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80 lines
3 KiB
Python
80 lines
3 KiB
Python
import traceback
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import numpy as np
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import random
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import cv2
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from utils import iter_utils
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from samples import SampleType
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from samples import SampleProcessor
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from samples import SampleLoader
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from samples import SampleGeneratorBase
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'''
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output_sample_types = [
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[SampleProcessor.TypeFlags, size, (optional)random_sub_size] ,
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...
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]
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'''
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class SampleGeneratorImageTemporal(SampleGeneratorBase):
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def __init__ (self, samples_path, debug, batch_size, temporal_image_count, sample_process_options=SampleProcessor.Options(), output_sample_types=[], **kwargs):
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super().__init__(samples_path, debug, batch_size)
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self.temporal_image_count = temporal_image_count
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self.sample_process_options = sample_process_options
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self.output_sample_types = output_sample_types
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self.samples = SampleLoader.load (SampleType.IMAGE, self.samples_path)
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self.generator_samples = [ self.samples ]
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self.generators = [iter_utils.ThisThreadGenerator ( self.batch_func, 0 )] if self.debug else \
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[iter_utils.SubprocessGenerator ( self.batch_func, 0 )]
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self.generator_counter = -1
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def __iter__(self):
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return self
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def __next__(self):
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self.generator_counter += 1
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generator = self.generators[self.generator_counter % len(self.generators) ]
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return next(generator)
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def batch_func(self, generator_id):
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samples = self.generator_samples[generator_id]
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samples_len = len(samples)
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if samples_len == 0:
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raise ValueError('No training data provided.')
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if samples_len - self.temporal_image_count < 0:
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raise ValueError('Not enough samples to fit temporal line.')
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shuffle_idxs = []
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samples_sub_len = samples_len - self.temporal_image_count + 1
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while True:
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batches = None
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for n_batch in range(self.batch_size):
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if len(shuffle_idxs) == 0:
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shuffle_idxs = random.sample( range(samples_sub_len), samples_sub_len )
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idx = shuffle_idxs.pop()
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temporal_samples = []
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for i in range( self.temporal_image_count ):
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sample = samples[ idx+i ]
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try:
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temporal_samples += SampleProcessor.process (sample, self.sample_process_options, self.output_sample_types, self.debug)
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except:
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raise Exception ("Exception occured in sample %s. Error: %s" % (sample.filename, traceback.format_exc() ) )
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if batches is None:
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batches = [ [] for _ in range(len(temporal_samples)) ]
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for i in range(len(temporal_samples)):
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batches[i].append ( temporal_samples[i] )
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yield [ np.array(batch) for batch in batches]
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