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首页> 外文期刊>IEEJ Transactions on Electrical and Electronic Engineering >Automated Fish Bone Detection in X-Ray Images with Convolutional Neural Network and Synthetic Image Generation
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Automated Fish Bone Detection in X-Ray Images with Convolutional Neural Network and Synthetic Image Generation

机译:具有卷积神经网络和合成图像生成的X射线图像中的自动鱼骨检测

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摘要

This paper proposes a new fish bone detection technique using a convolutional neural network (CNN) and synthetic image generation. Semantic segmentation CNNs with supervised learning generally require a large number of training images and their pixel-wise teaching signals. In fish bone detection, there are two problems with using semantic segmentation CNNs. One is the manual annotations of fish bones and the other is the difficulty of sampling all variations of fish bones with various lengths, angles, and thicknesses. The proposed method, however, generates them by drawing virtual fish bones on X-ray images. This technique is very useful for reducing the cost of collecting and annotating a dataset. Experimental results have shown that the average F-measure for the proposed method is 0.747, while that for a normal training method is 0.493. In the proposed method, the CNN successfully detected actual fish bones despite its training only with virtual fish bones. (c) 2021 Institute of Electrical Engineers of Japan. Published by Wiley Periodicals LLC.
机译:本文提出了一种使用卷积神经网络(CNN)和合成图像产生的新鱼骨检测技术。具有监督学习的语义分割CNN通常需要大量的培训图像及其像素教学信号。在鱼骨检测中,使用语义分割CNN存在两个问题。一种是鱼骨的手动注释,另一个是难以抽样各种长度,角度和厚度的鱼骨变化。但是,提出的方法通过在X射线图像上绘制虚拟鱼骨来生成它们。该技术对于降低收集和注释数据集的成本非常有用。实验结果表明,该方法的平均F量度为0.747,而正常训练方法的平均F量为0.493。在拟议的方法中,CNN尽管仅用虚拟鱼骨进行训练,但仍成功检测了实际的鱼骨。 (c)2021日本电气工程师研究所。由Wiley Wendericals LLC出版。

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