According to this paper, the output shape is `N + H - 1`

, `N`

is input height or width, `H`

is kernel height or width. This is obvious inverse process of convolution. This tutorial gives a formula to calculate the output shape of convolution which is `(W−F+2P)/S+1`

, `W`

- input size, `F`

- filter size, `P`

- padding size, `S`

- stride. But in Tensorflow, there are test cases like:

```
strides = [1, 2, 2, 1]
# Input, output: [batch, height, width, depth]
x_shape = [2, 6, 4, 3]
y_shape = [2, 12, 8, 2]
# Filter: [kernel_height, kernel_width, output_depth, input_depth]
f_shape = [3, 3, 2, 3]
```

So we use `y_shape`

, `f_shape`

and `x_shape`

, according to formula `(W−F+2P)/S+1`

to calculate padding size `P`

. From `(12 - 3 + 2P) / 2 + 1 = 6`

, we get `P = 0.5`

, which is not an integer. How does deconvolution works in Tensorflow?