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I have searched around the internet but found very little information around this, I don't understand what each variable/value represents in yolo's .cfg files. So I was hoping some of you could help, I don't think I'm the only one having this problem, so if anyone knows 2 or 3 variables please post them so that people who needs such info in the future might find them.

The main one that I'd like to know are :

  • batch
  • subdivisions

  • decay

  • momentum

  • channels

  • filters

  • activation

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Here is my current understanding of some of the variables. Not necessarily correct though:

[net]

  • batch: That many images+labels are used in the forward pass to compute a gradient and update the weights via backpropagation.
  • subdivisions: The batch is subdivided in this many "blocks". The images of a block are ran in parallel on the gpu.
  • decay: Maybe a term to diminish the weights to avoid having large values. For stability reasons I guess.
  • channels: Better explained in this image :

On the left we have a single channel with 4x4 pixels, The reorganization layer reduces the size to half then creates 4 channels with adjacent pixels in different channels. figure

  • momentum: I guess the new gradient is computed by momentum * previous_gradient + (1-momentum) * gradient_of_current_batch. Makes the gradient more stable.
  • adam: Uses the adam optimizer? Doesn't work for me though
  • burn_in: For the first x batches, slowly increase the learning rate until its final value (your learning_rate parameter value). Use this to decide on a learning rate by monitoring until what value the loss decreases (before it starts to diverge).
  • policy=steps: Use the steps and scales parameters below to adjust the learning rate during training
  • steps=500,1000: Adjust the learning rate after 500 and 1000 batches
  • scales=0.1,0.2: After 500, multiply the LR by 0.1, then after 1000 multiply again by 0.2
  • angle: augment image by rotation up to this angle (in degree)

layers

  • filters: How many convolutional kernels there are in a layer.
  • activation: Activation function, relu, leaky relu, etc. See src/activations.h
  • stopbackward: Do backpropagation until this layer only. Put it in the panultimate convolution layer before the first yolo layer to train only the layers behind that, e.g. when using pretrained weights.
  • random: Put in the yolo layers. If set to 1 do data augmentation by resizing the images to different sizes every few batches. Use to generalize over object sizes.

Many things are more or less self-explanatory (size, stride, batch_normalize, max_batches, width, height). If you have more questions, feel free to comment.

Again, please keep in mind that I am not 100% certain about many of those.

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    About the channels: yes, I cannot find a connection between the image channels and the cfg-parameter channels in the source. darknet seems to be hardcoded to color images. I'll edit my answer accordingly – FelEnd Jun 5 '18 at 10:54
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    I am unsure about your explanation of channels. When talking about the input to the network (the parameter is in the [network] section) people seem to use "channel" to refer to the color channels. For later layers "channels" and "depth" seems to be interchangable. In the yolo cfg, the number of (output) channels of a layer is given by "filters" (as each filter produces one channel). I don't see how your edit explains what the parameter actually does. – FelEnd Jun 5 '18 at 13:07
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    How min_crop/max_crop work? I.e. min_crop can be > image dimensions (as shown in cifar training example) – apatsekin Oct 9 '18 at 23:27
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    What about anchors? – Jürgen K. Apr 15 at 14:33
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    What about mask – Jürgen K. Apr 15 at 14:33

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