Handwritten Digital Detection Based on Tensorflow Building SSD Model

Sen Feng
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Abstract

A computer vision recognition model based on real-time detection is built, and relevant tests are made by using the theory of deep learning. The SSD convolution neural network model is built on the Tensorflow platform, and it is used for the recognition and detection of handwritten numerals. The method of making the data set which can be used to convert MNIST into SSD is given, and the training flow is given, and the experimental results are analyzed. After 50000 training, the recognition accuracy reaches 99.19%, and the location accuracy reaches 99.99%, and the recognition effect is good.
基于Tensorflow构建SSD模型的手写数字检测
建立了基于实时检测的计算机视觉识别模型,并运用深度学习理论进行了相关测试。在Tensorflow平台上建立SSD卷积神经网络模型,并将其用于手写体数字的识别和检测。给出了将MNIST转换为SSD的数据集的制作方法,给出了训练流程,并对实验结果进行了分析。经过50000次训练,识别准确率达到99.19%,定位准确率达到99.99%,识别效果良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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