feat: adding resnet and formatting updates

This commit is contained in:
Lucas Oskorep
2023-04-06 00:37:46 -04:00
parent ce5939d8a9
commit dc427837f6
12 changed files with 87 additions and 37 deletions
+1
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@@ -7,6 +7,7 @@ import multiprocessing
train_dir = "./data/train/"
test_dir = "./data/test/"
val_dir = "./data/val/"
train = .80
test = .10
val = .10
+57 -17
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@@ -53,7 +53,7 @@ def get_gen(path, dataset_type: DatasetType = DatasetType.TRAIN):
)
def train_model(model, model_name, train_gen, val_gen):
def train_model(model, model_name, train_gen, val_gen, max_epochs):
print(model)
print(f"NOW TRAINING: {model_name}")
checkpoint = keras.callbacks.ModelCheckpoint(
@@ -82,7 +82,7 @@ def train_model(model, model_name, train_gen, val_gen):
model.fit(
train_gen,
validation_data=val_gen,
epochs=100,
epochs=max_epochs,
batch_size=batch_size,
shuffle=True,
verbose=True,
@@ -130,7 +130,47 @@ if __name__ == "__main__":
pre_trained=True,
freeze_layers=True,
freeze_batch_norm=True,
base_model_type=ImageClassModels.EFFICIENTNET_V2S,
base_model_type=ImageClassModels.MOBILENET_V2,
dense_layer_neurons=1024,
dropout_rate=.5,
), ImageClassModelBuilder(
input_shape=input_shape,
n_classes=807,
optimizer=keras.optimizers.Adam(learning_rate=.0001),
pre_trained=True,
freeze_layers=True,
freeze_batch_norm=True,
base_model_type=ImageClassModels.INCEPTION_RESNET_V2,
dense_layer_neurons=1024,
dropout_rate=.5,
), ImageClassModelBuilder(
input_shape=input_shape,
n_classes=807,
optimizer=keras.optimizers.Adam(learning_rate=.0001),
pre_trained=True,
freeze_layers=True,
freeze_batch_norm=True,
base_model_type=ImageClassModels.INCEPTION_V3,
dense_layer_neurons=1024,
dropout_rate=.5,
), ImageClassModelBuilder(
input_shape=input_shape,
n_classes=807,
optimizer=keras.optimizers.Adam(learning_rate=.0001),
pre_trained=True,
freeze_layers=True,
freeze_batch_norm=True,
base_model_type=ImageClassModels.XCEPTION,
dense_layer_neurons=1024,
dropout_rate=.5,
), ImageClassModelBuilder(
input_shape=input_shape,
n_classes=807,
optimizer=keras.optimizers.Adam(learning_rate=.0001),
pre_trained=True,
freeze_layers=True,
freeze_batch_norm=True,
base_model_type=ImageClassModels.DENSENET201,
dense_layer_neurons=1024,
dropout_rate=.5,
)
@@ -141,17 +181,17 @@ if __name__ == "__main__":
train_gen = get_gen('./data/train', dataset_type=DatasetType.TRAIN)
val_gen = get_gen('./data/val', dataset_type=DatasetType.VAL)
test_gen = get_gen('./data/test', dataset_type=DatasetType.TEST)
model = train_model(model, model_name, train_gen, val_gen)
for layer in model.layers[2].layers:
if not isinstance(layer, keras.layers.BatchNormalization):
layer.trainable = True
model.layers[2].trainable = True
print(model)
model.compile(
optimizer=keras.optimizers.Adam(learning_rate=.00001),
loss=keras.losses.CategoricalCrossentropy(),
metrics=['accuracy', 'categorical_crossentropy']
)
model.summary()
model = train_model(model, model_name + "-second_stage", train_gen, val_gen)
test_model(model, test_gen)
model = train_model(model, model_name, train_gen, val_gen, 1)
# for layer in model.layers[2].layers:
# if not isinstance(layer, keras.layers.BatchNormalization):
# layer.trainable = True
# model.layers[2].trainable = True
# print(model)
# model.compile(
# optimizer=keras.optimizers.Adam(learning_rate=.00001),
# loss=keras.losses.CategoricalCrossentropy(),
# metrics=['accuracy', 'categorical_crossentropy']
# )
# model.summary()
# model = train_model(model, model_name + "-second_stage", train_gen, val_gen, 1)
# test_model(model, test_gen)
+1 -2
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@@ -24,7 +24,7 @@ test_gen = ImageDataGenerator().flow_from_directory(
batch_size=batch_size,
shuffle=False
)
#
single_gen = ImageDataGenerator().flow_from_directory(
'./single_image_test_set',
target_size=(input_shape[0], input_shape[1]),
@@ -32,7 +32,6 @@ single_gen = ImageDataGenerator().flow_from_directory(
shuffle=False
)
for file in glob("./models/keras/*.hdf5"):
print(file)
if file in metrics_df.values:
+13 -10
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@@ -5,7 +5,7 @@ from pathlib import Path
import pandas as pd
import tensorflow as tf
from keras.preprocessing.image import ImageDataGenerator
from tensorflow import keras
import tensorflow as tf
# TODO: Move these to a config for the project
input_shape = (224, 224, 3)
@@ -25,16 +25,19 @@ for file in glob("./models/keras/*.hdf5"):
path = Path(file)
tflite_file = f'./models/tflite/models/{path.name[:-5] + ".tflite"}'
if not Path(tflite_file).exists():
keras_model = keras.models.load_model(file)
print(tflite_file)
keras_model = tf.keras.models.load_model(file)
keras_model.summary()
print(keras_model.input)
print(keras_model.layers)
converter = tf.lite.TFLiteConverter.from_keras_model(keras_model)
tflite_model = converter.convert()
with open(tflite_file, 'wb') as f:
f.write(tflite_model)
# TODO: Verify the model performance after converting to TFLITE
# interpreter = tf.lite.Interpreter(model_path=tflite_file)
# single_acc, single_ll = get_metrics(single_gen, keras_model)
# tf_single_acc, tf_single_ll = get_metrics(single_gen, tflite_model)
#
# print(single_acc, tf_single_acc)
# print(single_ll, tf_single_ll)
# TODO: Verify the model performance after converting to TFLITE
# interpreter = tf.lite.Interpreter(model_path=tflite_file)
# single_acc, single_ll = get_metrics(single_gen, keras_model)
# tf_single_acc, tf_single_ll = get_metrics(single_gen, tflite_model)
#
# print(single_acc, tf_single_acc)
# print(single_ll, tf_single_ll)
+3 -1
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@@ -2,4 +2,6 @@ model,test_acc,test_loss,single_acc,single_loss
./models/keras\pt-fl-fbn-efficientnet_v2b0-d1024-do0.5-l11.e-04-l21.e-04-5224-second_stage.hdf5,0.6720150708068079,1.7423864365349095,0.9893048128342246,0.4364729183409372
./models/keras\pt-fl-fbn-efficientnet_v2b0-d1024-do0.5-l11.e-04-l21.e-04-5224.hdf5,0.410029881772119,3.346152696366266,0.986096256684492,0.3234976000776315
./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-8105-second_stage.hdf5,0.6850721060153306,1.675868156533777,0.9967914438502674,0.3373779159304851
./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-8105.hdf5,0.37553592308691697,3.5500588697038067,0.9540106951871657,0.47270425785037834
./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-8105.hdf5,0.3755359230869169,3.5500588697038067,0.9540106951871656,0.4727042578503783
./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-9317-second_stage.hdf5,0.6121780461172843,2.197206965588216,0.9946581196581196,0.2974041509252359
./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-9317.hdf5,0.3702228787976106,3.601324427207316,0.9594017094017094,0.4877960320956891
1 model test_acc test_loss single_acc single_loss
2 ./models/keras\pt-fl-fbn-efficientnet_v2b0-d1024-do0.5-l11.e-04-l21.e-04-5224-second_stage.hdf5 0.6720150708068079 1.7423864365349095 0.9893048128342246 0.4364729183409372
3 ./models/keras\pt-fl-fbn-efficientnet_v2b0-d1024-do0.5-l11.e-04-l21.e-04-5224.hdf5 0.410029881772119 3.346152696366266 0.986096256684492 0.3234976000776315
4 ./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-8105-second_stage.hdf5 0.6850721060153306 1.675868156533777 0.9967914438502674 0.3373779159304851
5 ./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-8105.hdf5 0.37553592308691697 0.3755359230869169 3.5500588697038067 0.9540106951871657 0.9540106951871656 0.47270425785037834 0.4727042578503783
6 ./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-9317-second_stage.hdf5 0.6121780461172843 2.197206965588216 0.9946581196581196 0.2974041509252359
7 ./models/keras\pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-9317.hdf5 0.3702228787976106 3.601324427207316 0.9594017094017094 0.4877960320956891
-3
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@@ -1,3 +0,0 @@
import pandas as pd
import os
+10 -1
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@@ -15,11 +15,21 @@ class ImageClassModels(Enum):
keras.applications.inception_v3.preprocess_input,
"inception_v3"
)
INCEPTION_RESNET_V2 = ModelWrapper(
keras.applications.inception_resnet_v2.InceptionResNetV2,
keras.applications.inception_resnet_v2.preprocess_input,
"inception_resnet_v2"
)
XCEPTION = ModelWrapper(
keras.applications.xception.Xception,
keras.applications.xception.preprocess_input,
"xception"
)
DENSENET201 = ModelWrapper(
keras.applications.densenet.DenseNet201,
keras.applications.densenet.preprocess_input,
"densenet201"
)
MOBILENET_V2 = ModelWrapper(
keras.applications.mobilenet_v2.MobileNetV2,
keras.applications.mobilenet_v2.preprocess_input,
@@ -34,7 +44,6 @@ class ImageClassModels(Enum):
keras.applications.efficientnet_v2.EfficientNetV2B0,
tf.keras.applications.efficientnet_v2.preprocess_input,
"efficientnet_v2b0"
)
+1 -2
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@@ -1,5 +1,4 @@
from collections import Callable
from typing import Callable
class ModelWrapper(object):
def __init__(self, model_func:Callable, model_preprocessor:Callable, name:str):
+1
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@@ -1,4 +1,5 @@
import pandas as pd
df = pd.read_csv("models/keras/pt-fl-fbn-efficientnet_v2s-d1024-do0.5-l11.e-04-l21.e-04-8105-second_stage.csv")
print(df.loc[df["prediction"] != df["true_val"]])
-1
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@@ -19,7 +19,6 @@ for index, row in df2.iterrows():
incorrect = df[df["prediction"]!= df["true_val"]]
total_same_fam = 0
# TODO: Add in support for figuring out if the pokemon are related/evolutions of one another
for index, row in incorrect.iterrows():
img = mpimg.imread("./SingleImageTestSet/" + row['fname'])
imgplot = plt.imshow(img)
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