SyntaxError bei LabelEncoder

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CodeIt
User
Beiträge: 36
Registriert: Mittwoch 13. September 2017, 06:10

Hallo,

ich bekomme für folgende Zeile immer einen SyntaxError

Code: Alles auswählen

le = LabelEncoder()
Hat jemand eine Idee woran das liegen könnte? Ich verwende Python 3.5 .
Anbei noch den kompletten Code

Code: Alles auswählen

# import the necessary packages
from sklearn.preprocessing import LabelEncoder
from sklearn.svm import LinearSVC
from sklearn.metrics import classification_report

#from sklearn.cross_validation import train_test_split
from sklearn.model_selection import train_test_split

from imutils import paths #a set of image processing convenience functions
import numpy as np
import argparse
import imutils
import cv2
import os

def extract_color_histogram(image, bins=(8, 8, 8)):
	# extract a 3D color histogram from the HSV color space using
	# the supplied number of `bins` per channel
	hsv = cv2.cvtColor(image, cv2.COLOR_BGR2HSV)
	hist = cv2.calcHist([hsv], [0, 1, 2], None, bins,
		[0, 180, 0, 256, 0, 256])
 
	# handle normalizing the histogram if we are using OpenCV 2.4.X
	if imutils.is_cv2():
		hist = cv2.normalize(hist)
 
	# otherwise, perform "in place" normalization in OpenCV 3 (I
	# personally hate the way this is done
	else:
		cv2.normalize(hist, hist)
 
	# return the flattened histogram as the feature vector
	return hist.flatten()


# construct the argument parse and parse the arguments
ap = argparse.ArgumentParser()
ap.add_argument("-d", "--dataset", required=True,
	help="path to input dataset")
args = vars(ap.parse_args())
 
# grab the list of images that we'll be describing
print("[INFO] describing images...")
imagePaths = list(paths.list_images(args["dataset"]))
 
# initialize the data matrix and labels list
data = []
labels = []

# loop over the input images
for (i, imagePath) in enumerate(imagePaths):
	# load the image and extract the class label (assuming that our
	# path as the format: /path/to/dataset/{class}.{image_num}.jpg
	image = cv2.imread(imagePath)
	label = imagePath.split(os.path.sep)[-1].split(".")[0]
 
	# extract a color histogram from the image, then update the
	# data matrix and labels list
	hist = extract_color_histogram(image)
	data.append(hist)
	labels.append(label)
 
	# show an update every 1,000 images
	if i > 0 and i % 1000 == 0:
		print("[INFO] processed {}/{}".format(i, len(imagePaths))

# encode the labels, converting them from strings to integers
le = LabelEncoder()
labels = le.fit_transform(labels)


# partition the data into training and testing splits, using 75%
# of the data for training and the remaining 25% for testing
print("[INFO] constructing training/testing split...")
(trainData, testData, trainLabels, testLabels) = train_test_split(
	np.array(data), labels, test_size=0.25, random_state=42)
 
# train the linear regression clasifier
print("[INFO] training Linear SVM classifier...")
model = LinearSVC()
model.fit(trainData, trainLabels)
 
# evaluate the classifier
print("[INFO] evaluating classifier...")
predictions = model.predict(testData)
print(classification_report(testLabels, predictions,
	target_names=le.classes_))                
Vielen Dank im voraus
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__blackjack__
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Registriert: Samstag 2. Juni 2018, 10:21
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@CodeIt: Zähl mal in der letzte Codezeile davor die Klammern.
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CodeIt
User
Beiträge: 36
Registriert: Mittwoch 13. September 2017, 06:10

oh ja, Danke.
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