Merge #950
950: added GlobalMaxPool, GlobalMeanPool, and flatten layers r=CarloLucibello a=gartangh Co-authored-by: Garben Tanghe <garben.tanghe@gmail.com>
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@ -14,10 +14,13 @@ These layers are used to build convolutional neural networks (CNNs).
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```@docs
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Conv
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MaxPool
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GlobalMaxPool
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MeanPool
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GlobalMeanPool
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DepthwiseConv
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ConvTranspose
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CrossCor
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flatten
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```
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## Recurrent Layers
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@ -10,7 +10,8 @@ using Zygote: Params, @adjoint, gradient, pullback, @nograd
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export gradient
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export Chain, Dense, Maxout, RNN, LSTM, GRU, Conv, CrossCor, ConvTranspose, MaxPool, MeanPool,
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export Chain, Dense, Maxout, RNN, LSTM, GRU, Conv, CrossCor, ConvTranspose,
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GlobalMaxPool, GlobalMeanPool, MaxPool, MeanPool, flatten,
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DepthwiseConv, Dropout, AlphaDropout, LayerNorm, BatchNorm, InstanceNorm, GroupNorm,
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SkipConnection, params, fmap, cpu, gpu, f32, f64, testmode!, trainmode!
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@ -95,8 +95,9 @@ outdims(l::Conv, isize) =
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Standard convolutional transpose layer. `size` should be a tuple like `(2, 2)`.
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`in` and `out` specify the number of input and output channels respectively.
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Data should be stored in WHCN order. In other words, a 100×100 RGB image would
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be a `100×100×3` array, and a batch of 50 would be a `100×100×3×50` array.
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Data should be stored in WHCN order (width, height, # channels, # batches).
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In other words, a 100×100 RGB image would be a `100×100×3×1` array,
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and a batch of 50 would be a `100×100×3×50` array.
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Takes the keyword arguments `pad`, `stride` and `dilation`.
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"""
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@ -171,8 +172,9 @@ Depthwise convolutional layer. `size` should be a tuple like `(2, 2)`.
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`in` and `out` specify the number of input and output channels respectively.
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Note that `out` must be an integer multiple of `in`.
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Data should be stored in WHCN order. In other words, a 100×100 RGB image would
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be a `100×100×3` array, and a batch of 50 would be a `100×100×3×50` array.
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Data should be stored in WHCN order (width, height, # channels, # batches).
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In other words, a 100×100 RGB image would be a `100×100×3×1` array,
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and a batch of 50 would be a `100×100×3×50` array.
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Takes the keyword arguments `pad`, `stride` and `dilation`.
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"""
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@ -304,6 +306,56 @@ end
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outdims(l::CrossCor, isize) =
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output_size(DenseConvDims(_paddims(isize, size(l.weight)), size(l.weight); stride = l.stride, padding = l.pad, dilation = l.dilation))
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"""
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GlobalMaxPool()
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Global max pooling layer.
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Transforms (w,h,c,b)-shaped input into (1,1,c,b)-shaped output,
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by performing max pooling on the complete (w,h)-shaped feature maps.
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"""
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struct GlobalMaxPool end
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function (g::GlobalMaxPool)(x)
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# Input size
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x_size = size(x)
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# Kernel size
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k = x_size[1:end-2]
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# Pooling dimensions
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pdims = PoolDims(x, k)
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return maxpool(x, pdims)
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end
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function Base.show(io::IO, g::GlobalMaxPool)
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print(io, "GlobalMaxPool()")
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end
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"""
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GlobalMeanPool()
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Global mean pooling layer.
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Transforms (w,h,c,b)-shaped input into (1,1,c,b)-shaped output,
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by performing mean pooling on the complete (w,h)-shaped feature maps.
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"""
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struct GlobalMeanPool end
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function (g::GlobalMeanPool)(x)
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# Input size
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x_size = size(x)
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# Kernel size
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k = x_size[1:end-2]
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# Pooling dimensions
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pdims = PoolDims(x, k)
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return meanpool(x, pdims)
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end
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function Base.show(io::IO, g::GlobalMeanPool)
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print(io, "GlobalMeanPool()")
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end
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"""
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MaxPool(k)
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@ -200,3 +200,13 @@ Returns `1 - sum(|y .* ŷ| + 1) / (sum(y .* ŷ + β*(1 .- y) .* ŷ + (1 - β)
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[Tversky loss function for image segmentation using 3D fully convolutional deep networks](https://arxiv.org/pdf/1706.05721.pdf)
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"""
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tversky_loss(ŷ, y; β=eltype(ŷ)(0.7)) = 1 - (sum(y .* ŷ) + 1) / (sum(y .* ŷ + β*(1 .- y) .* ŷ + (1 - β)*y .* (1 .- ŷ)) + 1)
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"""
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flatten(x::AbstractArray)
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Transforms (w,h,c,b)-shaped input into (w x h x c,b)-shaped output,
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by linearizing all values for each element in the batch.
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"""
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function flatten(x::AbstractArray)
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return reshape(x, :, size(x)[end])
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end
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@ -4,6 +4,10 @@ using Flux: gradient
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@testset "Pooling" begin
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x = randn(Float32, 10, 10, 3, 2)
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gmp = GlobalMaxPool()
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@test size(gmp(x)) == (1, 1, 3, 2)
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gmp = GlobalMeanPool()
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@test size(gmp(x)) == (1, 1, 3, 2)
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mp = MaxPool((2, 2))
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@test mp(x) == maxpool(x, PoolDims(x, 2))
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mp = MeanPool((2, 2))
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@ -1,6 +1,6 @@
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using Test
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using Flux: onehotbatch, mse, crossentropy, logitcrossentropy,
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σ, binarycrossentropy, logitbinarycrossentropy
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σ, binarycrossentropy, logitbinarycrossentropy, flatten
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const ϵ = 1e-7
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@ -116,3 +116,10 @@ const ϵ = 1e-7
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end
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end
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end
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@testset "helpers" begin
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@testset "flatten" begin
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x = randn(Float32, 10, 10, 3, 2)
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@test size(flatten(x)) == (300, 2)
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end
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end
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