Paper Reading: ImageNet Classification with Deep Convolutional Neural Networks

Alex Net
ImageNet Classification with Deep Convolutional Neural Networks

Contents

  • Section 1 & 2
    • Current problem
    • Author's work
  • Section 3
    • Overall architecture
    • Novel and unusual features
      • Relu Nonlinearity
      • Training on Multiple GPUs
      • Local Response Normalization
      • Overlapping Pooling
  • Section 4
    • Data Augmentation
    • Dropout
  • Section 5 & 6 & 7

Section 1 & 2

Current problem

  1. Current networks perform relatively well on small datasets like MNIST.
  2. The immerse complexity makes larger datasets like ImageNet even not large enough. Thus, the model must have lots of prior knowledge to compensate for it.
  3. The model itself must have large learning capacity.

Author’s work

  1. Trained the one of the largest convolutional neural network to date on the subset of ImageNet.
  2. Optimize with GPU.
  3. Some unusual features to speed up the training and improve performance, detailed in section 3.
  4. Used several effective techniques for preventing overfitting.

Section 3

Overall architecture

Contains 8 learned layers

  • 5 convloutional layers
  • 3 fully-connected layers
  • a 1000-way softmax layer afterwards
    Paper Reading: ImageNet Classification with Deep Convolutional Neural Networks_第1张图片

Notes:

  • 1st and 2nd convolutional layer is followed by a LRN layer each.
  • Each LRN, as well as the 5th convolutional layer, is followed by a max pooling layer.
  • The architecture graph is divided vertically into two parts, and distributed on two GPUs.

Novel and unusual features

Relu Nonlinearity

In terms of training time when using an activation function, a non-saturating function( f ( x ) = m a x ( 0 , x ) f(x)=max(0,x) f(x)=max(0,x) ) works faster then a saturating function( f ( x ) = t a n h ( x ) f(x)=tanh(x) f(x)=tanh(x) or f ( x ) = 1 1 + e − x f(x)=\frac{1}{1+e^{-x}} f(x)=1+ex1 ).

Training on Multiple GPUs

GPU at that time is not capable enough to hold that network, so the auther split the network into two.

Local Response Normalization

LRN in short. A method that enlarge large responses and minish small responses, creating competition for neurons, used to reduce error rates. LRN was mentioned useless, however, in Very Deep Convolutional Networks for Large-Scale Image Recognition(VGG net).

Overlapping Pooling

The pooling kernel overlaps, which reduces the error rate a little bit.

Section 4

This part introduces techniques that prevent overfitting.

Data Augmentation

In short, artificially enlarging the dataset.

  1. Cut off random parts form a respectively large images, and train them as well as their vertical and horizontial reflections.
  2. Altering the intensities of the RGB channel.

Dropout

Inactivate some neurons randomly.

Section 5 & 6 & 7

Details, results and thoughts afterwards. In the end, the author propose that a deeper and larger really counts.

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