-
Notifications
You must be signed in to change notification settings - Fork 1.3k
/
train.lua
403 lines (357 loc) · 18 KB
/
train.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
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
require 'torch'
require 'nn'
require 'nngraph'
-- exotic things
require 'loadcaffe'
-- local imports
local utils = require 'misc.utils'
require 'misc.DataLoader'
require 'misc.LanguageModel'
local net_utils = require 'misc.net_utils'
require 'misc.optim_updates'
-------------------------------------------------------------------------------
-- Input arguments and options
-------------------------------------------------------------------------------
cmd = torch.CmdLine()
cmd:text()
cmd:text('Train an Image Captioning model')
cmd:text()
cmd:text('Options')
-- Data input settings
cmd:option('-input_h5','coco/data.h5','path to the h5file containing the preprocessed dataset')
cmd:option('-input_json','coco/data.json','path to the json file containing additional info and vocab')
cmd:option('-cnn_proto','model/VGG_ILSVRC_16_layers_deploy.prototxt','path to CNN prototxt file in Caffe format. Note this MUST be a VGGNet-16 right now.')
cmd:option('-cnn_model','model/VGG_ILSVRC_16_layers.caffemodel','path to CNN model file containing the weights, Caffe format. Note this MUST be a VGGNet-16 right now.')
cmd:option('-start_from', '', 'path to a model checkpoint to initialize model weights from. Empty = don\'t')
-- Model settings
cmd:option('-rnn_size',512,'size of the rnn in number of hidden nodes in each layer')
cmd:option('-input_encoding_size',512,'the encoding size of each token in the vocabulary, and the image.')
-- Optimization: General
cmd:option('-max_iters', -1, 'max number of iterations to run for (-1 = run forever)')
cmd:option('-batch_size',16,'what is the batch size in number of images per batch? (there will be x seq_per_img sentences)')
cmd:option('-grad_clip',0.1,'clip gradients at this value (note should be lower than usual 5 because we normalize grads by both batch and seq_length)')
cmd:option('-drop_prob_lm', 0.5, 'strength of dropout in the Language Model RNN')
cmd:option('-finetune_cnn_after', -1, 'After what iteration do we start finetuning the CNN? (-1 = disable; never finetune, 0 = finetune from start)')
cmd:option('-seq_per_img',5,'number of captions to sample for each image during training. Done for efficiency since CNN forward pass is expensive. E.g. coco has 5 sents/image')
-- Optimization: for the Language Model
cmd:option('-optim','adam','what update to use? rmsprop|sgd|sgdmom|adagrad|adam')
cmd:option('-learning_rate',4e-4,'learning rate')
cmd:option('-learning_rate_decay_start', -1, 'at what iteration to start decaying learning rate? (-1 = dont)')
cmd:option('-learning_rate_decay_every', 50000, 'every how many iterations thereafter to drop LR by half?')
cmd:option('-optim_alpha',0.8,'alpha for adagrad/rmsprop/momentum/adam')
cmd:option('-optim_beta',0.999,'beta used for adam')
cmd:option('-optim_epsilon',1e-8,'epsilon that goes into denominator for smoothing')
-- Optimization: for the CNN
cmd:option('-cnn_optim','adam','optimization to use for CNN')
cmd:option('-cnn_optim_alpha',0.8,'alpha for momentum of CNN')
cmd:option('-cnn_optim_beta',0.999,'alpha for momentum of CNN')
cmd:option('-cnn_learning_rate',1e-5,'learning rate for the CNN')
cmd:option('-cnn_weight_decay', 0, 'L2 weight decay just for the CNN')
-- Evaluation/Checkpointing
cmd:option('-val_images_use', 3200, 'how many images to use when periodically evaluating the validation loss? (-1 = all)')
cmd:option('-save_checkpoint_every', 2500, 'how often to save a model checkpoint?')
cmd:option('-checkpoint_path', '', 'folder to save checkpoints into (empty = this folder)')
cmd:option('-language_eval', 0, 'Evaluate language as well (1 = yes, 0 = no)? BLEU/CIDEr/METEOR/ROUGE_L? requires coco-caption code from Github.')
cmd:option('-losses_log_every', 25, 'How often do we snapshot losses, for inclusion in the progress dump? (0 = disable)')
-- misc
cmd:option('-backend', 'cudnn', 'nn|cudnn')
cmd:option('-id', '', 'an id identifying this run/job. used in cross-val and appended when writing progress files')
cmd:option('-seed', 123, 'random number generator seed to use')
cmd:option('-gpuid', 0, 'which gpu to use. -1 = use CPU')
cmd:text()
-------------------------------------------------------------------------------
-- Basic Torch initializations
-------------------------------------------------------------------------------
local opt = cmd:parse(arg)
torch.manualSeed(opt.seed)
torch.setdefaulttensortype('torch.FloatTensor') -- for CPU
if opt.gpuid >= 0 then
require 'cutorch'
require 'cunn'
if opt.backend == 'cudnn' then require 'cudnn' end
cutorch.manualSeed(opt.seed)
cutorch.setDevice(opt.gpuid + 1) -- note +1 because lua is 1-indexed
end
-------------------------------------------------------------------------------
-- Create the Data Loader instance
-------------------------------------------------------------------------------
local loader = DataLoader{h5_file = opt.input_h5, json_file = opt.input_json}
-------------------------------------------------------------------------------
-- Initialize the networks
-------------------------------------------------------------------------------
local protos = {}
if string.len(opt.start_from) > 0 then
-- load protos from file
print('initializing weights from ' .. opt.start_from)
local loaded_checkpoint = torch.load(opt.start_from)
protos = loaded_checkpoint.protos
net_utils.unsanitize_gradients(protos.cnn)
local lm_modules = protos.lm:getModulesList()
for k,v in pairs(lm_modules) do net_utils.unsanitize_gradients(v) end
protos.crit = nn.LanguageModelCriterion() -- not in checkpoints, create manually
protos.expander = nn.FeatExpander(opt.seq_per_img) -- not in checkpoints, create manually
else
-- create protos from scratch
-- intialize language model
local lmOpt = {}
lmOpt.vocab_size = loader:getVocabSize()
lmOpt.input_encoding_size = opt.input_encoding_size
lmOpt.rnn_size = opt.rnn_size
lmOpt.num_layers = 1
lmOpt.dropout = opt.drop_prob_lm
lmOpt.seq_length = loader:getSeqLength()
lmOpt.batch_size = opt.batch_size * opt.seq_per_img
protos.lm = nn.LanguageModel(lmOpt)
-- initialize the ConvNet
local cnn_backend = opt.backend
if opt.gpuid == -1 then cnn_backend = 'nn' end -- override to nn if gpu is disabled
local cnn_raw = loadcaffe.load(opt.cnn_proto, opt.cnn_model, cnn_backend)
protos.cnn = net_utils.build_cnn(cnn_raw, {encoding_size = opt.input_encoding_size, backend = cnn_backend})
-- initialize a special FeatExpander module that "corrects" for the batch number discrepancy
-- where we have multiple captions per one image in a batch. This is done for efficiency
-- because doing a CNN forward pass is expensive. We expand out the CNN features for each sentence
protos.expander = nn.FeatExpander(opt.seq_per_img)
-- criterion for the language model
protos.crit = nn.LanguageModelCriterion()
end
-- ship everything to GPU, maybe
if opt.gpuid >= 0 then
for k,v in pairs(protos) do v:cuda() end
end
-- flatten and prepare all model parameters to a single vector.
-- Keep CNN params separate in case we want to try to get fancy with different optims on LM/CNN
local params, grad_params = protos.lm:getParameters()
local cnn_params, cnn_grad_params = protos.cnn:getParameters()
print('total number of parameters in LM: ', params:nElement())
print('total number of parameters in CNN: ', cnn_params:nElement())
assert(params:nElement() == grad_params:nElement())
assert(cnn_params:nElement() == cnn_grad_params:nElement())
-- construct thin module clones that share parameters with the actual
-- modules. These thin module will have no intermediates and will be used
-- for checkpointing to write significantly smaller checkpoint files
local thin_lm = protos.lm:clone()
thin_lm.core:share(protos.lm.core, 'weight', 'bias') -- TODO: we are assuming that LM has specific members! figure out clean way to get rid of, not modular.
thin_lm.lookup_table:share(protos.lm.lookup_table, 'weight', 'bias')
local thin_cnn = protos.cnn:clone('weight', 'bias')
-- sanitize all modules of gradient storage so that we dont save big checkpoints
net_utils.sanitize_gradients(thin_cnn)
local lm_modules = thin_lm:getModulesList()
for k,v in pairs(lm_modules) do net_utils.sanitize_gradients(v) end
-- create clones and ensure parameter sharing. we have to do this
-- all the way here at the end because calls such as :cuda() and
-- :getParameters() reshuffle memory around.
protos.lm:createClones()
collectgarbage() -- "yeah, sure why not"
-------------------------------------------------------------------------------
-- Validation evaluation
-------------------------------------------------------------------------------
local function eval_split(split, evalopt)
local verbose = utils.getopt(evalopt, 'verbose', true)
local val_images_use = utils.getopt(evalopt, 'val_images_use', true)
protos.cnn:evaluate()
protos.lm:evaluate()
loader:resetIterator(split) -- rewind iteator back to first datapoint in the split
local n = 0
local loss_sum = 0
local loss_evals = 0
local predictions = {}
local vocab = loader:getVocab()
while true do
-- fetch a batch of data
local data = loader:getBatch{batch_size = opt.batch_size, split = split, seq_per_img = opt.seq_per_img}
data.images = net_utils.prepro(data.images, false, opt.gpuid >= 0) -- preprocess in place, and don't augment
n = n + data.images:size(1)
-- forward the model to get loss
local feats = protos.cnn:forward(data.images)
local expanded_feats = protos.expander:forward(feats)
local logprobs = protos.lm:forward{expanded_feats, data.labels}
local loss = protos.crit:forward(logprobs, data.labels)
loss_sum = loss_sum + loss
loss_evals = loss_evals + 1
-- forward the model to also get generated samples for each image
local seq = protos.lm:sample(feats)
local sents = net_utils.decode_sequence(vocab, seq)
for k=1,#sents do
local entry = {image_id = data.infos[k].id, caption = sents[k]}
table.insert(predictions, entry)
if verbose then
print(string.format('image %s: %s', entry.image_id, entry.caption))
end
end
-- if we wrapped around the split or used up val imgs budget then bail
local ix0 = data.bounds.it_pos_now
local ix1 = math.min(data.bounds.it_max, val_images_use)
if verbose then
print(string.format('evaluating validation performance... %d/%d (%f)', ix0-1, ix1, loss))
end
if loss_evals % 10 == 0 then collectgarbage() end
if data.bounds.wrapped then break end -- the split ran out of data, lets break out
if n >= val_images_use then break end -- we've used enough images
end
local lang_stats
if opt.language_eval == 1 then
lang_stats = net_utils.language_eval(predictions, opt.id)
end
return loss_sum/loss_evals, predictions, lang_stats
end
-------------------------------------------------------------------------------
-- Loss function
-------------------------------------------------------------------------------
local iter = 0
local function lossFun()
protos.cnn:training()
protos.lm:training()
grad_params:zero()
if opt.finetune_cnn_after >= 0 and iter >= opt.finetune_cnn_after then
cnn_grad_params:zero()
end
-----------------------------------------------------------------------------
-- Forward pass
-----------------------------------------------------------------------------
-- get batch of data
local data = loader:getBatch{batch_size = opt.batch_size, split = 'train', seq_per_img = opt.seq_per_img}
data.images = net_utils.prepro(data.images, true, opt.gpuid >= 0) -- preprocess in place, do data augmentation
-- data.images: Nx3x224x224
-- data.seq: LxM where L is sequence length upper bound, and M = N*seq_per_img
-- forward the ConvNet on images (most work happens here)
local feats = protos.cnn:forward(data.images)
-- we have to expand out image features, once for each sentence
local expanded_feats = protos.expander:forward(feats)
-- forward the language model
local logprobs = protos.lm:forward{expanded_feats, data.labels}
-- forward the language model criterion
local loss = protos.crit:forward(logprobs, data.labels)
-----------------------------------------------------------------------------
-- Backward pass
-----------------------------------------------------------------------------
-- backprop criterion
local dlogprobs = protos.crit:backward(logprobs, data.labels)
-- backprop language model
local dexpanded_feats, ddummy = unpack(protos.lm:backward({expanded_feats, data.labels}, dlogprobs))
-- backprop the CNN, but only if we are finetuning
if opt.finetune_cnn_after >= 0 and iter >= opt.finetune_cnn_after then
local dfeats = protos.expander:backward(feats, dexpanded_feats)
local dx = protos.cnn:backward(data.images, dfeats)
end
-- clip gradients
-- print(string.format('claming %f%% of gradients', 100*torch.mean(torch.gt(torch.abs(grad_params), opt.grad_clip))))
grad_params:clamp(-opt.grad_clip, opt.grad_clip)
-- apply L2 regularization
if opt.cnn_weight_decay > 0 then
cnn_grad_params:add(opt.cnn_weight_decay, cnn_params)
-- note: we don't bother adding the l2 loss to the total loss, meh.
cnn_grad_params:clamp(-opt.grad_clip, opt.grad_clip)
end
-----------------------------------------------------------------------------
-- and lets get out!
local losses = { total_loss = loss }
return losses
end
-------------------------------------------------------------------------------
-- Main loop
-------------------------------------------------------------------------------
local loss0
local optim_state = {}
local cnn_optim_state = {}
local loss_history = {}
local val_lang_stats_history = {}
local val_loss_history = {}
local best_score
while true do
-- eval loss/gradient
local losses = lossFun()
if iter % opt.losses_log_every == 0 then loss_history[iter] = losses.total_loss end
print(string.format('iter %d: %f', iter, losses.total_loss))
-- save checkpoint once in a while (or on final iteration)
if (iter % opt.save_checkpoint_every == 0 or iter == opt.max_iters) then
-- evaluate the validation performance
local val_loss, val_predictions, lang_stats = eval_split('val', {val_images_use = opt.val_images_use})
print('validation loss: ', val_loss)
print(lang_stats)
val_loss_history[iter] = val_loss
if lang_stats then
val_lang_stats_history[iter] = lang_stats
end
local checkpoint_path = path.join(opt.checkpoint_path, 'model_id' .. opt.id)
-- write a (thin) json report
local checkpoint = {}
checkpoint.opt = opt
checkpoint.iter = iter
checkpoint.loss_history = loss_history
checkpoint.val_loss_history = val_loss_history
checkpoint.val_predictions = val_predictions -- save these too for CIDEr/METEOR/etc eval
checkpoint.val_lang_stats_history = val_lang_stats_history
utils.write_json(checkpoint_path .. '.json', checkpoint)
print('wrote json checkpoint to ' .. checkpoint_path .. '.json')
-- write the full model checkpoint as well if we did better than ever
local current_score
if lang_stats then
-- use CIDEr score for deciding how well we did
current_score = lang_stats['CIDEr']
else
-- use the (negative) validation loss as a score
current_score = -val_loss
end
if best_score == nil or current_score > best_score then
best_score = current_score
if iter > 0 then -- dont save on very first iteration
-- include the protos (which have weights) and save to file
local save_protos = {}
save_protos.lm = thin_lm -- these are shared clones, and point to correct param storage
save_protos.cnn = thin_cnn
checkpoint.protos = save_protos
-- also include the vocabulary mapping so that we can use the checkpoint
-- alone to run on arbitrary images without the data loader
checkpoint.vocab = loader:getVocab()
torch.save(checkpoint_path .. '.t7', checkpoint)
print('wrote checkpoint to ' .. checkpoint_path .. '.t7')
end
end
end
-- decay the learning rate for both LM and CNN
local learning_rate = opt.learning_rate
local cnn_learning_rate = opt.cnn_learning_rate
if iter > opt.learning_rate_decay_start and opt.learning_rate_decay_start >= 0 then
local frac = (iter - opt.learning_rate_decay_start) / opt.learning_rate_decay_every
local decay_factor = math.pow(0.5, frac)
learning_rate = learning_rate * decay_factor -- set the decayed rate
cnn_learning_rate = cnn_learning_rate * decay_factor
end
-- perform a parameter update
if opt.optim == 'rmsprop' then
rmsprop(params, grad_params, learning_rate, opt.optim_alpha, opt.optim_epsilon, optim_state)
elseif opt.optim == 'adagrad' then
adagrad(params, grad_params, learning_rate, opt.optim_epsilon, optim_state)
elseif opt.optim == 'sgd' then
sgd(params, grad_params, opt.learning_rate)
elseif opt.optim == 'sgdm' then
sgdm(params, grad_params, learning_rate, opt.optim_alpha, optim_state)
elseif opt.optim == 'sgdmom' then
sgdmom(params, grad_params, learning_rate, opt.optim_alpha, optim_state)
elseif opt.optim == 'adam' then
adam(params, grad_params, learning_rate, opt.optim_alpha, opt.optim_beta, opt.optim_epsilon, optim_state)
else
error('bad option opt.optim')
end
-- do a cnn update (if finetuning, and if rnn above us is not warming up right now)
if opt.finetune_cnn_after >= 0 and iter >= opt.finetune_cnn_after then
if opt.cnn_optim == 'sgd' then
sgd(cnn_params, cnn_grad_params, cnn_learning_rate)
elseif opt.cnn_optim == 'sgdm' then
sgdm(cnn_params, cnn_grad_params, cnn_learning_rate, opt.cnn_optim_alpha, cnn_optim_state)
elseif opt.cnn_optim == 'adam' then
adam(cnn_params, cnn_grad_params, cnn_learning_rate, opt.cnn_optim_alpha, opt.cnn_optim_beta, opt.optim_epsilon, cnn_optim_state)
else
error('bad option for opt.cnn_optim')
end
end
-- stopping criterions
iter = iter + 1
if iter % 10 == 0 then collectgarbage() end -- good idea to do this once in a while, i think
if loss0 == nil then loss0 = losses.total_loss end
if losses.total_loss > loss0 * 20 then
print('loss seems to be exploding, quitting.')
break
end
if opt.max_iters > 0 and iter >= opt.max_iters then break end -- stopping criterion
end