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Handwritten Digit Recognition of MNIST dataset using Deep Learning state-of-the-art Artificial Neural Network (ANN) and Convolutional Neural Network (CNN)

机译:使用深度学习状态的人工神经网络(ANN)和卷积神经网络(CNN)的手写数字识别Mnist DataSet(CNN)

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Handwritten digit recognition is an intricate assignment that is vital for developing applications, in computer vision digit recognition is one of the major applications. There has been a copious exploration done in the Handwritten Character Recognition utilizing different deep learning models. Deep learning is rapidly increasing in demand due to its resemblance to the human brain. The two major Deep learning algorithms Artificial Neural Network and Convolutional Neural Network which have been compared in this paper considering their feature extraction and classification stages of recognition. The models were trained using categorical cross-entropy loss and ADAM optimizer on the MNIST dataset. Backpropagation along with Gradient Descent is being used to train the networks along with reLU activations in the network which do automatic feature extraction. In neural networks, Convolution Neural Network (ConvNets or Convolutional neural networks) is one of the primary classifiers to do image recognition, image classification tasks in Computer Vision.
机译:手写的数字识别是一个复杂的分配,对于开发应用程序至关重要,在计算机视觉数字中识别是主要应用之一。使用不同的深层学习模型,手写的字符识别已经进行了丰富的探索。由于其与人脑的相似,深度学习迅速增加。本文考虑了它们的特征提取和识别分类阶段,在本文中进行了两个主要的深度学习算法人工神经网络和卷积神经网络。使用Mnist DataSet上的分类跨熵丢失和adam优化器进行培训。 Backpropagation以及梯度下降的应用程序用于培训网络以及网络中的网络中的Relu激活,该网络可以自动特征提取。在神经网络中,卷积神经网络(Courmnet或卷积神经网络)是要做图像识别的主要分类器之一,计算机视觉中的图像分类任务。

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