out, and less aspects to take into account after the detection has been performed. Future work related to parameter tuning and processing are needed to increase the performance of deep learning in the detection task. However, as for classification it has been probed to provide succesfully performance.
机译:在过去的几年中,硅藻检测一直是计算机科学家和生物学家一项艰巨的任务。在这项工作中,已经测试了基于深度学习框架的最新技术水平,以便检查它们是否适合此目的。一方面,RCNN(基于区域的卷积神经网络)选择候选区域并应用卷积神经网络,另一方面,YOLO(您只看一次)将单个神经网络应用于整个图像,已经过测试。第一个在外出实验中能够达到较差的结果,召回率平均为0.68,并且有些棘手的方面,例如,需要应用边界框合并算法来获得稳定的检测结果;但是第二个获得了显着的结果,已进行的评估平均召回率为0.84,执行检测后需要考虑的方面较少。需要进行与参数调整和处理有关的未来工作,以提高检测任务中深度学习的性能。但是,对于分类,已经探究了它可以提供成功的性能。

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