CNN model is a popular method for imagery analysis, so it could be utilized to recognize handwritten digits based on MNIST datasets. For higher recognition accuracy, various CNN models with different fully connected layer sizes are exploited to figure out the relationship between the CNN fully connected layer size and the recognition accuracy. Inspired by previous pruning work, we performed pruning methods of distinctiveness on CNN models and compared the pruning performance with NN models. For better pruning performances on CNN, the effect of angle threshold on the pruning performance was explored. The evaluation results show that: for the fully connected layer size, there is a threshold, so that when the layer size increases, the recognition accuracy grows if the layer size smaller than the threshold, and falls if the layer size larger than the threshold; the performance of pruning performed on CNN is worse than on NN; as pruning angle threshold increases, the fully connected layer size and the recognition accuracy decreases. This paper also shows that for CNN models trained by the MNIST dataset, they are capable of handwritten digit recognition and achieve the highest recognition accuracy with fully connected layer size 400. In addition, for same dataset MNIST, CNN models work better than big, deep, simple NN models in a published paper.
翻译:有线电视新闻网模型是一种广受欢迎的图像分析方法,因此可以利用它来识别基于MNIST数据集的手写数字。为了提高识别精确度,利用各种完全连接层大小不同的CNN模型来查明CNN完全连接层大小和识别精确度之间的关系。受先前的裁剪工作的启发,我们在CNN模型上进行了裁剪方法,并比较了NNN模型的裁剪性能。为了在CNN上进行更好的剪裁剪性能,探讨了角阈值对裁剪性能的影响。评价结果显示:对于完全连接层尺寸而言,有一个阈值,因此当层尺寸增加时,如果层尺寸小于阀值,承认精确度就会提高;如果层尺寸小于阀值,则下降;在CNNNN的裁剪裁性工作表现比NNNN差;随着角阈值增加,完全连接层尺寸和识别性能下降。本文还显示,对于由MNIST数据集训练的CNNM模型来说,它们能够手写数字识别,并且达到与完全连接层大小的400型号最高识别精确度。此外,在MINS数据库中,同样的数据也比已出版的400型号。