test_image_file = []
test_folders = [
    'SingleOneTest', 'SingleTwoTest', 'SingleThreeTest', 'SingleFourTest',
    'SingleFiveTest', 'SingleSixTest', 'SingleSevenTest', 'SingleEightTest'
]

for folder in test_folders:
    test_image_file = test_image_file + os.listdir('../EgoGesture Dataset/' +
                                                   folder + '/')

print('# of images for performance analysis: ', len(test_image_file))
""" Key points Detection """
model = model()
model.summary()
model.load_weights('weights/performance.h5')


def classify(image):
    image = np.asarray(image)
    image = cv2.resize(image, (128, 128))
    image = image.astype('float32')
    image = image / 255.0
    image = np.expand_dims(image, axis=0)
    probability, position = model.predict(image)
    probability = probability[0]
    position = position[0]
    return probability, position


def class_finder(prob):
示例#2
0
import time
import numpy as np
from statistics import mean
from net.network import model
from preprocess.label_gen_test import label_generator_testset

test_image_file = []
test_folders = ['SingleOneTest', 'SingleTwoTest', 'SingleThreeTest', 'SingleFourTest', 'SingleFiveTest']

for folder in test_folders:
    test_image_file = test_image_file + os.listdir('../EgoGesture Dataset/' + folder + '/')

""" Key points Detection """
model = model()
model.summary()
model.load_weights('weights/comparison.h5')


def classify(image):
    image = np.asarray(image)
    image = cv2.resize(image, (128, 128))
    image = image.astype('float32')
    image = image / 255.0
    image = np.expand_dims(image, axis=0)
    probability, position = model.predict(image)
    probability = probability[0]
    position = position[0]
    return probability, position


def class_finder(prob):