def norm_stdev(self):
     if self.color_mode == "rgb" or self.color_mode == "hsv":
         stdev_chan1 = assign_fallback(
             self.cp[self.SECTION].getfloat("normalize_stdev_chan1"),
             self._normalize_stdev[0])
         stdev_chan2 = assign_fallback(
             self.cp[self.SECTION].getfloat("normalize_stdev_chan2"),
             self._normalize_stdev[1])
         stdev_chan3 = assign_fallback(
             self.cp[self.SECTION].getfloat("normalize_stdev_chan3"),
             self._normalize_stdev[2])
         return np.array([stdev_chan1, stdev_chan2, stdev_chan3])
     elif self.color_mode == "grayscale":
         grayscale_stdev = np.mean(self._normalize_stdev)
         return assign_fallback(
             self.cp[self.SECTION].getfloat("normalize_stdev"),
             grayscale_stdev)
 def norm_mean(self):
     if self.color_mode == "rgb" or self.color_mode == "hsv":
         mean_chan1 = assign_fallback(
             self.cp[self.SECTION].getfloat("normalize_mean_chan1"),
             self._normalize_mean[0])
         mean_chan2 = assign_fallback(
             self.cp[self.SECTION].getfloat("normalize_mean_chan2"),
             self._normalize_mean[1])
         mean_chan3 = assign_fallback(
             self.cp[self.SECTION].getfloat("normalize_mean_chan3"),
             self._normalize_mean[2])
         return np.array([mean_chan1, mean_chan2, mean_chan3])
     elif self.color_mode == "grayscale":
         grayscale_mean = np.mean(self._normalize_mean)
         return assign_fallback(
             self.cp[self.SECTION].getfloat("normalize_mean"),
             grayscale_mean)
Exemple #3
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    def __init__(self, cp):
        super().__init__(cp=cp)
        self._initial_learning_rate = assign_fallback(
            self.cp["TRAIN"].getfloat("initial_learning_rate"),
            self._initial_learning_rate)
        config_train_steps = self.cp["TRAIN"].get("train_steps")
        if config_train_steps != "auto" and config_train_steps is not None:
            try:
                config_train_steps = int(config_train_steps)
            except ValueError:
                raise ValueError(
                    "** train_steps: {} is invalid,please use 'auto' or integer."
                    .format(config_train_steps))
        else:
            config_train_steps = None

        config_validation_steps = assign_fallback(
            self.cp["TRAIN"].get("validation_steps"), self._validation_steps)
        if config_validation_steps != "auto" and config_validation_steps is not None:
            try:
                config_validation_steps = int(config_validation_steps)
            except ValueError:
                raise ValueError(
                    "** validation_steps: {} is invalid,please use 'auto' or integer."
                    .format(config_validation_steps))
        else:
            config_validation_steps = None

        config_test_steps = assign_fallback(self.cp["TEST"].get("steps"),
                                            self._test_steps)
        if config_test_steps != "auto" and config_test_steps is not None:
            try:
                config_test_steps = int(config_test_steps)
            except ValueError:
                raise ValueError(
                    "** test_steps: {} is invalid,please use 'auto' or integer."
                    .format(config_test_steps))
        else:
            config_test_steps = None

        self._train_steps = assign_fallback(config_train_steps,
                                            self._train_steps)
        self._validation_steps = assign_fallback(config_validation_steps,
                                                 self._validation_steps)
        self._test_steps = assign_fallback(config_test_steps, self._test_steps)
Exemple #4
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 def gpu(self):
     return assign_fallback(self.cp["TRAIN"].getint("gpu"), self._gpu)
Exemple #5
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 def verbosity(self):
     return assign_fallback(self.cp["DEFAULT"].getint("verbosity"),
                            self._verbosity)
Exemple #6
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 def model_name(self):
     return assign_fallback(self.cp[self.SECTION].get("model_name"), self._model_name)
Exemple #7
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 def random_state(self):
     return assign_fallback(
         self.cp["DATASET"].getint("split_dataset_random_state"),
         self._random_state)
Exemple #8
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 def dev_augmentation(self):
     return assign_fallback(
         self.cp[self.SECTION].getboolean("dev_augmentation"),
         self._dev_augmentation)
Exemple #9
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 def random_vert_flip(self):
     return assign_fallback(
         self.cp[self.SECTION].getboolean("random_vert_flip"),
         self._random_vert_flip)
Exemple #10
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 def histogram_freq(self):
     return assign_fallback(self.cp["TRAIN"].getint("histogram_freq"),
                            self._histogram_freq)
 def scale(self):
     return assign_fallback(self.cp["IMAGE"].getfloat("scale"), self._scale)
Exemple #12
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 def progress_test_verbosity(self):
     return assign_fallback(self.cp["TEST"].getint("progress_verbosity"),
                            self._progress_verbosity)
Exemple #13
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 def enable_grad_cam(self):
     return assign_fallback(self.cp["TEST"].getboolean("enable_grad_cam"),
                            self._enable_grad_cam)
Exemple #14
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 def progress_train_verbosity(self):
     return assign_fallback(self.cp["TRAIN"].getint("progress_verbosity"),
                            self._progress_verbosity)
Exemple #15
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 def color_mode(self):
     return assign_fallback(self.cp["IMAGE"].get("color_mode"),
                            self._color_mode)
Exemple #16
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 def final_activation(self):
     return assign_fallback(self.cp["DATASET"].get("final_activation"),
                            self._final_activation)
Exemple #17
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 def epochs(self):
     return assign_fallback(self.cp["TRAIN"].getint("epochs"), self._epochs)
Exemple #18
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 def write_graph(self):
     return assign_fallback(self.cp["TRAIN"].getboolean("write_graph"),
                            self._write_graph)
 def img_dim(self):
     return assign_fallback(self.cp["IMAGE"].getint("image_dimension"),
                            self._img_dim)
Exemple #20
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 def write_images(self):
     return assign_fallback(self.cp["TRAIN"].getboolean("write_images"),
                            self._write_images)
Exemple #21
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 def train_augmentation(self):
     return assign_fallback(
         self.cp[self.SECTION].getboolean("train_augmentation"),
         self._train_augmentation)
Exemple #22
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 def embeddings_freq(self):
     return assign_fallback(self.cp["TRAIN"].getint("embeddings_freq"),
                            self._embeddings_freq)
Exemple #23
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 def flip_prob(self):
     return assign_fallback(self.cp[self.SECTION].getfloat("flip_prob"),
                            self._flip_prob)
Exemple #24
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 def use_best_weights(self):
     return assign_fallback(self.cp[self.SECTION].getboolean("use_best_weights"), self._use_trained_model_weights)
Exemple #25
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 def __init__(self, cp):
     super().__init__(cp)
     self._use_trained_model_weights = assign_fallback(self.cp[self.SECTION].getboolean("use_trained_model_weights"),
                                                       self._use_trained_model_weights)
Exemple #26
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 def use_class_balancing(self):
     return assign_fallback(
         self.cp["DATASET"].getboolean("use_class_balancing"),
         self._use_class_balancing)
Exemple #27
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 def use_ext_base_model_weights(self):
     return assign_fallback(self.cp[self.SECTION].getboolean("use_ext_base_model_weights"),
                            self._use_ext_base_model_weights)
Exemple #28
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 def use_default_split(self):
     return assign_fallback(
         self.cp["DATASET"].getboolean("use_default_split"),
         self._use_default_split)
Exemple #29
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 def show_model_summary(self):
     return assign_fallback(self.cp[self.SECTION].getboolean("show_model_summary"), self._show_model_summary)
Exemple #30
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 def patience_reduce_lr(self):
     return assign_fallback(self.cp["TRAIN"].getint("patience_reduce_lr"),
                            self._patience_reduce_lr)