| import multiprocessing |
| import pickle |
| import time |
| import traceback |
|
|
| import cv2 |
| import numpy as np |
|
|
| from core import mplib |
| from core.joblib import SubprocessGenerator, ThisThreadGenerator |
| from facelib import LandmarksProcessor |
| from samplelib import (SampleGeneratorBase, SampleLoader, SampleProcessor, |
| SampleType) |
|
|
|
|
| class SampleGeneratorFaceTemporal(SampleGeneratorBase): |
| def __init__ (self, samples_path, debug, batch_size, |
| temporal_image_count=3, |
| sample_process_options=SampleProcessor.Options(), |
| output_sample_types=[], |
| generators_count=2, |
| **kwargs): |
| super().__init__(debug, batch_size) |
|
|
| self.temporal_image_count = temporal_image_count |
| self.sample_process_options = sample_process_options |
| self.output_sample_types = output_sample_types |
|
|
| if self.debug: |
| self.generators_count = 1 |
| else: |
| self.generators_count = generators_count |
|
|
| samples = SampleLoader.load (SampleType.FACE_TEMPORAL_SORTED, samples_path) |
| samples_len = len(samples) |
| if samples_len == 0: |
| raise ValueError('No training data provided.') |
|
|
| mult_max = 1 |
| l = samples_len - ( (self.temporal_image_count)*mult_max - (mult_max-1) ) |
| index_host = mplib.IndexHost(l+1) |
|
|
| pickled_samples = pickle.dumps(samples, 4) |
| if self.debug: |
| self.generators = [ThisThreadGenerator ( self.batch_func, (pickled_samples, index_host.create_cli(),) )] |
| else: |
| self.generators = [SubprocessGenerator ( self.batch_func, (pickled_samples, index_host.create_cli(),) ) for i in range(self.generators_count) ] |
|
|
| self.generator_counter = -1 |
|
|
| def __iter__(self): |
| return self |
|
|
| def __next__(self): |
| self.generator_counter += 1 |
| generator = self.generators[self.generator_counter % len(self.generators) ] |
| return next(generator) |
|
|
| def batch_func(self, param): |
| mult_max = 1 |
| bs = self.batch_size |
| pickled_samples, index_host = param |
| samples = pickle.loads(pickled_samples) |
|
|
| while True: |
| batches = None |
|
|
| indexes = index_host.multi_get(bs) |
|
|
| for n_batch in range(self.batch_size): |
| idx = indexes[n_batch] |
|
|
| temporal_samples = [] |
| mult = np.random.randint(mult_max)+1 |
| for i in range( self.temporal_image_count ): |
| sample = samples[ idx+i*mult ] |
| try: |
| temporal_samples += SampleProcessor.process ([sample], self.sample_process_options, self.output_sample_types, self.debug)[0] |
| except: |
| raise Exception ("Exception occured in sample %s. Error: %s" % (sample.filename, traceback.format_exc() ) ) |
|
|
| if batches is None: |
| batches = [ [] for _ in range(len(temporal_samples)) ] |
|
|
| for i in range(len(temporal_samples)): |
| batches[i].append ( temporal_samples[i] ) |
|
|
| yield [ np.array(batch) for batch in batches] |
|
|