CNN识别Pandava面具的模型架构

Andi Sanjaya, E. Setyati, H. Budianto
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引用次数: 2

摘要

本研究是为了观察结构模型卷积神经网络(CNN) LeNEt的使用情况,该模型适合用于Pandava掩模对象。本研究的数据处理为每个班级200个或相近的1000个试验数据。架构模型CNN LeNET使用输入层32x32、64x64、128x128、224x224和256x256。输入层32x32的试验结果成功,显示出比另一层更快的时间。准确度值和验证结果没有过拟合或欠拟合。然而,当第二密集过程的激活由relu变为s形时,在时间上,s形的结果更好,过拟合的可能性更小。研究结果的平均准确度为0.96。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Architecture of CNN for Recognition the Pandava Mask
This research was conducted to observe the use of architectural model Convolutional Neural Networks (CNN) LeNEt, which was suitable to use for Pandava mask objects. The Data processing in the research was 200 data for each class or similar with 1000 trial data. Architectural model CNN LeNET used input layer 32x32, 64x64, 128x128, 224x224 and 256x256. The trial result with the input layer 32x32 succeeded, showing a faster time compared to the other layer. The result of accuracy value and validation was not under fitted or overfit. However, when the activation of the second dense process as changed from the relu to sigmoid, the result was better in sigmoid, in the tem of time, and the possibility of overfitting was less. The research result had a mean accuracy value of 0.96.
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