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Improved method of handwritten digit recognition tested on MNIST database

机译:在MNIST数据库上测试的手写数字识别的改进方法

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We have developed a novel neural classifier Limited Receptive Area (LIRA) for the image recognition. The classifier LIRA contains three neuron layers: sensor, associative and output layers. The sensor layer is connected with the associative layer with no modifiable random connections and the associative layer is connected with the output layer with trainable connections. The training process converges sufficiently fast. This classifier does not use floating point and multiplication operations. The classifier was tested on two image databases. The first database is the MNIST database. It contains 60,000 handwritten digit images for the classifier training and 10,000 handwritten digit images for the classifier testing. The second database contains 441 images of the assembly microdevice. The problem under investigation is to recognize the position of the pin relatively to the hole. A random procedure was used for partition of the database to training and testing subsets. There are many results for the MNIST database in the literature. In the best cases, the error rates are 0.7, 0.63 and 0.42%. The classifier LIRA gives error rate of 0.61% as a mean value of three trials. In task of the pin-hole position estimation the classifier LIRA also shows sufficiently good results.
机译:我们已经开发了一种新颖的神经分类器有限接收区域(LIRA)进行图像识别。分类器LIRA包含三个神经元层:传感器,关联层和输出层。传感器层与关联层之间没有可修改的随机连接,而关联层与输出层之间具有可训练的连接。训练过程收敛得足够快。此分类器不使用浮点和乘法运算。分类器在两个图像数据库上进行了测试。第一个数据库是MNIST数据库。它包含用于分类器训练的60,000个手写数字图像和用于分类器测试的10,000个手写数字图像。第二个数据库包含441个装配微设备图像。研究中的问题是识别销钉相对于孔的位置。使用随机过程将数据库划分为训练和测试子集。文献中有MNIST数据库的许多结果。在最佳情况下,错误率分别为0.7、0.63和0.42%。作为三个试验的平均值,分类器LIRA的错误率为0.61%。在针孔位置估计的任务中,分类器LIRA也显示出足够好的结果。

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