convolutional neural network definition

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Softmax,softmax loss and cross entropy of convolutional neural network series

Transferred from: http://blog.csdn.net/u014380165/article/details/77284921 We know that convolutional neural Network (CNN) has been widely used in the field of image, in general, a CNN network mainly includes convolutional layer, pool layer (pooling), fully connected layer,

Paper note "ImageNet Classification with deep convolutional neural Network"

edge to 256 D to get B, and then in the center of B take 256*256 square picture to get C, and then randomly extract 224*224 on C as a training sample, and then in the combination of image level inverse increase the sample to achieve data gain. This gain method is 2048 times times the sample increase, allowing us to run a larger network.(2) Adjust the RGB valueThe specific idea is: To do PCA analysis of three channel, get the main component, make some

C ++ convolutional neural network example: tiny_cnn code explanation (9) -- partial_connected_layer Structure Analysis (bottom)

C ++ convolutional neural network example: tiny_cnn code explanation (9) -- partial_connected_layer Structure Analysis (bottom) In the previous blog, we focused on analyzing the structure of the member variables of the partial_connected_layer class. In this blog, we will continue to give a brief introduction to other member functions in the partial_connected_laye

C + + uses MATLAB convolutional neural network library matconvnet for handwritten digit recognition

. Most likely exceptions in TestMnist.exe 0x00007ffaf3531f28: Microsoft C + + exception: Cryptopp::aes_phm_decryption::i at memory location 0x0b4e7d60 Nvalidciphertextorkey. 0x00007ffaf3531f28 most likely exception in TestMnist.exe: Microsoft C + + exception: Fl::filesystem::P athnotfound at memory location 0x0014e218. 0x00007ffaf3531f28 most likely exception in TestMnist.exe: Microsoft C + + exception: Xsd_binder::malformeddocumenterror at memory location 0X0014CF10.Off-topic, if you need to pu

Deeplearning Tool Theano Learning Record (iii) CNN convolutional Neural Network

Code reference: Http://deeplearning.net/tutorial/lenet.html#lenetCode Learning: http://blog.csdn.net/u012162613/article/details/43225445Experiment code download for this section: Github2015/4/9Experiment 1: Using the tutorial recommended CNN structural Experimentlearning_rate=0.1n_cv= 20 # First-layer convolution core 20N_vc=50 #第二层卷积核50n_epochs=200batch_size=500n_hidden=500Experimental results:Experiment 2: Add a hidden layer on the tutorial basislearning_rate=0.1n_cv= 20 # First-layer convolut

Tensorflow-based CNN convolutional neural network classifier for fasion-mnist Dataset

: test_features, y: test_labes}))sess.close() 1. Define weight, biases, Conv layer, pool Layer def Weight(shape): initial = tf.truncated_normal(shape, stddev=0.1) return tf.Variable(initial, tf.float32)def biases(shape): initial = tf.constant(0.1, shape=shape) return tf.Variable(initial, tf.float32)def conv(inputs, w): return tf.nn.conv2d(inputs, w, strides=[1, 1, 1, 1], padding=‘SAME‘)def pool(inputs): return tf.nn.max_pool(inputs, ksize=[1, 1, 1, 1], strides=[1, 2, 2, 1], pa

Deeplearning.ai the first week of class fourth, the TensorFlow realization of convolutional neural network

, n_y): "" " creates the Placeholders for the TensorFlow session. Arguments: n_h0-scalar, height of an input image n_w0-scalar, width of an input image n_c0-scalar, nu Mber of channels of the input n_y-scalar, number of classes Returns: X--placeholder for the data input, O f shape [None, N_h0, N_w0, n_c0] and Dtype "float" Y--placeholder for the input labels, of shape [None, n_y] and DT Ype "float" "" " # # # START CODE here # # # (≈2 lines) X = Tf.

Deep learning the significance of convolutional and pooled layers in convolutional neural networks

Why use convolution? In traditional neural networks, such as Multilayer perceptron (MLP), whose input is usually a feature vector, requires manual design features, and then the values of these features to form a feature vector, in the past decades of experience, the characteristics of artificial found is not how to use, sometimes more, sometimes less, Sometimes the selected features do not work at all (the truly functional feature is inside the vast u

Course IV (convolutional neural Networks), first week (Foundations of convolutional neural Networks)--0.learning goals

Learning Goals Understand the convolution operation Understand the pooling operation Remember the vocabulary used in convolutional neural network (padding, stride, filter, ...) Build a convolutional neural network

CNN and CN---convolutional networks and convolutional neural networks in data mining and target detection

Content Overview Word Recognition system LeNet-5 Simplified LeNet-5 System The realization of convolutional neural network Deep neural network has achieved unprecedented success in the fields of speech recognition, image recognition and so on. I hav

Neural Networks: convolutional neural Networks

First, prefaceThis convolutional neural network is the further depth of the multilayer neural network described above, which introduces the idea of deep learning into the neural network

Python's example of a flexible definition of neural network structure in NumPy

This article mainly introduces Python based on numpy flexible definition of neural network structure, combined with examples of the principle of neural network structure and python implementation methods, involving Python using numpy extension for mathematical operations of

convolutional Neural Networks

convolutional Neural Network (convolutional neural networks/cnn/convnets)Convolutional neural networks are very similar to normal neural net

Course Four (convolutional neural Networks), second week (Deep convolutional models:case studies)--0.learning goals

Learning Goals Understand multiple foundational papers of convolutional neural networks Analyze the dimensionality reduction of a volume in a very deep network Understand and Implement a residual network Build a deep neural

Course IV (convolutional neural Networks), fourth week (special Applications:face recognition & Neural style transfer)--1.practice Quentions

ExplainThis allows us to learn to predict a person ' s identity using a Softmax output unit, where the number of classes equals the Number of persons in the database plus 1 (for the final "not in Database" Class).Reasons for the above options error:1, plus 1 explanation error:Put someone's photo into the convolutional neural network, use the Softmax unit to outpu

A summary of convolutional neural networks

convolution kernel shares an offset, which is no doubt, but does the multiple convolution cores share a bias?] No, a convolution kernel shares a bias item]Four. CNN Example LeNet-5LeNet-5 is a typical convolutional neural network used to identify numbers, which has a total of 7 layers. As shown below: http://yann.lecun.com/exdb/lenet/index.html.Figure 3 LeNet-5I

convolutional Neural Networks

convolutional Neural NetworksReprint Please specify: http://blog.csdn.net/stdcoutzyx/article/details/41596663Since July this year, has been in the laboratory responsible for convolutional neural networks (convolutional neural

(reproduced) convolutional neural networks

convolutional Neural NetworksReprinted from: http://blog.csdn.net/stdcoutzyx/article/details/41596663Since July this year, has been in the laboratory responsible for convolutional neural networks (convolutional neural

A new idea of convolutional neural networks

Recently has been looking at convolutional neural network, want to improve the improvement to make something new, read a lot of papers, wrote a review of Deep learning convolutional neural Network has some new understanding, and s

convolutional Neural Networks

convolutional neural Network Origin: The human visual cortex of the MeowIn the 1958, a group of wonderful neuroscientists inserted electrodes into the brains of the cats to observe the activity of the visual cortex. and infer that the biological vision system starts from a small part of the object,After layers of abstraction, it is finally put together into a pro

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