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Influence of Different Convolutional Neural Network Settings on the Performance of MNIST Handwritten Digits Recognition

机译:不同卷积神经网络设置对MNIST手写数字识别性能的影响

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Artificial Neural network as a power tool is now working in more and more areas such as recognition of handwritten digits and faces, sentence classification and audio recognition. This project aims at using convolutional neural network (CNN) to recognize handwritten digits provided by MNIST datasets with TensorFlow tool. Several variables such as dropout rate, epoch, fully connected layer with different neuron amount and filter amount were investigated in the experiments to investigate the performance of the model. Both training and validation accuracy were detected and gave us a direct reflection of the influence of different settings. With appropriate 0.2 dropout rate and 50 epochs, the model can accomplish 99.81% training accuracy and 99.38% validation accuracy. By adding fully connected layers with reasonable neuron amount, both training and validation accuracy were improved, and this modification had no extra running time required in our work. The filter number in the convolutional layers was also an important factor in the model performance. More filters can extract more features from the raw images and thus increase the accuracy of 99.95% for training accuracy and 99.47% for validation accuracy. However, this modification was found to have a longer running time.
机译:人工神经网络作为一种强大的工具正在越来越多的领域工作,例如手写数字和面孔的识别,句子分类和音频识别。该项目旨在使用卷积神经网络(CNN)通过TensorFlow工具识别MNIST数据集提供的手写数字。在实验中研究了诸如辍学率,时期,具有不同神经元数量和过滤器数量的完全连接层等变量,以研究模型的性能。训练和验证的准确性都被检测到,并直接反映了不同设置的影响。在适当的0.2辍学率和50个历元的情况下,该模型可以实现99.81%的训练准确度和99.38%的验证准确度。通过添加具有合理神经元数量的完全连接的层,可以提高训练和验证的准确性,并且此修改无需在工作中花费额外的运行时间。卷积层中的滤波器数量也是模型性能的重要因素。更多的过滤器可以从原始图像中提取更多的特征,从而将训练精度提高到99.95%,验证精度提高到99.47%。但是,发现此修改具有更长的运行时间。

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