forked from Moodstocks/stnbhwd
-
Notifications
You must be signed in to change notification settings - Fork 0
/
AffineGridGeneratorBHWD.lua
102 lines (88 loc) · 3.53 KB
/
AffineGridGeneratorBHWD.lua
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
local AGG, parent = torch.class('nn.AffineGridGeneratorBHWD', 'nn.Module')
--[[
AffineGridGeneratorBHWD(height, width) :
AffineGridGeneratorBHWD:updateOutput(transformMatrix)
AffineGridGeneratorBHWD:updateGradInput(transformMatrix, gradGrids)
AffineGridGeneratorBHWD will take 2x3 an affine image transform matrix (homogeneous
coordinates) as input, and output a grid, in normalized coordinates* that, once used
with the Bilinear Sampler, will result in an affine transform.
AffineGridGenerator
- takes (B,2,3)-shaped transform matrices as input (B=batch).
- outputs a grid in BHWD layout, that can be used directly with BilinearSamplerBHWD
- initialization of the previous layer should biased towards the identity transform :
| 1 0 0 |
| 0 1 0 |
*: normalized coordinates [-1,1] correspond to the boundaries of the input image.
]]
function AGG:__init(height, width)
parent.__init(self)
assert(height > 1)
assert(width > 1)
self.height = height
self.width = width
self.baseGrid = torch.Tensor(height, width, 3)
for i=1,self.height do
self.baseGrid:select(3,1):select(1,i):fill(-1 + (i-1)/(self.height-1) * 2)
end
for j=1,self.width do
self.baseGrid:select(3,2):select(2,j):fill(-1 + (j-1)/(self.width-1) * 2)
end
self.baseGrid:select(3,3):fill(1)
self.batchGrid = torch.Tensor(1, height, width, 3):copy(self.baseGrid)
end
local function addOuterDim(t)
local sizes = t:size()
local newsizes = torch.LongStorage(sizes:size()+1)
newsizes[1]=1
for i=1,sizes:size() do
newsizes[i+1]=sizes[i]
end
return t:view(newsizes)
end
function AGG:updateOutput(_transformMatrix)
local transformMatrix
if _transformMatrix:nDimension()==2 then
transformMatrix = addOuterDim(_transformMatrix)
else
transformMatrix = _transformMatrix
end
assert(transformMatrix:nDimension()==3
and transformMatrix:size(2)==2
and transformMatrix:size(3)==3
, 'please input affine transform matrices (bx2x3)')
local batchsize = transformMatrix:size(1)
if self.batchGrid:size(1) ~= batchsize then
self.batchGrid:resize(batchsize, self.height, self.width, 3)
for i=1,batchsize do
self.batchGrid:select(1,i):copy(self.baseGrid)
end
end
self.output:resize(batchsize, self.height, self.width, 2)
local flattenedBatchGrid = self.batchGrid:view(batchsize, self.width*self.height, 3)
local flattenedOutput = self.output:view(batchsize, self.width*self.height, 2)
torch.bmm(flattenedOutput, flattenedBatchGrid, transformMatrix:transpose(2,3))
if _transformMatrix:nDimension()==2 then
self.output = self.output:select(1,1)
end
return self.output
end
function AGG:updateGradInput(_transformMatrix, _gradGrid)
local transformMatrix, gradGrid
if _transformMatrix:nDimension()==2 then
transformMatrix = addOuterDim(_transformMatrix)
gradGrid = addOuterDim(_gradGrid)
else
transformMatrix = _transformMatrix
gradGrid = _gradGrid
end
local batchsize = transformMatrix:size(1)
local flattenedGradGrid = gradGrid:view(batchsize, self.width*self.height, 2)
local flattenedBatchGrid = self.batchGrid:view(batchsize, self.width*self.height, 3)
self.gradInput:resizeAs(transformMatrix):zero()
self.gradInput:baddbmm(flattenedGradGrid:transpose(2,3), flattenedBatchGrid)
-- torch.baddbmm doesn't work on cudatensors for some reason
if _transformMatrix:nDimension()==2 then
self.gradInput = self.gradInput:select(1,1)
end
return self.gradInput
end