data.py 4.16 KB
Newer Older
Benjamin Thomas Graham's avatar
Benjamin Thomas Graham committed
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
# Copyright 2016-present, Facebook, Inc.
# All rights reserved.
#
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.

import torch
import torchnet
import sparseconvnet.legacy as scn
import pickle
import math
import random
import numpy
import os

if not os.path.exists('pickle/'):
    print('Downloading and preprocessing data ...')
    os.system(
        'wget http://www.nlpr.ia.ac.cn/databases/download/feature_data/OLHWDB1.1trn_pot.zip')
    os.system(
        'wget http://www.nlpr.ia.ac.cn/databases/download/feature_data/OLHWDB1.1tst_pot.zip')
    os.system('mkdir -p t7/train/ t7/test/ POT/ pickle/')
    os.system('unzip OLHWDB1.1trn_pot.zip -d POT/')
    os.system('unzip OLHWDB1.1tst_pot.zip -d POT/')
Ben Graham's avatar
Ben Graham committed
25
    os.system('python readPotFiles2.py')
Benjamin Thomas Graham's avatar
Benjamin Thomas Graham committed
26
27


Benjamin Thomas Graham's avatar
tidy  
Benjamin Thomas Graham committed
28
def train(spatial_size, Scale, precomputeSize):
Benjamin Thomas Graham's avatar
Benjamin Thomas Graham committed
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
    d = pickle.load(open('pickle/train.pickle', 'rb'))
    d = torchnet.dataset.ListDataset(d)
    randperm = torch.randperm(len(d))

    def perm(idx, size):
        return randperm[idx]

    def merge(tbl):
        inp = scn.InputBatch(2, spatial_size)
        center = spatial_size.float().view(1, 2) / 2
        p = torch.LongTensor(2)
        v = torch.FloatTensor([1, 0, 0])
        for char in tbl['input']:
            inp.addSample()
            for stroke in char:
                stroke = stroke.float() * (Scale - 0.01) / 255 - 0.5 * (Scale - 0.01)
                stroke += center.expand_as(stroke)
                ###############################################################
                # To avoid GIL problems use a helper function:
                scn.dim_fn(
                    2,
                    'drawCurve')(
                    inp.metadata.ffi,
                    inp.features,
                    stroke)
                ###############################################################
                # Above is equivalent to :
                # x1,x2,y1,y2,l=0,stroke[0][0],0,stroke[0][1],0
                # for i in range(1,stroke.size(0)):
                #     x1=x2
                #     y1=y2
                #     x2=stroke[i][0]
                #     y2=stroke[i][1]
                #     l=1e-10+((x2-x1)**2+(y2-y1)**2)**0.5
                #     v[1]=(x2-x1)/l
                #     v[2]=(y2-y1)/l
                #     l=max(x2-x1,y2-y1,x1-x2,y1-y2,0.9)
                #     for j in numpy.arange(0,1,1/l):
                #         p[0]=math.floor(x1*j+x2*(1-j))
                #         p[1]=math.floor(y1*j+y2*(1-j))
                #         inp.setLocation(p,v,False)
                ###############################################################
Benjamin Thomas Graham's avatar
tidy  
Benjamin Thomas Graham committed
71
        inp.precomputeMetadata(precomputeSize)
Benjamin Thomas Graham's avatar
Benjamin Thomas Graham committed
72
73
74
75
76
        return {'input': inp, 'target': torch.LongTensor(tbl['target'])}
    bd = torchnet.dataset.BatchDataset(d, 100, perm=perm, merge=merge)
    tdi = scn.threadDatasetIterator(bd)

    def iter():
77
        randperm.copy_(torch.randperm(len(d)))
Benjamin Thomas Graham's avatar
Benjamin Thomas Graham committed
78
79
80
81
        return tdi()
    return iter


Benjamin Thomas Graham's avatar
tidy  
Benjamin Thomas Graham committed
82
def val(spatial_size, Scale, precomputeSize):
Benjamin Thomas Graham's avatar
Benjamin Thomas Graham committed
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
    d = pickle.load(open('pickle/test.pickle', 'rb'))
    d = torchnet.dataset.ListDataset(d)
    randperm = torch.randperm(len(d))

    def perm(idx, size):
        return randperm[idx]

    def merge(tbl):
        inp = scn.InputBatch(2, spatial_size)
        center = spatial_size.float().view(1, 2) / 2
        p = torch.LongTensor(2)
        v = torch.FloatTensor([1, 0, 0])
        for char in tbl['input']:
            inp.addSample()
            for stroke in char:
                stroke = stroke.float() * (Scale - 0.01) / 255 - 0.5 * (Scale - 0.01)
                stroke += center.expand_as(stroke)
                scn.dim_fn(
                    2,
                    'drawCurve')(
                    inp.metadata.ffi,
                    inp.features,
                    stroke)
Benjamin Thomas Graham's avatar
tidy  
Benjamin Thomas Graham committed
106
        inp.precomputeMetadata(precomputeSize)
Benjamin Thomas Graham's avatar
Benjamin Thomas Graham committed
107
108
109
110
111
        return {'input': inp, 'target': torch.LongTensor(tbl['target'])}
    bd = torchnet.dataset.BatchDataset(d, 100, perm=perm, merge=merge)
    tdi = scn.threadDatasetIterator(bd)

    def iter():
112
        randperm.copy_(torch.randperm(len(d)))
Benjamin Thomas Graham's avatar
Benjamin Thomas Graham committed
113
114
115
116
117
118
        return tdi()
    return iter


def getIterators(*args):
    return {'train': train(*args), 'val': val(*args)}