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Development of Generic CNN Deep Learning Method Using Feature Graph

机译:使用特征图的通用CNN深度学习方法的开发

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we propose a method by applying Convolutional Neural Networks (CNN) to non-structured data. CNN has been successful in many fields such as image processing and speech recognition. On the other hand, it was difficult to adapt CNN to n non-structured data such as a csv file with multiple variables. The sequence of the data of the low dimensional grid structure such as the image has a meaning, and the CNN recognizes the order as the feature of the image and processes it. Due to this constraint, CNN could not perform feature recognition on non-structured data whose sequence can be reordered while leaving the meaning intact. In this work we developed a method to tackle this issue and make CNN applicable by endowing meaning to the sequence of non-structured data, and demonstrated its effectiveness by adding improvements.
机译:我们通过将卷积神经网络(CNN)应用于非结构化数据来提出一种方法。 CNN在许多领域已经成功,例如图像处理和语音识别。另一方面,难以将CNN调制到N非结构化数据,例如具有多个变量的CSV文件。低维网格结构的数据序列,例如图像具有含义,并且CNN将顺序识别为图像的特征和处理它。由于该约束,CNN无法对非结构化数据执行功能识别,其序列可以在留下含义完整的同时重新排序。在这项工作中,我们开发了一种解决这个问题的方法,并通过赋予非结构化数据顺序的含义来制作CNN,并通过增加改进来证明其有效性。

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